Keywords
brain parcellation, functional connectivity, stable networks, hierarchical organization, nodes, graph, brain segmentation
brain parcellation, functional connectivity, stable networks, hierarchical organization, nodes, graph, brain segmentation
In the updated version of this article, we have clarified how the MIST parcellation addresses the need for an annotated, multi-resolution brain parcellation. We compare the quality, replicability, and generalizability of the individual MIST parcellations in more detail to widely used parcellations in the field. To compute the out of sample reproducibility of our parcellation we have included data from the Genomics Superstruct Project. These data were prepared by Clara Moreau who has been added to the author’s list. Figure 9 has been added to illustrate the results of the replicability analysis. We provide a more detailed comparison of the MIST parcellation to existing brain parcellations, in particular the Yeo and Glasser parcellations. Figures 5 and 6 have been added to illustrate these results while the previous figures 5 and 6 have been renumbered 7 and 8, respectively. We have extended our discussion of these comparisons and emphasize that while the MIST parcellation matches existing parcellations in metrics of reproducibility and generalizability, it adds unique functionality not otherwise available.
See the authors' detailed response to the review by Vinod Menon
See the authors' detailed response to the review by Darya Chyzhyk
See the authors' detailed response to the review by Clare Kelly
See the authors' detailed response to the review by Lucina Q. Uddin
Understanding the building blocks of the human brain is a long-standing goal of neuroscience. An early and important example is the parcellation of the brain into distinct areas of homogeneous cytoarchitecture by Korbinian Brodmann at the beginning of last century1. This line of work has since been extended to include brain parcellations based on a range of brain modalities, such as sulcal landmarks2, functional connectivity3, task activation4, gene expression patterns5, and combinations of different imaging modalities6. Good parcellations generate homogeneous parcels that tell us something about the organization of the brain along the corresponding modality, provide a common frame of reference for the localization of new findings, and serve the additional purpose of meaningful dimensionality reduction7,8.
Analyzing functional connectivity at very high spatial resolutions, e.g. voxels, is neither practical nor informative for most applications9,10. Connectivity is instead often estimated at the level of larger brain regions or networks that are delineated by a brain parcellation, thus providing an informed way of spatial dimensionality reduction. Brain parcellations based on resting-state functional magnetic resonance imaging (rsfMRI) have been shown to better summarize the whole-brain connectivity than parcellations based on histological or anatomical features7 and are therefore a reasonable choice for investigations of functional connectivity.
Researchers can choose from a wide range of functional brain parcellations in the literature that are generated using different algorithms10,11 and datasets, and provide parcels at different spatial resolutions and in different reference spaces. Spatial resolution in particular is an important difference between brain parcellations. The organization of the functional brain can be understood as a hierarchy of functional modules that spans from few, large, and distributed functional networks to many, small, and locally integrated functional areas. There are about 5–15 canonical whole-brain functional networks8 and a widely used parcellation at that resolution is the surface atlas generated by Yeo and colleagues3. The other end of the spatial resolution spectrum is less clearly defined. Resolutions between 2007,12 and 40011,13 whole-brain parcels are commonly considered to reflect functional areas. A good example of a functional area parcellation is the comprehensive surface atlas by Glasser and colleagues that defines functional areas separated by consensus boundaries across functional and anatomical imaging modalities6. Resolutions beyond 400 whole-brain parcels generally reflect functional atoms that are very small, spatially contiguous clusters within one or two orders of magnitude of the resolution of the data7,14.
Which spatial resolution to choose among this wide range of available resolutions will depend on the spatial scale of the investigated effect. For a systems level research question, a low resolution parcellation of large scale functional networks may be appropriate whereas a high resolution functional area parcellation will be better suited to define the nodes in a full connectome model. For each target spatial scale, several parcellations may be suitable depending on the preferred parcellation coverage (neo-cortex, cerebellum, subcortical areas), and space (surface, volumetric).
Choosing the right parcellation is more challenging if several effects with different spatial scales are investigated or one effect is investigated across several spatial resolutions15–17. Different parcellations can be used for different spatial resolutions, but this is typically not desirable if there are significant methodological differences between parcellations and they may have been derived from different datasets. An alternative is to use one of the published automatic or semi-automatic parcellation algorithms to generate data-specific brain parcellations at the desired scales. This addresses the methodological confounds but makes the results harder to compare or reproduce across different studies. In addition, generating and testing a new brain parcellation is typically quite laborious which makes it an infeasible solution for data exploration. A third solution is therefore to use a multi-resolution brain parcellation that covers the desired spatial resolutions.
To the best of our knowledge, only three existing parcellations provide functional connectivity based multi-resolution parcellations7,12,14. The MIST parcellation differs from these parcellations in two key aspects: 1) existing parcellations aim to define functional areas and therefore focus on higher spatial resolutions (>100 parcels) than the MIST parcellation (>7 parcels) which aims to provide a decomposition of functional networks. 2) the MIST parcellation provides annotated parcels embedded in a hierarchical decomposition tree that have no equivalent in existing multi-resolution parcellations. For a more in depth discussion of the differences between existing brain parcellations and the MIST parcellation please refer to the section on Comparison with existing atlases.
We have generated the MIST atlas with the goal to address the need for an annotated multi-resolution decomposition of large functional networks into functional areas. We have based our atlas on a high quality dataset and an extensively tested algorithm for the extraction of stable group level parcellations18. The MIST atlas provides brain parcels in MNI152 space for spatial resolutions ranging from large functional networks (7) to individual functional areas (444). Importantly, the volumetric parcels of the MIST atlas cover the entire brain, that is cortical, subcortical and cerebellar gray matter. We have further manually labeled all parcellations up to a spatial resolution of 122 and have automatically labeled parcellations of higher resolutions. Lastly, we found that parcellations across spatial resolutions, while derived separately from the data, strongly align along a hierarchical decomposition tree. We therefore provide a hierarchical ordering of brain parcels across spatial resolutions to assist in cross-resolution investigations.
The MIST atlas is freely available to the public through our data repository and the nilearn analysis package (nilearn.github.io)19. The individual brain parcellations included in the MIST atlas have previously been made available for download on figshare20. These individual parcellations are identical to the individual MIST parcellations. The aim of this work is to provide a comprehensive description of the methodology used to create the MIST atlas and to facilitate its use by providing descriptive labels for the parcellations, the empirically derived hierarchical decomposition, and our interactive exploration tool. We hope that this contribution will facilitate cross-resolution research of the functional brain.
All data were taken from the publicly available Cambridge dataset21, which is available from the 1000 functional connectomes project22. The Cambridge dataset consists of 198 subjects (123 female) between 18 and 30 years of age. Six minutes of rs-fMRI data (TR=3s, 119 time points) were recorded on a 3 Tesla Siemens Tim Trio Scanner (Siemens Medical Systems, Erlangen, Germany) at 3s TR using a 12-channel head coil. We have chosen this dataset due to the high quality of the imaging data, the low degree of in-scanner motion among individuals in the dataset, and because the acquisition parameters are representative of the average functional imaging study in the field in terms of spatial resolution and length of the scan. The sample is also shared without any access restrictions and has a moderate size, making it easy for other groups to attempt a replication or extension of our work.
The data were preprocessed using the Neuroimaging Analysis Kit (NIAK) version 0.12.423, an Octave24 based open source processing and analysis framework for imaging data. Each individual data set was corrected for differences in slice acquisition time. Head motion parameters were estimated by spatially re-aligning individual time points with the median volume in the series. This reference median volume was then aligned with the anatomical T1 image of the individual which in turn was coregistered onto the MNI152 template space25 using an initial affine transformation followed by a nonlinear transformation. Finally, each individual time point was mapped to MNI152 space using the combined spatial transformations. For time points with excessive in scanner motion (> 0.5mm framewise displacement), the time point as well as the preceding and the two following time points were removed from the time series26. Nuisance covariates were regressed from the remaining time series: slow time drifts (basis of discrete cosines with a 0.01 Hz high-pass cut-off), average signals in conservative masks of the white matter and the lateral ventricles as well as the first principal components (95% energy) of the six rigid-body motion parameters and their squares27,28. Data were then spatially smoothed with a 3D gaussian kernel (FWHM = 6mm).
The quality of the registration operations was visually inspected following an in-house developed quality control protocol29. Specifically the registration between the individual T1 scans and the stereotaxic template space, as well as registration between the individual T1 and the median functional image were assessed. Subjects were excluded from the analysis in cases of failed coregistration with the template space or where less than 40 time points had acceptable amounts of head motion after scrubbing. A total of 190 subjects (119 female, mean age 21 years, SD 2.3) passed quality control criteria for inclusion in the analysis.
Functional connectivity was computed as the fisher-z transformed Pearson correlation between time series. Stable networks of functional connectivity were extracted from rsfMRI data using an implementation of the Bootstrap Analysis of Stable Clusters (BASC) algorithm18 within NIAK. The goal of the BASC process is to identify groups of brain regions that exhibit consistent and strong functional connectivity at the individual and group level. In brief, the process consists of three stages:
First, we apply a dimensionality reduction procedure using a region growing algorithm30. The algorithm iteratively merges spatially contiguous voxels with highly correlated time series to form 1095 functional atoms (part of the release as MIST_ATOM). Second, we want to identify stable functional connections between these atoms at the level of individual subjects. To do so, we take 1000 bootstrap samples of the individual time series and then repeatedly cluster atoms by functional connectivity using hierarchical agglomerative clustering. We estimate how consistently two atoms are clustered together by averaging the binary adjacency matrices across bootstrap samples. This average adjacency matrix is called the individual stability matrix. Third, at the group level we want to identify connections that are consistently stable across individuals. To do so, we repeatedly sample subsets of individuals from the dataset and average their individual stability matrices. We then apply hierarchical agglomerative clustering on the average stability matrix within each subsample and binarize the resulting clustering assignment. Similar to the individual level clustering we average the binarized adjacency matrices across subsamples to obtain the group level stability matrix. Lastly, we generate the group level consensus partition on the group level stability matrix to identify clusters of stable group level connections. A more detailed description of the method can be found in the BASC paper18.
Selecting the resolution. The BASC process involves decisions about the spatial resolution, i.e. the number of groups that atoms are assigned to based on the stability of their connections. These spatial resolutions must be selected for the BASC process at the individual level, at the group level, and for the final decomposition of the group stability matrix into networks. Since the stability matrices at the individual and group level are generated by clustering atoms into discrete groups they are not resolution independent, i.e. changing the number of groups will change the stability matrix. The BASC process must therefore be repeated for every combination of individual, group and network level spatial resolutions.
Our goal for the MIST parcellation was to describe stable functional networks and how they break up into smaller functional assemblies across spatial resolutions. We used the the multiscale stepwise selection algorithm (MSTEPS) to identify those spatial resolutions that best reflect major transitions in network organization across resolutions31. This process identified nine representative group level resolutions [7, 12, 20, 36, 64, 122, 197, 325, and 444] that we included in the MIST parcellation. An additional parcellation was generated by splitting parcels of resolution 122 along the midline, which resulted in 210 fully lateralized parcels. To characterize the spatially contiguous nature of the parcels at this resolution and to distinguish it from the other parcellations we call this resolution the ‘ROI’ resolution and refer to the corresponding parcels as ROIs.
Figure 1 provides an overview of the functional parcels identified at the different resolutions. The first step in resolution space from 7 to 12 sees the default mode network split into 3 parts, the downstream visual areas separate from the fronto parietal network, and the auditory network and insulae separate from the ventral attention network (to explore the MIST parcellations and their decomposition across resolutions, please refer to our interactive web viewer). Beyond resolution 12, parcels begin breaking up within these large scale networks. This is illustrated by the decomposition of the somatomotor network into 3 parcels at resolution 36 and 7 parcels at resolution 122 (see Figure 2).

Parcellations MIST_7 through MIST_444 with slice coordinates denoted in MNI coordinates. Annotated parcellations are highlighted by orange parcellation names. Note that MIST_ROI is generated by splitting MIST_122 along the midline into fully lateralized ROIs. Parcel colors are random.

(Top row) MIST_7 rendered on the Civet32 standard surface for easier visualization. (Lower left) MIST_7 parcels highlighted over the sample-average atom by atom connectivity matrix. (Lower right) Zoomed in view on the surface and connectivity matrix representations of the Somatomotor network. Resolutions from top to bottom are: MIST_7, MIST_36, MIST_122. Surface parcel colors correspond to parcels overlayed on the atom by atom connectivity matrix.
Parcels at lower resolutions are exclusively bilateral and highly symmetric, and are generally made up of spatially discontinuous subregions. These subregions tend to separate first while remaining largely bilateral. The decomposition of parcels into left- and right-hemispheric subcomponents occurs more gradually (see Figure 3). Between resolutions 36 and 64, parcels tend to become less symmetric and more lateralized. At resolution 122, from which MIST_ROI is generated by forcing a split along the midline, more than 70% of parcels span both hemispheres. MIST_444 has 120 parcels (or ~27% of parcels) that encompass areas in both hemispheres.

(Top row) Parcel symmetry across MIST resolutions. MIST_ROI is the lateralized version of MIST_122 and doesn’t have symmetric parcels. (Middle row) Parcel bilaterality scores across MIST resolutions. Higher values indicate a more bilateral parcel. Bilaterality scores are computed as 1 minus the absolute value of the parcel laterality. All parcels of MIST_ROI are by definition fully lateralized and hence have a bilaterality score of 0. (Bottom row) Internal homogeneity of parcels across MIST resolutions. Annotated parcels are highlighted in orange. Hover over individual data points to see additional information. The online version of this figure is interactive.
Hierarchy. While parcellations at each resolution have been generated independently from each other, we found that parcels at higher resolutions largely remain within the boundaries of their lower resolution parents. This allowed us to generate a pseudo-hierarchy by assigning each parcel at resolution R to the parcel at resolution R-1 with the highest overlap. This pseudo-hierarchy provides a decomposition tree of large scale functional networks into fine grained functional nodes at higher resolution. The majority of parcels have an overlap of close to 100% with their parent parcels. Our web viewer gives an interactive representation of the decomposition trees for the 7 functional networks at resolution MIST_7. However, a subset of parcels at higher resolutions does not overlap fully with the root of the pseudo-hierarchical decomposition tree it belongs to. These parcels are predominantly located at the interface of two low resolution functional networks and may represent more ambiguous boundary regions. Figure 4 provides the overlap of parcels at all resolutions with their root parcel (the MIST_7 parcel that the pseudo-hierarchy assigns them to). Note that we haven’t included MIST_ROI here as it is a transformation of MIST_122 and not an independent parcellation.

The overlap with the corresponding pseudo-hierarchical root-parcel at MIST_7 is shown for parcels across resolutions. Overlap is represented in percent overlap of total parcel size. Higher values indicate an assignment more in line with the data derived pseudo-hierarchy. Annotated parcels are highlighted in orange. The online version of this figure is interactive.
Parcel nomenclature. Our goal in naming the functional parcels presented here was to provide an intuitive description of the general brain areas included in a parcel. Wherever appropriate, we tried to name parcels based on current terminology in the rsfMRI literature. For parcels that could not be described in their entirety by an established name, we listed the significant subcomponents of the parcel. Particularly at higher spatial resolutions, when parcels would encompass relatively small and well described areas, a functional name could sometimes not be justified. In these cases we named the parcel based on the underlying brain anatomy.
The parcel names included in this release are based on a systematic naming system (outlined below) to ensure consistency.
Naming template:
Naming example:
All fields except the {NAME} field are optional and only used where they add information to the name.
- Hemisphere (lowercase). Only used in fully lateralized parcels. There it describes the brain hemisphere the parcel is located in. Values are
- Type (uppercase). Where applicable describes the type of structure or system the parcel encompasses. Values are:
- Position (lowercase). Mostly used for parcels at higher resolutions that are best described by their relative position within larger networks. Values are:
and combinations of these (e.g. anteromedial). The position information can be capitalized as part of the name when the area is commonly known by that name (e.g. Anterior Cingulate Cortex)
For each parcel name we also provide an abbreviated parcel label designed to take up less space while still being informative. The convention for labels follows that of names but uses different upper- and lowercase rules and values:
Label template:
Label example:
- Hemisphere (Uppercase). Unlike the name {hemisphere} field, this is uppercase to avoid confusion with lowercase ‘L’ characters in some typesets. Only used in fully lateralized parcels. There it describes the brain hemisphere the parcel is located in. Values are
- Name (uppercase). The abbreviated name of the parcel. Abbreviating the parcel name is done in a way that retains some distinguishing properties but is as short as possible.
- Type (lowercase). Unlike the parcel name {Type} field, this is lowercase to provide a visual distinction from the abbreviated parcel name. Values are:
Suggested use, limitations and planned improvement of parcel names. It is important to note that the parcel names are intended to help navigate the parcellations by giving the reader a quick idea where in the brain a parcel is situated. They are not intended for precise delineation of a particular anatomical region or functional pathway. While the parcels names provided with this release are unique, they are also not intended as unique descriptors of individual parcels. We suggest that individual parcels are referred to by their integer ID and parcellation resolution. For example, the parcel 6 of the parcellation resolution 64 should be referred to as 6@MIST_64.
Parcel properties. Apart from individual labels we provide a set of quantitative properties for each parcel.
- Center of Mass. We report the center of mass of the parcel in MNI coordinates. Note that the center of mass may lie outside the parcel for bilateral parcels.
- Size. This represents the volume of the parcel in voxels. The MIST parcellation is released at a resolution of 3mm isotropic voxels.
- Laterality. Our laterality index represents the difference in left and right hemispheric parcel volume as a proportion of the total parcel volume. A parcel with 50% more left than right volume would have a laterality index of 0.5. A perfectly bilateral parcel would have a laterality index of 0.
- Symmetry. Our symmetry index represents the dice coefficient between the left and right hemispheric component of a parcel. A fully symmetric parcel would have a symmetry index of 1. A non-symmetric parcel would have a symmetry index of 0.
- Neighbours. Parcels with touching voxels in the same resolution are considered neighbours. We report their parcel IDs.
- Parent. The parcel ID of the parcel at resolution R-1 with maximal overlap.
- Parent Overlap. The proportion of the parcel that overlaps with the parent parcel.
We assessed the accuracy of the hierarchical decomposition of parcels across multiple resolutions. We generated the hierarchy by assigning each parcel to the parcel of the next lower resolution it has the highest overlap with (see Methods for details). A good hierarchical decomposition would result in parcels that decompose into fully enclosed subparcels. We therefore tested the percent overlap of parcels with their parent parcels across the resolutions. Our interactive web viewer shows an overview of parcel overlap across resolutions. At every resolution, most parcels have a very high degree of overlap with their parent parcel. Parcels with lower parent overlap are predominantly located along the interface of parietal and occipital lobe and in the lateral prefrontal cortex. The parieto-occipital interface is also a transition area between two large scale functional networks at lower resolution and parcels along this interface could shift across resolutions along the stability gradient of this transition zone. The weighted average of parent overlap across resolutions is very high at 95%, indicating a generally excellent alignment of sub parcels with their parent parcel.
We finally looked at the entire hierarchical decomposition tree to find the overlap of parcels with the root parcel of their decomposition tree. The root parcels are the parcels in the MIST_7 parcellation for which decomposition across resolutions is tracked independently. While each parcel is assigned to the parcel of the next lower resolution it has the maximal overlap with, incremental non-complete overlaps can accumulate to a point where a parcel no longer has any overlap with the root parcel it is assigned to by our pseudo-hierarchy. Out of 1227 parcels across all nine resolutions (not including MIST_ROI) we identified 116 parcels that didn’t overlap with the root parcel of their hierarchical decomposition tree. Across the MIST resolutions we found parcels with no root overlap in MIST_36: 1 parcel (3%), MIST_64: 4 parcels (6%), MIST_122: 7 parcels (6%), MIST_197: 16 parcels (8%), MIST_325: 33 (10%), MIST_444: 55 parcels (12%). None of these parcels had root-parcels located in the somatomotor, visual or cerebellar networks of MIST_7. Figure 4 provides an overview of the root-parcel overlap across scales. While it is unclear what factors may cause the gradual shifts of these identified parcels it is important to note that most parcels have high degrees of overlap with both their immediate parent parcels as well as their root-parcels. The MIST pseudo-hierarchy thus captures meaningful cross-resolution relationships between parcels.
The functional connectivity literature is full of brain parcellations based on different methodologies, modalities, and datasets. It is therefore reasonable to ask, what this parcellation can offer the field that isn’t already available. In our view, the main contribution of the MIST atlas is the fact that it provides hierarchically linked, and labeled multi-resolution parcellations of the whole brain across the spatial resolutions commonly investigated in the field. In this section we briefly discuss how the MIST parcellation compares to existing parcellations of comparable scope and methodology.
To our knowledge, there are only three other functional connectivity based multi-resolution parcellations available in the literature: those by Craddock and colleagues7 and by Shen and colleagues12 both use approaches building on spectral clustering to derive volumetric, whole brain parcellations. Recent work by Schaefer and colleagues14 uses the similarity of functional connectivity in addition to local functional connectivity gradients to define brain parcels on the neo-cortical surface. All three of these multi-resolution parcellations have in common that they aim to provide very homogeneous functional areas at high spatial granularity that can be used as nodes in functional connectivity analyses. This leads to two important differences to the MIST atlas presented here. First, they either directly7,14 or indirectly12 force parcels to be spatially contiguous and, with the exception of the Craddock parcellation, lateralized to one hemisphere. Second, they provide parcellations at relatively high resolutions of 100, 200, and 300 parcels in the case of the Shen parcellation, 400 to 1000 parcels in increments of 200 in the case of the Schaefer parcellation, and 50 to 1000 parcels in increments of 50 in the case of the Craddock parcellation.
The objective of the MIST parcellation is related, but conceptually different as it aims to provide a multi-resolution decomposition of the brain beginning with large, spatially non-contiguous networks and ending with functional areas, the spatial resolution that the aforementioned parcellations aim to characterize. This is also reflected in the fact that no spatial constraint is imposed on the parcels of the MIST parcellation (with the exception of the MIST_ROI parcellation) which are markedly bilateral and non-contiguous up to the highest resolutions. Finally, we have relied on a data-driven method to automatically select the most descriptive resolutions of brain parcellations rather than selecting them at arbitrary intervals.
Among the wealth of functional brain parcellations available at a single resolution, the works by Yeo3 and Glasser6 stand out due to their methodological rigor and the extent of their use in the field (more than 2500 and 720 citations to date respectively). They also stand at opposite ends of the spatial resolution spectrum covered by the MIST parcellation. They Yeo parcellations represent canonical functional connectivity networks while the Glasser parcellation represents small areas bounded by multi-modal agreement of boundaries.
Yeo and colleagues provide a partition of the cortical surface into large, distributed functional networks at spatial resolutions of 7 and 17 parcels that is based on the similarity of the seed based functional connectivity at 18700 surface vertices. In particular the 7 network parcellation is often considered a parcellation of reference for the canonical resting state connectivity networks that are reliably differentiable, and has informed the labeling of the MIST parcellation at low resolutions. While the Yeo parcellation is generated entirely on the cortical surface, the authors provide a projection into volumetric MNI space that we use to compare it with MIST parcellations of comparable spatial resolution: we compare the 7 Yeo networks to the MIST_7 parcellation, and the 17 Yeo networks to the MIST20 parcellation. Since the MIST parcellations cover the cerebellum and subcortical areas while the Yeo parcellations do not, we exclude those regions from the comparison and consider only regions in the intersection of the MIST brainmask and the non-zero voxels of the volumetric Yeo parcellation (1 region was removed from the MIST_7 parcellation, and 4 regions were removed from the MIST_20 parcellation).
We compare the parcellations in two ways: First, we determine the spatial overlap of networks by computing the maximal dice coefficient of each MIST network with the corresponding Yeo parcellation. Second, we detect and highlight the border regions between networks in each parcellation in order to qualitatively compare their spatial location.
The average dice coefficient of MIST_7 networks with Yeo_7 networks is 68%, with some regional variation (see Figure 5). The MIST_7 visual network has a high dice coefficient of 88% with the Yeo_7 visual network, while the MIST_7 network comprising the ventral attention and salience network has a lower dice coefficient of 49% with the corresponding Yeo_7 network (see Table 2 for a complete overview). Figure 5 (left side) gives a spatial representation of the parcel overlap. MIST_7 visual, somatomotor, default mode and mesolimbic networks show a high degree of spatial overlap with Yeo_7 parcels, whereas the fronto-parietal and the aforementioned ventral attention network show lower overlap. This is also reflected in the spatial alignment of network borders between the MIST_7 and Yeo_7 parcellations (Figure 5, right side). Borders of the visual, somatomotor, limbic and default mode networks of the MIST_7 parcellation are closely aligned while the detected boundaries in the Yeo_7 parcellation. By contrast, the frontoparietal and ventral attention network of the MIST_7 parcellation are intersected by estimated network boundaries of the Yeo_7 parcellation.

Left column: MIST networks are color coded by their spatial overlap (dice) on corresponding Yeo networks5. Right column: the borders of the MIST networks (black line) are overlaid over the transition zones between Yeo networks to illustrate local differences in network outlines (black arrows). A: MIST_7 networks and Yeo_7 networks B: MIST_20 networks and Yeo_17 networks.
The average dice coefficient of MIST_20 networks with Yeo_17 networks is 55%, with considerable regional variation. The lateral and medial visual networks of the MIST_20 parcellation spatially overlap well with the corresponding Yeo_17 networks (visual A and visual B) by 85% and 81% respectively. On the other hand, the medial and lateral ventral attention networks of the MIST_20 parcellation both have dice coefficients with the Yeo_17 salience and ventral attention network of 33% and 38% respectively (see Table 3 for a full overview).
Several MIST_20 networks are situated inside larger Yeo_17 networks. The ventral somatomotor network of MIST_20 is 82% inside the Yeo_17 Somatomotor B network, yet has a dice coefficient of only 0.38 with this network. This is because the Yeo_17 Somatomotor B network extends ventrally beyond the somatomotor strip and includes a portion of the superior temporal lobe that is part of the auditory network in the MIST_20 parcellation. The MIST_20 auditory network is 60% inside the Yeo_7 Somatomotor B network. Other cases are less clear. The MIST_20 perigenual ACC and VMPFC network is 72% inside the larger Yeo_17 Default mode network A, but the three MIST_20 DMN sub-networks (anterior, posteromedial, and lateral DMN) do not align closely with the three Yeo_17 DMN sub-networks (Default Mode network A–C) (see Table 3). Figure 5 (B: right column) gives some indication for the reason behind this: the border of the MIST_20 posteromedial DMN sub-network extends further into the precuneus than that of the Yeo_17 Default Mode A network. Similarly, the border of the MIST_20 anterior DMN sub-network extends further ventrally and caudally along the medial surface than that of the Yeo_17 Default Mode B network (see black arrows).
Overall, visual, motor and limbic networks of the MIST_20 parcellation are well aligned with their Yeo_17 counterparts. The agreement of network boundaries is lower for the sub-networks of the DMN, the fronto-parietal and the ventral- and dorsal attention networks. The lower agreement between MIST_20 and Yeo_17 compared with the higher alignment of the MIST_7 and Yeo_7 parcellation are due to differences in the way large networks split into sub-sections at the higher spatial resolution (such as in the case of the Yeo_17 Somatomotor B network that includes temporal areas but otherwise aligns very closely to the MIST_20 ventral somatomotor network). Other differences are due to differences in alignment of network boundaries that may reflect instabilities of functional network membership in these areas, differences of methodology, or factors due to higher inter-subject variability of functional connectivity in these areas that influence the group level parcellations33. Investigating these factors further goes beyond the scope of this work.
Glasser and colleagues provide a widely used parcellation of the neo-cortical surface into homogeneous functional areas that is based on a combination of imaging modalities: resting state fMRI connectivity, task based fMRI activation, local myelination, and cortical thickness. The boundaries of functional areas in this parcellation are defined by overlapping gradient maxima in at least two of these modalities with additional weight given to gradients with contralateral homologues. The Glasser parcellation defines 360 functional areas, 180 per hemisphere. Like the Yeo parcellation, it is generated entirely on the cortical surface. While a projection to volumetric MNI space exists, the projection covers a very narrow band along the cortical ribbon and only covering only 51% of the volumetric parcels of the MIST_444 parcellation (excluding subcortical areas and the cerebellum, 387 parcels remain). A related difference that of size of the parcels when compared in their volumetric representations. The Glasser_360 parcels naturally follow closely the cortical surface, spanning different gyri. By contrast, the volumetric MIST_444 parcels are more localized in space and cover smaller areas on the cortical surface. As a result, when applying the consensus mask between both parcellations, the Glasser_360 parcels are on average more than twice as large.
Due to these differences, we attempted only a cursory comparison between the MIST_444 parcellation and the Glasser_360 parcellation. As the dice coefficient is not well suited to reflect alignment between parcels of very different sizes, we instead directly measured the maximal overlap of the MIST_444 parcellation with parcels in the Glasser_360 parcellation (i.e. we measured which percentage of the MIST_444 parcel is within the bounds of a Glasser_360 parcel of maximal overlap). The average overlap of MIST_444 parcels on Glasser_360 parcels is 50%, with a wide variability of values from 7% to 100% (the median is 47%). Figure 6 shows a projection of computed overlap of MIST_444 parcels onto the surface, revealing areas of higher parcel overlap within primary visual cortex, middle temporal gyrus, and sections of the dorsal ventromedial prefrontal cortex. Areas of low alignment are within the somatomotor strip, the precuneus and anterior cingulate cortex.

The MIST_444 areas are projected onto the cortical surface and color coded by their spatial overlap (percent overlap) on the corresponding Glasser8 areas. Note that this comparison has limited practical value since the spatial extent of MIST and Glasser areas is very different.
It is worth pointing out, that the Glasser parcellation is methodologically very different from the MIST parcellation, in terms of spatial scope (cortical surface vs whole-brain volume), in terms of underlying data (high-resolution data of multiple modalities vs functional data of average resolution), and in terms of procedure (manually guided automatic parcellation based on local transition gradients vs unsupervised parcellation based on global similarity of connectivity). Nevertheless, both the Glasser_360 and the MIST_444 parcellations aim to provide a description of functional areas that can be assumed to be internally functionally homogeneous for the purposes of dimensionality reduction and node definition. Perhaps a more relevant metric is therefore the question of internal homogeneity of parcels. Here both parcellations perform very similarly with an average internal homogeneity of 0.5 for the MIST_444 parcellation and of 0.46 for the Glasser_360 parcellation (see Figure 7).

The standard deviation (SD) of homogeneity estimates across individuals in the HNU1 data set is shown as a function of the common logarithm of the average parcel size. Lower scores reflect lower variability in homogeneity estimates between individuals. Annotated parcellations are highlighted with an outline in orange. Random parcellations are shown as smaller white circles with a red outline for reference. The online version of this figure is interactive.
To quantitatively compare the quality of our parcellations to other, existing functional connectivity parcellations we estimated the within parcel functional homogeneity, a common quality metric in the literature11,34. A good functional brain parcel is expected to encompass voxels with reasonably similar functional activity. Here we estimate the functional homogeneity of a parcel as the average functional connectivity between its voxels. All other things being equal, smaller parcels will have higher internal homogeneity than larger ones, particularly when they are spatially contiguous. We therefore compute the global homogeneity of a parcellation as the size-weighted average of its individual parcels.
We compare our parcellations to a number of published brain parcellations in the literature (see Table 1). Parcellations that were generated on surface data were back-projected into MNI volumetric space. As a consequence, brain coverage differs between parcellations with some covering only the cortical ribbon while others also providing parcellations of subcortical regions and the cerebellum. A parcellation with only cortical coverage will on average have smaller parcels than a full brain parcellation of the same resolution. To account for parcel-size dependent differences in homogeneity, we therefore opted to compare parcellations based on the average size of their parcels (in voxels). Lastly, we included a random multi-resolution parcellation generated by Craddock and colleagues7. These random parcels are entirely driven by spatial proximity and since they have been reported to perform about as well as functionally defined parcels of similar size, we included them in this analysis as a point of comparison. All parcellations were resampled to 3mm isotropic voxels to allow for a direct comparison.
| Name | Coverage | Resolution | Sample | Description |
|---|---|---|---|---|
| OasisTRT36 | Whole brain | 94 (mean size: 350 voxels) | 20 | Consensus partition generated by joint label fusion37 based on 20 manually annotated anatomical brain scans. |
| Yeo73 | Cortical surface | 7 (mean size: 2797 voxels) | 1000 | Clustering of functional connectivity profiles at 1175 ROI locations across the cortical surface. The 7 and 17 networks solutions were chosen as a compromise between stability and resolution range. |
| Yeo173 | Cortical surface | 17 (mean size: 1152 voxels) | 1000 | |
| AAL238 | Whole brain | 120 (mean size: 458 voxels) | 1 | Manual delineation along anatomical landmarks (sulci) in a single brain. Updated version of the original AAL parcellation39. |
| Aicha40 | Cortical and subcortical (no cerebellum) | 192 (mean size: 222 voxels) | 281 | Functional connectivity based parcellation using k-means clustering and grouping of parcels by functional homotopy based on inter-hemispheric connectivity. |
| Brainnetome41 | Whole brain | 273 (mean size: 175 voxels) | 40 | Functional and anatomical connectivity based subdivision of anatomically defined brain regions based on Desikan2 using spectral clustering. |
| Hammersmith42 | Whole brain | 83 (mean size: 734 voxels) | 30 | Consensus parcellation of 30 manually annotated anatomical brain scans. |
| Shen12 | Whole brain | 268 (mean size: 178 voxels) | 79 | Functional connectivity based parcellations using spectral clustering that emphasizes parcel homogeneity. |
| Gordon11 | Cortical surface | 333 (mean size: 52 voxels) | 120 | Cortical parcellation based on functional connectivity gradients. Parcels are grown and merged with respect to connectivity boundaries. |
| Glasser6 | Cortical surface | 180 (mean size: 129 voxels) | 210 | Semi-automatic segmentation along cortical gradients of architectural, functional, connectivity, and topographic modalities as well as expert ratings. |
| Craddock7 | Whole brain | Multi-Resolution | 41 | Random multi-resolution parcellation based on spectral clustering of spatial proximity. |
Names for the Yeo_17 networks are taken from Yeo et al., 201543.
To conduct the quality assessments we used the openly available HNU1 dataset from the Consortium for Reliability and Reproducibility35 that provides 10 repeat session of fMRI data acquired over the course of a month for 30 individuals. This dataset allows us to average our quality metrics across sessions per individual, giving a more stable estimate. In addition none of the compared brain parcellations has been generated on this data, providing an unbiased estimate of performance on other datasets. Data were preprocessed and quality controlled according to the protocol described above. 27 individuals (15 female, mean age 24.5 years, SD 2.4) were included in the analysis.
Figure 7 shows the global homogeneity of parcels over the logarithm of the average parcel size. The relationship between homogeneity and parcel size is clearly visible in the exponential decline of homogeneity with parcel size. Our multi-resolution parcellations compare well with other parcellations of similar parcel size, particularly at lower resolutions. A second question is how consistent the estimated homogeneity scores are across individuals. High consistency of homogeneity indicates that a parcellation generalizes well across individuals whereas a low consistency indicates a very case-dependent fit of the parcellation to the individual functional architecture. Figure 8 shows the standard deviation of homogeneity estimates across subjects as a function of the logarithm of average parcel size. Larger parcels show lower standard deviation of homogeneity across individuals. Again, our parcels fall well within the range of cross-subject consistency of other data driven atlases with comparable resolutions.

Global parcel homogeneity of MIST parcellations and commonly used other brain parcellations of comparable size and focus. Homogeneity estimates are plotted over the common logarithm of the average parcel size. Higher scores reflect more homogeneous parcels. Annotated parcellations are highlighted with an outline in orange. Random parcellations are shown as smaller white circles with a red outline for reference. The online version of this figure is interactive.
The random Craddock parcellations we included as a point of comparison show homogeneity values with a strikingly logarithmic dependence on the average parcel size. At lower resolutions (i.e. larger parcel sizes), the random parcellations have lower internal homogeneity values than connectivity derived parcellations of similar resolution. Around a resolution of 120 parcels (i.e. parcels of around 473 3mm voxels) the internal homogeneity values of the random Craddock parcellations start to exceed those of connectivity driven parcellations. This change in relative performance is probably due the inability of a random parcellation to capture distributed, large scale functional networks at lower resolutions whereas at higher resolutions, a bias towards spatially contiguous parcels of similar size seems to be advantageous. The consistency of internal homogeneity estimates of the random Craddock parcels also shows a dependence on spatial resolution and is overall lower than that of the data driven parcellations. While the random Craddock parcellations were found to perform about as well as similar connectivity derived parcellations in previous work7, the strong performance at high resolutions observed here warrants further investigation.
A good functional brain parcellation can be expected to provide parcels that are not only reasonably homogeneous but also reasonably independent of the dataset used to generate them. We address this question by testing the reproducibility of our parcellation using two approaches: First, we randomly split our original dataset in half, regenerate the full set of parcellations on each subset and compare the alignment with the original MIST parcellation. Second, we repeat this process on the publicly available Genome Superstruct Project (GSP)44, a new dataset with comparable acquisition parameters but a considerably larger sample size. The GSP data were preprocessed in the same way as our original dataset and after quality control contained 1562 individuals with two scan sessions each. We regenerated the MIST parcellation on each session separately and compared the alignment with the original MIST parcellation.
Figure 9 shows the dice coefficient between parcels of the MIST parcellations those in each of the split-half replication parcellations. Replication performance in both split-half subsamples is very similar. The average dice between the original and replication parcellation is 0.75 across all spatial resolutions and both split-half subsamples. There is some variability of the replication performance across the spatial resolutions with higher spatial resolutions showing higher average dice coefficients (dashed black lines in Figure 9). There is considerable variability among the dice scores for different parcels. At lower spatial resolutions, we observe higher dice coefficients in primary sensory areas such as the visual, somatomotor, and auditory network and the cerebellum and lower dice coefficients in more associative networks. This mirrors the results of our comparison between the MIST parcellation and the Yeo parcellation (see the section on Comparison with existing atlases) and is very consistent between the two split-half replication samples. At higher spatial resolutions, areas of high and low dice coefficients become more distributed and include more frontal areas such as the anterior cingulate and VMPFC.

A: The spatial reproducibility of MIST parcels (dice with original parcellation) is shown within the first (left) and second (right) split-half replication sample of the original Cambridge dataset. B: The spatial reproducibility of MIST parcels (dice with original parcellation) is shown within the first (left) and second (right) session of the GSP Cambridge dataset. C: The original MIST parcels are color coded based on their average reproducibility (dice with original parcel) across all replication datasets (both split-half samples and both GSP sessions).
Our replication test in the much larger GSP dataset reveals very similar findings. The average dice coefficient across both GPS sessions and all MIST parcellations is 0.77. Figure 9 shows the distribution of parcel-level dice coefficients in the GSP and exhibits a similar increase of the average dice coefficient with spatial resolution. Consistent with our findings in the split-half replication, we find a pattern of higher reproducibility in visual, and somatomotor networks and the cerebellum, that is very consistent between the two GSP sessions and becomes more distributed at higher spatial resolutions.
These values, while not perfect, are consistent with what has been reported in the literature [e.g. 14] and may be more reflective of the general limitations of group parcellations to capture individual variability45,46, rather than the quality of the specific parcellation.
Another way to look at the generalizability of the MIST parcellation is to test its performance in real world applications. One of the most common applications for a functional brain parcellation is to define nodes in a functional connectivity analysis. A reasonable assumption is then that better parcels will lead to more generalizable models of functional connectivity. Dadi and colleagues have tested the impact of different brain parcellation methods (and other processing parameters) on the prediction of clinical traits based on the functional connectomes estimated from these parcellations47,48. Prediction performance was compared across three pre-generated atlases (the Harvard-Oxford Atlas, the AAL atlas, and the MIST_64 parcellation) and a set of custom parcellations derived directly from the data using a range of methods (ICA, dictionary learning, K-means clustering, and Hierarchical clustering using Ward’s criterion). The authors found that across several prediction problems based on several datasets (including Schizophrenia on the COBRE dataset, Alzheimer’s disease based on the ADNI dataset, and Autism based on the ABIDE dataset), the MIST_64 parcellation performed consistently well, above the other pre-generated atlases and “almost as well as the best regions-extraction method applied to the rest-fMRI data of interest”.
With the MIST parcellation, we have generated and publicly released a multi-resolution decomposition of large functional networks into localized functional areas. With the parcellation we provide annotations for parcels at all resolutions and a data-derived decomposition tree that situates individual parcels along a cross-resolution hierarchy that have no published equivalent in the functional parcellation literature. We show that the MIST parcellations at individual resolutions fit well into the existing literature of brain parcellations in terms of spatial alignment, reproducibility, internal homogeneity, and generalizability. The multiresolution nature of the MIST parcellation will make it a valuable new resource for connectivity researchers.
The MIST parcellation is available from figshare (https://doi.org/10.6084/m9.figshare.5633638.v149). The code used to perform the analyses described in this work can be found at: https://github.com/surchs/MIST_atlas. The code used to generate the interactive atlas viewer can be found at: https://github.com/SIMEXP/multiscale_dashboard. All MIST resolutions as well as MIST_ROI and the functional atoms used in the BASC process (MIST_ATOM) to generate the MIST parcellation are available in nifti format. The release contains the following folders:
Contains the MIST parcellations as nifti files at 3mm isotropic voxels in the ICBM2009b space50. Each file contains a 3D volume with voxel integer values corresponding to the roi ID of each parcel at that resolution.
Contains parcel properties, name and label information for each parcel. Files are organized by resolutions and are provided for resolutions 7 through 444 and MIST_ROI. Resolutions MIST_197, MIST_333 and MIST_444 are not annotated and only contain parcel properties. The files are organized as semicolon delimited tabular data with the following columns:
- roi. The roi ID of the parcel
- label. The abbreviated name of the parcel when available, otherwise the roi ID.
- name. The long-form name of the parcel when available, otherwise the roi ID.
- size. The volume of the parcel in 3mm isotropic voxels
- symmetry. The dice coefficient of the left- and right-hemispheric portion of the parcel
- laterality. The percent volume of the total parcel volume that is in excess in one hemisphere
- x, z, y. The center of mass of the parcel in MNI coordinates
- neighbour. The list of parcels at the same resolution that have facing edges with the parcel
Contains the data derived hierarchical organization of parcels across resolutions as comma separated tabular data. Due to the nature of the MIST_ROI parcellation, this folder contains two files:
- MIST_PARCEL_ORDER.csv. Columns are MIST resolutions from MIST_7 to MIST_ATOM, excluding MIST_ROI. Rows are parcel roi IDs in the corresponding resolutions. The table is meant to be read from right to left. Starting with the roi ID of a MIST_ATOM parcel, one finds the parent parcel at the next lower resolution in the next left column and so on. As a consequence, only the last column contains unique elements, parcel roi IDs in columns of every lower resolution are repeated as often as necessary for all decompositions.
- MIST_PARCEL_ORDER_ROI.csv. Like MIST_PARCEL_ORDER.csv but only for the labeled resolutions MIST_7 through MIST_122, and MIST_ROI and MIST_ATOM. Provides information on the decomposition of MIST_122 into MIST_ROI.
Data are available under the terms of the Creative Commons Zero "No rights reserved" data waiver (CC0 1.0 Public domain dedication).
This work was supported by grants from Brain Canada (JA, JSA), Brain Canada (SU, CM), Azrieli foundation (SU), Natural Sciences and Engineering Research Council (YB), as well as a salary award by Fonds de Recherche du Québec - Santé (FRQS) and the Courtois foundation to PB.
The computational resources used to perform the data analysis were provided by Compute Canada, and were funded in part by NSERC, FQRNT, and McGill University.
We would like to thank AmanPreet Badhwar, Angela Tam, and Perrine Ferré for their comments and suggestions of parcel names. For their feedback and contributions to writing the manuscript of this publication we want to thank Christian Dansereau, Jake Vogel, Angela Tam, Esther Schott, and AmanPreet Badhwar.
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https://mniopenresearch.org/articles/1-3/v1#referee-response-26070
Sebastian Urchs, Pierre Bellec and colleagues present multi-resolution parcellation of the cortical, subcortical and cerebellar gray matter and reference to theoretical guarantees, Bootsrap Analysis of stable Clusters.
I truly liked this paper, it showed the importance of functional brain percolation and it practically use. The interactive web interface makes it possible to access to the different resolution of the atlas and directly incorporate to the brain analysis pipeline.
The strong point of the manuscript is the quality evaluation, which is very comprehensive. The parcellations stability was exterminated with functional homogeneity of the parcels and the comparison analysis with another commonly used atlases was presented.
Some notes for the minor revisions:
Could you please mention the previous version of the atlases and what are the crucial differences.
The number of the subjects selected for this atlas is limited to 190 subjects. Could you provide some discussion on
- importance of sample pool size in atlas generation
- prognosticate possible effect of larger number (~1000) of samples from GSP or UKBB datasets.
page 1, reference the NiLearn package and put the link to Nilearn and NIAK (page 3)
page 4, typo, ‘the’ appears 2 times in ‘We used the the multi-scale stepwise’
page 15, figures 5 and 6. I’d suggest to make them more ‘off-line friendly’, indicating on the plot at least names of the atlases. These figures are very important and contain significant information, that is lost in the pdf format.
Is the rationale for creating the dataset(s) clearly described?
Yes
Are the protocols appropriate and is the work technically sound?
Yes
Are sufficient details of methods and materials provided to allow replication by others?
Yes
Are the datasets clearly presented in a useable and accessible format?
Yes
Competing Interests: No competing interests were disclosed.
https://mniopenresearch.org/articles/1-3/v1#referee-response-26070
There already exist many brain atlases based on anatomical or ... Continue reading We thank Dr. Chyzhyk for her valuable feedback and suggestions. We respond below point by point (our responses in bold)
There already exist many brain atlases based on anatomical or functional information and algorithms of the parcellation in the literature that was used for the atlas creation. This work presents an atlas from the date have been derived from resting-state fMRI data.
Sebastian Urchs, Pierre Bellec and colleagues present multi-resolution parcellation of the cortical, subcortical and cerebellar gray matter and reference to theoretical guarantees, Bootsrap Analysis of stable Clusters.
I truly liked this paper, it showed the importance of functional brain percolation and it practically use. The interactive web interface makes it possible to access to the different resolution of the atlas and directly incorporate to the brain analysis pipeline.
The strong point of the manuscript is the quality evaluation, which is very comprehensive. The parcellations stability was exterminated with functional homogeneity of the parcels and the comparison analysis with another commonly used atlases was presented.
Some notes for the minor revisions:
Could you please mention the previous version of the atlases and what are the crucial differences.
We thank Dr. Chyzhyk for this comment. Indeed, the individual parcellations of the MIST parcellation have already been publicly available prior to this publication on figshare1. We have now added a section in the introduction highlighting this fact for users who have already been using this parcellation. We also point out that while the parcellations haven’t changed from the previous version, we now have named and annotated them, and provide a data-derived hierarchical decomposition to facilitate their use, which is the core contribution of this work.
The number of the subjects selected for this atlas is limited to 190 subjects. Could you provide some discussion on
- importance of sample pool size in atlas generation
- prognosticate possible effect of larger number (~1000) of samples from GSP or UKBB datasets.
We have conducted a replication test of our original parcellation with the GSP dataset. We discuss the results of this analysis in a new section entitled “Generalizability of the parcellation”. Overall, the agreement between the parcellations generated with the Cambridge and the GSP samples is good.
page 1, reference the NiLearn package and put the link to Nilearn and NIAK (page 3)
page 4, typo, ‘the’ appears 2 times in ‘We used the the multi-scale stepwise’
page 15, figures 5 and 6. I’d suggest to make them more ‘off-line friendly’, indicating on the plot at least names of the atlases. These figures are very important and contain significant information, that is lost in the pdf format.
We thank Dr. Chyzhyk for pointing out these mistakes in the original draft which we have corrected. We have addressed the shortcomings of the plotly-based interactive figures when viewed in the pdf version of the paper with the publisher. These figures now appear with static labels in the pdf version of the article.
1. https://figshare.com/articles/Group_multiscale_functional_template_generated_with_BASC_on_the_Cambridge_sample/1285615
There already exist many brain atlases based on anatomical or functional information and algorithms of the parcellation in the literature that was used for the atlas creation. This work presents an atlas from the date have been derived from resting-state fMRI data.
Sebastian Urchs, Pierre Bellec and colleagues present multi-resolution parcellation of the cortical, subcortical and cerebellar gray matter and reference to theoretical guarantees, Bootsrap Analysis of stable Clusters.
I truly liked this paper, it showed the importance of functional brain percolation and it practically use. The interactive web interface makes it possible to access to the different resolution of the atlas and directly incorporate to the brain analysis pipeline.
The strong point of the manuscript is the quality evaluation, which is very comprehensive. The parcellations stability was exterminated with functional homogeneity of the parcels and the comparison analysis with another commonly used atlases was presented.
Some notes for the minor revisions:
Could you please mention the previous version of the atlases and what are the crucial differences.
We thank Dr. Chyzhyk for this comment. Indeed, the individual parcellations of the MIST parcellation have already been publicly available prior to this publication on figshare1. We have now added a section in the introduction highlighting this fact for users who have already been using this parcellation. We also point out that while the parcellations haven’t changed from the previous version, we now have named and annotated them, and provide a data-derived hierarchical decomposition to facilitate their use, which is the core contribution of this work.
The number of the subjects selected for this atlas is limited to 190 subjects. Could you provide some discussion on
- importance of sample pool size in atlas generation
- prognosticate possible effect of larger number (~1000) of samples from GSP or UKBB datasets.
We have conducted a replication test of our original parcellation with the GSP dataset. We discuss the results of this analysis in a new section entitled “Generalizability of the parcellation”. Overall, the agreement between the parcellations generated with the Cambridge and the GSP samples is good.
page 1, reference the NiLearn package and put the link to Nilearn and NIAK (page 3)
page 4, typo, ‘the’ appears 2 times in ‘We used the the multi-scale stepwise’
page 15, figures 5 and 6. I’d suggest to make them more ‘off-line friendly’, indicating on the plot at least names of the atlases. These figures are very important and contain significant information, that is lost in the pdf format.
We thank Dr. Chyzhyk for pointing out these mistakes in the original draft which we have corrected. We have addressed the shortcomings of the plotly-based interactive figures when viewed in the pdf version of the paper with the publisher. These figures now appear with static labels in the pdf version of the article.
1. https://figshare.com/articles/Group_multiscale_functional_template_generated_with_BASC_on_the_Cambridge_sample/1285615
There already exist many brain atlases based on anatomical or ... Continue reading We thank Dr. Chyzhyk for her valuable feedback and suggestions. We respond below point by point (our responses in bold)
There already exist many brain atlases based on anatomical or functional information and algorithms of the parcellation in the literature that was used for the atlas creation. This work presents an atlas from the date have been derived from resting-state fMRI data.
Sebastian Urchs, Pierre Bellec and colleagues present multi-resolution parcellation of the cortical, subcortical and cerebellar gray matter and reference to theoretical guarantees, Bootsrap Analysis of stable Clusters.
I truly liked this paper, it showed the importance of functional brain percolation and it practically use. The interactive web interface makes it possible to access to the different resolution of the atlas and directly incorporate to the brain analysis pipeline.
The strong point of the manuscript is the quality evaluation, which is very comprehensive. The parcellations stability was exterminated with functional homogeneity of the parcels and the comparison analysis with another commonly used atlases was presented.
Some notes for the minor revisions:
Could you please mention the previous version of the atlases and what are the crucial differences.
We thank Dr. Chyzhyk for this comment. Indeed, the individual parcellations of the MIST parcellation have already been publicly available prior to this publication on figshare1. We have now added a section in the introduction highlighting this fact for users who have already been using this parcellation. We also point out that while the parcellations haven’t changed from the previous version, we now have named and annotated them, and provide a data-derived hierarchical decomposition to facilitate their use, which is the core contribution of this work.
The number of the subjects selected for this atlas is limited to 190 subjects. Could you provide some discussion on
- importance of sample pool size in atlas generation
- prognosticate possible effect of larger number (~1000) of samples from GSP or UKBB datasets.
We have conducted a replication test of our original parcellation with the GSP dataset. We discuss the results of this analysis in a new section entitled “Generalizability of the parcellation”. Overall, the agreement between the parcellations generated with the Cambridge and the GSP samples is good.
page 1, reference the NiLearn package and put the link to Nilearn and NIAK (page 3)
page 4, typo, ‘the’ appears 2 times in ‘We used the the multi-scale stepwise’
page 15, figures 5 and 6. I’d suggest to make them more ‘off-line friendly’, indicating on the plot at least names of the atlases. These figures are very important and contain significant information, that is lost in the pdf format.
We thank Dr. Chyzhyk for pointing out these mistakes in the original draft which we have corrected. We have addressed the shortcomings of the plotly-based interactive figures when viewed in the pdf version of the paper with the publisher. These figures now appear with static labels in the pdf version of the article.
1. https://figshare.com/articles/Group_multiscale_functional_template_generated_with_BASC_on_the_Cambridge_sample/1285615
There already exist many brain atlases based on anatomical or functional information and algorithms of the parcellation in the literature that was used for the atlas creation. This work presents an atlas from the date have been derived from resting-state fMRI data.
Sebastian Urchs, Pierre Bellec and colleagues present multi-resolution parcellation of the cortical, subcortical and cerebellar gray matter and reference to theoretical guarantees, Bootsrap Analysis of stable Clusters.
I truly liked this paper, it showed the importance of functional brain percolation and it practically use. The interactive web interface makes it possible to access to the different resolution of the atlas and directly incorporate to the brain analysis pipeline.
The strong point of the manuscript is the quality evaluation, which is very comprehensive. The parcellations stability was exterminated with functional homogeneity of the parcels and the comparison analysis with another commonly used atlases was presented.
Some notes for the minor revisions:
Could you please mention the previous version of the atlases and what are the crucial differences.
We thank Dr. Chyzhyk for this comment. Indeed, the individual parcellations of the MIST parcellation have already been publicly available prior to this publication on figshare1. We have now added a section in the introduction highlighting this fact for users who have already been using this parcellation. We also point out that while the parcellations haven’t changed from the previous version, we now have named and annotated them, and provide a data-derived hierarchical decomposition to facilitate their use, which is the core contribution of this work.
The number of the subjects selected for this atlas is limited to 190 subjects. Could you provide some discussion on
- importance of sample pool size in atlas generation
- prognosticate possible effect of larger number (~1000) of samples from GSP or UKBB datasets.
We have conducted a replication test of our original parcellation with the GSP dataset. We discuss the results of this analysis in a new section entitled “Generalizability of the parcellation”. Overall, the agreement between the parcellations generated with the Cambridge and the GSP samples is good.
page 1, reference the NiLearn package and put the link to Nilearn and NIAK (page 3)
page 4, typo, ‘the’ appears 2 times in ‘We used the the multi-scale stepwise’
page 15, figures 5 and 6. I’d suggest to make them more ‘off-line friendly’, indicating on the plot at least names of the atlases. These figures are very important and contain significant information, that is lost in the pdf format.
We thank Dr. Chyzhyk for pointing out these mistakes in the original draft which we have corrected. We have addressed the shortcomings of the plotly-based interactive figures when viewed in the pdf version of the paper with the publisher. These figures now appear with static labels in the pdf version of the article.
1. https://figshare.com/articles/Group_multiscale_functional_template_generated_with_BASC_on_the_Cambridge_sample/1285615
https://mniopenresearch.org/articles/1-3/v1#referee-response-26051
I have no comments on the methods or their implementation – these (e.g., NIAC, BASC) are well described and utilised in other papers. The MIST_64 parcellation has been shown to perform well in a test of predictive models of a variety of disorders on the basis of functional connectivity data1.
My remarks primarily relate to the fact that there are many existing parcellations – indeed, the authors perform a relatively superficial quantitative comparison of these. What advantage does the current set of templates offer over existing ones? It would be useful to consider this directly in relation to some of the very widely used ones e.g., Yeo et al. (20112; whose parcellation was based on a set of participants that likely included the ones who formed the basis of the current parcellation) and Glasser et al. (2016)3. The inclusion of subcortical areas including the cerebellum, for example, is a distinct advantage.
Second, perhaps the authors could offer some rationale as to why they selected a single sample of <200 participants from a single site as the dataset from which the templates would be derived. With such a homogeneous sample and narrow age range, will the parcellations be widely applicable?
A particularly informative comparison/control employed by Craddock et al. 20114 was a “random” clustering based on mere spatial continuity. The “random” solutions performed surprisingly well. Employing such a comparison here might also strengthen the argument for the proposed template.
In the discussion of boundary/transition regions, a useful reference may be: Huntenburg, J. M., Bazin, P.-L., & Margulies, D. S. (2018). Large-Scale Gradients in Human Cortical Organization5.
Is the rationale for creating the dataset(s) clearly described?
Partly
Are the protocols appropriate and is the work technically sound?
Yes
Are sufficient details of methods and materials provided to allow replication by others?
Yes
Are the datasets clearly presented in a useable and accessible format?
Yes
References
1. Dadi K, Abraham A, Rahim M, Thirion B, et al.: Comparing functional connectivity based predictive models across datasets. International Workshop on Pattern Recognition in Neuroimaging. 2016. 1-42. Yeo BT, Krienen FM, Sepulcre J, Sabuncu MR, et al.: The organization of the human cerebral cortex estimated by intrinsic functional connectivity.J Neurophysiol. 2011; 106 (3): 1125-65 PubMed Abstract | Publisher Full Text
3. Glasser M, Coalson T, Robinson E, Hacker C, et al.: A multi-modal parcellation of human cerebral cortex. Nature. 2016; 536 (7615): 171-178 Publisher Full Text
4. Craddock RC, James GA, Holtzheimer PE, Hu XP, et al.: A whole brain fMRI atlas generated via spatially constrained spectral clustering.Hum Brain Mapp. 2012; 33 (8): 1914-28 PubMed Abstract | Publisher Full Text
5. Huntenburg JM, Bazin PL, Margulies DS: Large-Scale Gradients in Human Cortical Organization.Trends Cogn Sci. 2018; 22 (1): 21-31 PubMed Abstract | Publisher Full Text
Competing Interests: No competing interests were disclosed.
https://mniopenresearch.org/articles/1-3/v1#referee-response-26051
The paper by Urchs et al. describes in careful detail the derivation and validation of a set of functional parcellation templates that identify hierarchical “functional building blocks” of the brain at different levels of resolution. The effort is notable for its (1) detailed description of the approach and methods, together with the open sharing of the data, code, and results – ensuring applicability and reproducibility, (2) inclusion of a systematic and meaningful parcel nomenclature, (3) attractive, effective, and visually appealing interactive viewer, which allows users to explore the hierarchical parcellations and provides a unique complement to the paper.
I have no comments on the methods or their implementation – these (e.g., NIAC, BASC) are well described and utilised in other papers. The MIST_64 parcellation has been shown to perform well in a test of predictive models of a variety of disorders on the basis of functional connectivity data1.
My remarks primarily relate to the fact that there are many existing parcellations – indeed, the authors perform a relatively superficial quantitative comparison of these. What advantage does the current set of templates offer over existing ones? It would be useful to consider this directly in relation to some of the very widely used ones e.g., Yeo et al. (20112; whose parcellation was based on a set of participants that likely included the ones who formed the basis of the current parcellation) and Glasser et al. (2016)3. The inclusion of subcortical areas including the cerebellum, for example, is a distinct advantage.
We thank Dr. Kelly for these comments. In response, we have rewritten the abstract and introduction in order to clarify our rationale for developing a multi-resolution parcellation. We consider the multi-resolution decomposition and labels as the primary advantage of MIST over existing parcellations. As far as we know, there is no equivalent public data available. There are a few multiresolution atlases which include high resolution parcellations, e.g. [1,2], but they do not include or discuss network and sub-network decompositions. They also lack descriptive labels and don’t match parcels across the resolutions. In the new version of this work, we have included an additional section entitled “Comparison to existing atlases” in which we discuss differences and commonalities with the Yeo and Glasser parcellations in more detail.
Second, perhaps the authors could offer some rationale as to why they selected a single sample of <200 participants from a single site as the dataset from which the templates would be derived. With such a homogeneous sample and narrow age range, will the parcellations be widely applicable?
In short, we selected a dataset that is (1) public and easy to access; (2) has typical characteristics; and, (3) has low motion levels. We have amended our description of the dataset with an explanation of this rationale. We also added a new section to the paper entitled “Generalizability” where we discuss an additional replication analy sis of the MIST parcellation in two split-half samples of the original dataset and in an unrelated general population dataset. We discuss the results of this analysis in light of similar analyses in the existing parcellation literature. We have also included a discussion of a recent benchmark analysis by Dadi and colleagues [3] that show good performance of the MIST_64 parcellation on machine learning applications. Overall, although the dataset used here is smaller than others used in the field, e.g. HCP, these results demonstrate that the robustness and quality of the MIST atlas match those of existing published atlases.
A particularly informative comparison/control employed by Craddock et al. 20114 was a “random” clustering based on mere spatial continuity. The “random” solutions performed surprisingly well. Employing such a comparison here might also strengthen the argument for the proposed template.
In the discussion of boundary/transition regions, a useful reference may be: Huntenburg, J. M., Bazin, P.-L., & Margulies, D. S. (2018). Large-Scale Gradients in Human Cortical Organization5.T
We thank Dr. Kelly for this suggestion and have included the random parcels generated by Craddock et al. in our comparison of parcel homogeneity and illustrate our findings in the new section “Comparison with existing parcellations”. We find that the random Craddock parcels perform worse than connectivity-derived parcellations at lower spatial resolutions (generally larger parcel sizes) and begin outperforming connectivity-derived parcels at higher spatial resolutions (generally smaller parcel sizes). In general, we observe that differences in homogeneity between parcellations can almost entirely be explained by parcel size and intend to investigate this further in future work.
1. Shen X, Tokoglu F, Papademetris X, Constable RT. Groupwise whole-brain parcellation from resting-state fMRI data for network node identification. Neuroimage. 2013;82: 403–415.
2. Craddock RC, James GA, Holtzheimer PE 3rd, Hu XP, Mayberg HS. A whole brain fMRI atlas generated via spatially constrained spectral clustering. Hum Brain Mapp. Wiley Subscription Services, Inc., A Wiley Company; 2012;33: 1914–1928.
3. Dadi K, Rahim M, Abraham A, Chyzhyk D, Milham M, Thirion B, et al. Benchmarking functional connectome-based predictive models for resting-state fMRI. 2018; Available: https://hal.inria.fr/hal-01824205/
The paper by Urchs et al. describes in careful detail the derivation and validation of a set of functional parcellation templates that identify hierarchical “functional building blocks” of the brain at different levels of resolution. The effort is notable for its (1) detailed description of the approach and methods, together with the open sharing of the data, code, and results – ensuring applicability and reproducibility, (2) inclusion of a systematic and meaningful parcel nomenclature, (3) attractive, effective, and visually appealing interactive viewer, which allows users to explore the hierarchical parcellations and provides a unique complement to the paper.
I have no comments on the methods or their implementation – these (e.g., NIAC, BASC) are well described and utilised in other papers. The MIST_64 parcellation has been shown to perform well in a test of predictive models of a variety of disorders on the basis of functional connectivity data1.
My remarks primarily relate to the fact that there are many existing parcellations – indeed, the authors perform a relatively superficial quantitative comparison of these. What advantage does the current set of templates offer over existing ones? It would be useful to consider this directly in relation to some of the very widely used ones e.g., Yeo et al. (20112; whose parcellation was based on a set of participants that likely included the ones who formed the basis of the current parcellation) and Glasser et al. (2016)3. The inclusion of subcortical areas including the cerebellum, for example, is a distinct advantage.
We thank Dr. Kelly for these comments. In response, we have rewritten the abstract and introduction in order to clarify our rationale for developing a multi-resolution parcellation. We consider the multi-resolution decomposition and labels as the primary advantage of MIST over existing parcellations. As far as we know, there is no equivalent public data available. There are a few multiresolution atlases which include high resolution parcellations, e.g. [1,2], but they do not include or discuss network and sub-network decompositions. They also lack descriptive labels and don’t match parcels across the resolutions. In the new version of this work, we have included an additional section entitled “Comparison to existing atlases” in which we discuss differences and commonalities with the Yeo and Glasser parcellations in more detail.
Second, perhaps the authors could offer some rationale as to why they selected a single sample of <200 participants from a single site as the dataset from which the templates would be derived. With such a homogeneous sample and narrow age range, will the parcellations be widely applicable?
In short, we selected a dataset that is (1) public and easy to access; (2) has typical characteristics; and, (3) has low motion levels. We have amended our description of the dataset with an explanation of this rationale. We also added a new section to the paper entitled “Generalizability” where we discuss an additional replication analy sis of the MIST parcellation in two split-half samples of the original dataset and in an unrelated general population dataset. We discuss the results of this analysis in light of similar analyses in the existing parcellation literature. We have also included a discussion of a recent benchmark analysis by Dadi and colleagues [3] that show good performance of the MIST_64 parcellation on machine learning applications. Overall, although the dataset used here is smaller than others used in the field, e.g. HCP, these results demonstrate that the robustness and quality of the MIST atlas match those of existing published atlases.
A particularly informative comparison/control employed by Craddock et al. 20114 was a “random” clustering based on mere spatial continuity. The “random” solutions performed surprisingly well. Employing such a comparison here might also strengthen the argument for the proposed template.
In the discussion of boundary/transition regions, a useful reference may be: Huntenburg, J. M., Bazin, P.-L., & Margulies, D. S. (2018). Large-Scale Gradients in Human Cortical Organization5.T
We thank Dr. Kelly for this suggestion and have included the random parcels generated by Craddock et al. in our comparison of parcel homogeneity and illustrate our findings in the new section “Comparison with existing parcellations”. We find that the random Craddock parcels perform worse than connectivity-derived parcellations at lower spatial resolutions (generally larger parcel sizes) and begin outperforming connectivity-derived parcels at higher spatial resolutions (generally smaller parcel sizes). In general, we observe that differences in homogeneity between parcellations can almost entirely be explained by parcel size and intend to investigate this further in future work.
1. Shen X, Tokoglu F, Papademetris X, Constable RT. Groupwise whole-brain parcellation from resting-state fMRI data for network node identification. Neuroimage. 2013;82: 403–415.
2. Craddock RC, James GA, Holtzheimer PE 3rd, Hu XP, Mayberg HS. A whole brain fMRI atlas generated via spatially constrained spectral clustering. Hum Brain Mapp. Wiley Subscription Services, Inc., A Wiley Company; 2012;33: 1914–1928.
3. Dadi K, Rahim M, Abraham A, Chyzhyk D, Milham M, Thirion B, et al. Benchmarking functional connectome-based predictive models for resting-state fMRI. 2018; Available: https://hal.inria.fr/hal-01824205/
The paper by Urchs et al. describes in careful detail the derivation and validation of a set of functional parcellation templates that identify hierarchical “functional building blocks” of the brain at different levels of resolution. The effort is notable for its (1) detailed description of the approach and methods, together with the open sharing of the data, code, and results – ensuring applicability and reproducibility, (2) inclusion of a systematic and meaningful parcel nomenclature, (3) attractive, effective, and visually appealing interactive viewer, which allows users to explore the hierarchical parcellations and provides a unique complement to the paper.
I have no comments on the methods or their implementation – these (e.g., NIAC, BASC) are well described and utilised in other papers. The MIST_64 parcellation has been shown to perform well in a test of predictive models of a variety of disorders on the basis of functional connectivity data1.
My remarks primarily relate to the fact that there are many existing parcellations – indeed, the authors perform a relatively superficial quantitative comparison of these. What advantage does the current set of templates offer over existing ones? It would be useful to consider this directly in relation to some of the very widely used ones e.g., Yeo et al. (20112; whose parcellation was based on a set of participants that likely included the ones who formed the basis of the current parcellation) and Glasser et al. (2016)3. The inclusion of subcortical areas including the cerebellum, for example, is a distinct advantage.
We thank Dr. Kelly for these comments. In response, we have rewritten the abstract and introduction in order to clarify our rationale for developing a multi-resolution parcellation. We consider the multi-resolution decomposition and labels as the primary advantage of MIST over existing parcellations. As far as we know, there is no equivalent public data available. There are a few multiresolution atlases which include high resolution parcellations, e.g. [1,2], but they do not include or discuss network and sub-network decompositions. They also lack descriptive labels and don’t match parcels across the resolutions. In the new version of this work, we have included an additional section entitled “Comparison to existing atlases” in which we discuss differences and commonalities with the Yeo and Glasser parcellations in more detail.
Second, perhaps the authors could offer some rationale as to why they selected a single sample of <200 participants from a single site as the dataset from which the templates would be derived. With such a homogeneous sample and narrow age range, will the parcellations be widely applicable?
In short, we selected a dataset that is (1) public and easy to access; (2) has typical characteristics; and, (3) has low motion levels. We have amended our description of the dataset with an explanation of this rationale. We also added a new section to the paper entitled “Generalizability” where we discuss an additional replication analy sis of the MIST parcellation in two split-half samples of the original dataset and in an unrelated general population dataset. We discuss the results of this analysis in light of similar analyses in the existing parcellation literature. We have also included a discussion of a recent benchmark analysis by Dadi and colleagues [3] that show good performance of the MIST_64 parcellation on machine learning applications. Overall, although the dataset used here is smaller than others used in the field, e.g. HCP, these results demonstrate that the robustness and quality of the MIST atlas match those of existing published atlases.
A particularly informative comparison/control employed by Craddock et al. 20114 was a “random” clustering based on mere spatial continuity. The “random” solutions performed surprisingly well. Employing such a comparison here might also strengthen the argument for the proposed template.
In the discussion of boundary/transition regions, a useful reference may be: Huntenburg, J. M., Bazin, P.-L., & Margulies, D. S. (2018). Large-Scale Gradients in Human Cortical Organization5.T
We thank Dr. Kelly for this suggestion and have included the random parcels generated by Craddock et al. in our comparison of parcel homogeneity and illustrate our findings in the new section “Comparison with existing parcellations”. We find that the random Craddock parcels perform worse than connectivity-derived parcellations at lower spatial resolutions (generally larger parcel sizes) and begin outperforming connectivity-derived parcels at higher spatial resolutions (generally smaller parcel sizes). In general, we observe that differences in homogeneity between parcellations can almost entirely be explained by parcel size and intend to investigate this further in future work.
1. Shen X, Tokoglu F, Papademetris X, Constable RT. Groupwise whole-brain parcellation from resting-state fMRI data for network node identification. Neuroimage. 2013;82: 403–415.
2. Craddock RC, James GA, Holtzheimer PE 3rd, Hu XP, Mayberg HS. A whole brain fMRI atlas generated via spatially constrained spectral clustering. Hum Brain Mapp. Wiley Subscription Services, Inc., A Wiley Company; 2012;33: 1914–1928.
3. Dadi K, Rahim M, Abraham A, Chyzhyk D, Milham M, Thirion B, et al. Benchmarking functional connectome-based predictive models for resting-state fMRI. 2018; Available: https://hal.inria.fr/hal-01824205/
The paper by Urchs et al. describes in careful detail the derivation and validation of a set of functional parcellation templates that identify hierarchical “functional building blocks” of the brain at different levels of resolution. The effort is notable for its (1) detailed description of the approach and methods, together with the open sharing of the data, code, and results – ensuring applicability and reproducibility, (2) inclusion of a systematic and meaningful parcel nomenclature, (3) attractive, effective, and visually appealing interactive viewer, which allows users to explore the hierarchical parcellations and provides a unique complement to the paper.
I have no comments on the methods or their implementation – these (e.g., NIAC, BASC) are well described and utilised in other papers. The MIST_64 parcellation has been shown to perform well in a test of predictive models of a variety of disorders on the basis of functional connectivity data1.
My remarks primarily relate to the fact that there are many existing parcellations – indeed, the authors perform a relatively superficial quantitative comparison of these. What advantage does the current set of templates offer over existing ones? It would be useful to consider this directly in relation to some of the very widely used ones e.g., Yeo et al. (20112; whose parcellation was based on a set of participants that likely included the ones who formed the basis of the current parcellation) and Glasser et al. (2016)3. The inclusion of subcortical areas including the cerebellum, for example, is a distinct advantage.
We thank Dr. Kelly for these comments. In response, we have rewritten the abstract and introduction in order to clarify our rationale for developing a multi-resolution parcellation. We consider the multi-resolution decomposition and labels as the primary advantage of MIST over existing parcellations. As far as we know, there is no equivalent public data available. There are a few multiresolution atlases which include high resolution parcellations, e.g. [1,2], but they do not include or discuss network and sub-network decompositions. They also lack descriptive labels and don’t match parcels across the resolutions. In the new version of this work, we have included an additional section entitled “Comparison to existing atlases” in which we discuss differences and commonalities with the Yeo and Glasser parcellations in more detail.
Second, perhaps the authors could offer some rationale as to why they selected a single sample of <200 participants from a single site as the dataset from which the templates would be derived. With such a homogeneous sample and narrow age range, will the parcellations be widely applicable?
In short, we selected a dataset that is (1) public and easy to access; (2) has typical characteristics; and, (3) has low motion levels. We have amended our description of the dataset with an explanation of this rationale. We also added a new section to the paper entitled “Generalizability” where we discuss an additional replication analy sis of the MIST parcellation in two split-half samples of the original dataset and in an unrelated general population dataset. We discuss the results of this analysis in light of similar analyses in the existing parcellation literature. We have also included a discussion of a recent benchmark analysis by Dadi and colleagues [3] that show good performance of the MIST_64 parcellation on machine learning applications. Overall, although the dataset used here is smaller than others used in the field, e.g. HCP, these results demonstrate that the robustness and quality of the MIST atlas match those of existing published atlases.
A particularly informative comparison/control employed by Craddock et al. 20114 was a “random” clustering based on mere spatial continuity. The “random” solutions performed surprisingly well. Employing such a comparison here might also strengthen the argument for the proposed template.
In the discussion of boundary/transition regions, a useful reference may be: Huntenburg, J. M., Bazin, P.-L., & Margulies, D. S. (2018). Large-Scale Gradients in Human Cortical Organization5.T
We thank Dr. Kelly for this suggestion and have included the random parcels generated by Craddock et al. in our comparison of parcel homogeneity and illustrate our findings in the new section “Comparison with existing parcellations”. We find that the random Craddock parcels perform worse than connectivity-derived parcellations at lower spatial resolutions (generally larger parcel sizes) and begin outperforming connectivity-derived parcels at higher spatial resolutions (generally smaller parcel sizes). In general, we observe that differences in homogeneity between parcellations can almost entirely be explained by parcel size and intend to investigate this further in future work.
1. Shen X, Tokoglu F, Papademetris X, Constable RT. Groupwise whole-brain parcellation from resting-state fMRI data for network node identification. Neuroimage. 2013;82: 403–415.
2. Craddock RC, James GA, Holtzheimer PE 3rd, Hu XP, Mayberg HS. A whole brain fMRI atlas generated via spatially constrained spectral clustering. Hum Brain Mapp. Wiley Subscription Services, Inc., A Wiley Company; 2012;33: 1914–1928.
3. Dadi K, Rahim M, Abraham A, Chyzhyk D, Milham M, Thirion B, et al. Benchmarking functional connectome-based predictive models for resting-state fMRI. 2018; Available: https://hal.inria.fr/hal-01824205/
https://mniopenresearch.org/articles/1-3/v1#referee-response-26049
Is the rationale for creating the dataset(s) clearly described?
Yes
Are the protocols appropriate and is the work technically sound?
Yes
Are sufficient details of methods and materials provided to allow replication by others?
Yes
Are the datasets clearly presented in a useable and accessible format?
Yes
Competing Interests: No competing interests were disclosed.
https://mniopenresearch.org/articles/1-3/v1#referee-response-26049
The methods and Toolbox provided by Urchs, Bellec and colleagues are an important contribution to the methods our field is developing for quantitative investigations of the brain function and structure. The Multiresolution resolution whole brain approach (including subcortical and cerebellar regions) and Bootstrap Analysis of Stable Clusters are important novel features of the study. I would have liked to see a replication analysis on HCP or NKI data to investigate correspondence - both convergence and divergence.
We thank Dr. Menon for these comments. In response, we have conducted a replication analysis on the publicly available Genome Superstruct Project [1]. We chose this dataset over the HCP and NKI datasets suggested by Dr. Menon due to the similarity in acquisition parameters to the data we used in our original parcellation (3mm isotropic voxels, 2 second TR, interleaved acquisition) and that we believe still reflects a majority of the datasets used in the field. We discuss our findings regarding the replicability of the parcellations in the context of comparable analyses in the literature in a new section entitled “Generalizability of the parcellation”.
A specific comparison with the Gasser parcellation would also have been helpful.
We have added a new section entitled “Comparison with existing parcellations” where we discuss differences in the methodology and parcellation results with the Glasser and Yeo parcellations. In particular, we highlight the differences in approach and spatial coverage by with the Glasser parcels that make a quantitative comparison difficult.
Finally, I would suggest that code for the authors' study be distributed via Github to facilitate further improvements and testing.
In addition to the public github repository for our interactive viewer (https://github.com/SIMEXP/multiscale_dashboard), we have also released the code for our original parcellation and subsequent analyses in a second github repository (https://github.com/surchs/MIST_atlas).
1. Holmes AJ, Hollinshead MO, O’Keefe TM, Petrov VI, Fariello GR, Wald LL, et al. Brain Genomics Superstruct Project initial data release with structural, functional, and behavioral measures. Sci Data. 2015;2: 150031.
The methods and Toolbox provided by Urchs, Bellec and colleagues are an important contribution to the methods our field is developing for quantitative investigations of the brain function and structure. The Multiresolution resolution whole brain approach (including subcortical and cerebellar regions) and Bootstrap Analysis of Stable Clusters are important novel features of the study. I would have liked to see a replication analysis on HCP or NKI data to investigate correspondence - both convergence and divergence.
We thank Dr. Menon for these comments. In response, we have conducted a replication analysis on the publicly available Genome Superstruct Project [1]. We chose this dataset over the HCP and NKI datasets suggested by Dr. Menon due to the similarity in acquisition parameters to the data we used in our original parcellation (3mm isotropic voxels, 2 second TR, interleaved acquisition) and that we believe still reflects a majority of the datasets used in the field. We discuss our findings regarding the replicability of the parcellations in the context of comparable analyses in the literature in a new section entitled “Generalizability of the parcellation”.
A specific comparison with the Gasser parcellation would also have been helpful.
We have added a new section entitled “Comparison with existing parcellations” where we discuss differences in the methodology and parcellation results with the Glasser and Yeo parcellations. In particular, we highlight the differences in approach and spatial coverage by with the Glasser parcels that make a quantitative comparison difficult.
Finally, I would suggest that code for the authors' study be distributed via Github to facilitate further improvements and testing.
In addition to the public github repository for our interactive viewer (https://github.com/SIMEXP/multiscale_dashboard), we have also released the code for our original parcellation and subsequent analyses in a second github repository (https://github.com/surchs/MIST_atlas).
1. Holmes AJ, Hollinshead MO, O’Keefe TM, Petrov VI, Fariello GR, Wald LL, et al. Brain Genomics Superstruct Project initial data release with structural, functional, and behavioral measures. Sci Data. 2015;2: 150031.
The methods and Toolbox provided by Urchs, Bellec and colleagues are an important contribution to the methods our field is developing for quantitative investigations of the brain function and structure. The Multiresolution resolution whole brain approach (including subcortical and cerebellar regions) and Bootstrap Analysis of Stable Clusters are important novel features of the study. I would have liked to see a replication analysis on HCP or NKI data to investigate correspondence - both convergence and divergence.
We thank Dr. Menon for these comments. In response, we have conducted a replication analysis on the publicly available Genome Superstruct Project [1]. We chose this dataset over the HCP and NKI datasets suggested by Dr. Menon due to the similarity in acquisition parameters to the data we used in our original parcellation (3mm isotropic voxels, 2 second TR, interleaved acquisition) and that we believe still reflects a majority of the datasets used in the field. We discuss our findings regarding the replicability of the parcellations in the context of comparable analyses in the literature in a new section entitled “Generalizability of the parcellation”.
A specific comparison with the Gasser parcellation would also have been helpful.
We have added a new section entitled “Comparison with existing parcellations” where we discuss differences in the methodology and parcellation results with the Glasser and Yeo parcellations. In particular, we highlight the differences in approach and spatial coverage by with the Glasser parcels that make a quantitative comparison difficult.
Finally, I would suggest that code for the authors' study be distributed via Github to facilitate further improvements and testing.
In addition to the public github repository for our interactive viewer (https://github.com/SIMEXP/multiscale_dashboard), we have also released the code for our original parcellation and subsequent analyses in a second github repository (https://github.com/surchs/MIST_atlas).
1. Holmes AJ, Hollinshead MO, O’Keefe TM, Petrov VI, Fariello GR, Wald LL, et al. Brain Genomics Superstruct Project initial data release with structural, functional, and behavioral measures. Sci Data. 2015;2: 150031.
The methods and Toolbox provided by Urchs, Bellec and colleagues are an important contribution to the methods our field is developing for quantitative investigations of the brain function and structure. The Multiresolution resolution whole brain approach (including subcortical and cerebellar regions) and Bootstrap Analysis of Stable Clusters are important novel features of the study. I would have liked to see a replication analysis on HCP or NKI data to investigate correspondence - both convergence and divergence.
We thank Dr. Menon for these comments. In response, we have conducted a replication analysis on the publicly available Genome Superstruct Project [1]. We chose this dataset over the HCP and NKI datasets suggested by Dr. Menon due to the similarity in acquisition parameters to the data we used in our original parcellation (3mm isotropic voxels, 2 second TR, interleaved acquisition) and that we believe still reflects a majority of the datasets used in the field. We discuss our findings regarding the replicability of the parcellations in the context of comparable analyses in the literature in a new section entitled “Generalizability of the parcellation”.
A specific comparison with the Gasser parcellation would also have been helpful.
We have added a new section entitled “Comparison with existing parcellations” where we discuss differences in the methodology and parcellation results with the Glasser and Yeo parcellations. In particular, we highlight the differences in approach and spatial coverage by with the Glasser parcels that make a quantitative comparison difficult.
Finally, I would suggest that code for the authors' study be distributed via Github to facilitate further improvements and testing.
In addition to the public github repository for our interactive viewer (https://github.com/SIMEXP/multiscale_dashboard), we have also released the code for our original parcellation and subsequent analyses in a second github repository (https://github.com/surchs/MIST_atlas).
1. Holmes AJ, Hollinshead MO, O’Keefe TM, Petrov VI, Fariello GR, Wald LL, et al. Brain Genomics Superstruct Project initial data release with structural, functional, and behavioral measures. Sci Data. 2015;2: 150031.
https://mniopenresearch.org/articles/1-3/v1#referee-response-26052
It is not immediately clear from the abstract ... Continue reading
It is not immediately clear from the abstract why there is a need for yet another parcellation scheme, given multiple currently exist in the literature. Perhaps a line about what is novel and what limitations the current approach overcomes would help orient the reader right away.
Can the authors say more about why the particular dataset (Cambridge) was used in the current study? Other datasets with longer resting state fMRI scans collected at higher resolution exist (such as the Human Connectome Project). What was the rationale for choosing this particular dataset over others?
In general, how does the current work compare with parcellations that can be derived from ICA?
It may be worth mentioning in the discussion that other approaches for parcellation using resting state fMRI data have also been proposed:
Development and validation of consensus clustering-based framework for brain segmentation using resting fMRI1.
Is the rationale for creating the dataset(s) clearly described?
Partly
Are the protocols appropriate and is the work technically sound?
Yes
Are sufficient details of methods and materials provided to allow replication by others?
Yes
Are the datasets clearly presented in a useable and accessible format?
Yes
References
1. Ryali S, Chen T, Padmanabhan A, Cai W, et al.: Development and validation of consensus clustering-based framework for brain segmentation using resting fMRI.J Neurosci Methods. 2015; 240: 128-40 PubMed Abstract | Publisher Full TextCompeting Interests: No competing interests were disclosed.
https://mniopenresearch.org/articles/1-3/v1#referee-response-26052
The authors present results of a new parcellation method (MIST) ... Continue reading We thank Dr. Uddin for her comments and feedback. Below we respond point by point (our responses in bold).
The authors present results of a new parcellation method (MIST) based on resting state fMRI data. This is an elegant approach. Some suggestions and questions for clarification are below.
It is not immediately clear from the abstract why there is a need for yet another parcellation scheme, given multiple currently exist in the literature. Perhaps a line about what is novel and what limitations the current approach overcomes would help orient the reader right away.
Thank you for the suggestion. We have rewritten the abstract and introduction to put more emphasis on (1) the multiresolution decompositions and (2) the multiresolution labels, which are to the best of our knowledge a new addition to the field. We have also added a section on the “Comparison with existing atlases” with a more in-depth discussion of related works.
Can the authors say more about why the particular dataset (Cambridge) was used in the current study? Other datasets with longer resting state fMRI scans collected at higher resolution exist (such as the Human Connectome Project). What was the rationale for choosing this particular dataset over others?
We have amended our description of the dataset to include the rationale for why we selected it. In brief, we have selected this dataset due to high quality of the imaging data, the low degree of motion and because the acquisition parameters (i.e. 2 second TR, 3mm isotropic voxels) are representative of the average imaging study in the field.
In general, how does the current work compare with parcellations that can be derived from ICA?
It may be worth mentioning in the discussion that other approaches for parcellation using resting state fMRI data have also been proposed:
We chose to restrict our quantitative evaluation to techniques which share the same objective of crisp parcellation, and not include linear decomposition which uncover gradients. We do agree that, in practice, there is a striking convergence between the two families of approaches, including for multiresolution decompositions, e.g. [1]. This will be a direction for future work.
1. Jones DT, Vemuri P, Murphy MC, Gunter JL, Senjem ML, Machulda MM, et al. Non-stationarity in the “resting brain’s” modular architecture. PLoS One. 2012;7: e39731.
The authors present results of a new parcellation method (MIST) based on resting state fMRI data. This is an elegant approach. Some suggestions and questions for clarification are below.
It is not immediately clear from the abstract why there is a need for yet another parcellation scheme, given multiple currently exist in the literature. Perhaps a line about what is novel and what limitations the current approach overcomes would help orient the reader right away.
Thank you for the suggestion. We have rewritten the abstract and introduction to put more emphasis on (1) the multiresolution decompositions and (2) the multiresolution labels, which are to the best of our knowledge a new addition to the field. We have also added a section on the “Comparison with existing atlases” with a more in-depth discussion of related works.
Can the authors say more about why the particular dataset (Cambridge) was used in the current study? Other datasets with longer resting state fMRI scans collected at higher resolution exist (such as the Human Connectome Project). What was the rationale for choosing this particular dataset over others?
We have amended our description of the dataset to include the rationale for why we selected it. In brief, we have selected this dataset due to high quality of the imaging data, the low degree of motion and because the acquisition parameters (i.e. 2 second TR, 3mm isotropic voxels) are representative of the average imaging study in the field.
In general, how does the current work compare with parcellations that can be derived from ICA?
It may be worth mentioning in the discussion that other approaches for parcellation using resting state fMRI data have also been proposed:
We chose to restrict our quantitative evaluation to techniques which share the same objective of crisp parcellation, and not include linear decomposition which uncover gradients. We do agree that, in practice, there is a striking convergence between the two families of approaches, including for multiresolution decompositions, e.g. [1]. This will be a direction for future work.
1. Jones DT, Vemuri P, Murphy MC, Gunter JL, Senjem ML, Machulda MM, et al. Non-stationarity in the “resting brain’s” modular architecture. PLoS One. 2012;7: e39731.
The authors present results of a new parcellation method (MIST) ... Continue reading We thank Dr. Uddin for her comments and feedback. Below we respond point by point (our responses in bold).
The authors present results of a new parcellation method (MIST) based on resting state fMRI data. This is an elegant approach. Some suggestions and questions for clarification are below.
It is not immediately clear from the abstract why there is a need for yet another parcellation scheme, given multiple currently exist in the literature. Perhaps a line about what is novel and what limitations the current approach overcomes would help orient the reader right away.
Thank you for the suggestion. We have rewritten the abstract and introduction to put more emphasis on (1) the multiresolution decompositions and (2) the multiresolution labels, which are to the best of our knowledge a new addition to the field. We have also added a section on the “Comparison with existing atlases” with a more in-depth discussion of related works.
Can the authors say more about why the particular dataset (Cambridge) was used in the current study? Other datasets with longer resting state fMRI scans collected at higher resolution exist (such as the Human Connectome Project). What was the rationale for choosing this particular dataset over others?
We have amended our description of the dataset to include the rationale for why we selected it. In brief, we have selected this dataset due to high quality of the imaging data, the low degree of motion and because the acquisition parameters (i.e. 2 second TR, 3mm isotropic voxels) are representative of the average imaging study in the field.
In general, how does the current work compare with parcellations that can be derived from ICA?
It may be worth mentioning in the discussion that other approaches for parcellation using resting state fMRI data have also been proposed:
We chose to restrict our quantitative evaluation to techniques which share the same objective of crisp parcellation, and not include linear decomposition which uncover gradients. We do agree that, in practice, there is a striking convergence between the two families of approaches, including for multiresolution decompositions, e.g. [1]. This will be a direction for future work.
1. Jones DT, Vemuri P, Murphy MC, Gunter JL, Senjem ML, Machulda MM, et al. Non-stationarity in the “resting brain’s” modular architecture. PLoS One. 2012;7: e39731.
The authors present results of a new parcellation method (MIST) based on resting state fMRI data. This is an elegant approach. Some suggestions and questions for clarification are below.
It is not immediately clear from the abstract why there is a need for yet another parcellation scheme, given multiple currently exist in the literature. Perhaps a line about what is novel and what limitations the current approach overcomes would help orient the reader right away.
Thank you for the suggestion. We have rewritten the abstract and introduction to put more emphasis on (1) the multiresolution decompositions and (2) the multiresolution labels, which are to the best of our knowledge a new addition to the field. We have also added a section on the “Comparison with existing atlases” with a more in-depth discussion of related works.
Can the authors say more about why the particular dataset (Cambridge) was used in the current study? Other datasets with longer resting state fMRI scans collected at higher resolution exist (such as the Human Connectome Project). What was the rationale for choosing this particular dataset over others?
We have amended our description of the dataset to include the rationale for why we selected it. In brief, we have selected this dataset due to high quality of the imaging data, the low degree of motion and because the acquisition parameters (i.e. 2 second TR, 3mm isotropic voxels) are representative of the average imaging study in the field.
In general, how does the current work compare with parcellations that can be derived from ICA?
It may be worth mentioning in the discussion that other approaches for parcellation using resting state fMRI data have also been proposed:
We chose to restrict our quantitative evaluation to techniques which share the same objective of crisp parcellation, and not include linear decomposition which uncover gradients. We do agree that, in practice, there is a striking convergence between the two families of approaches, including for multiresolution decompositions, e.g. [1]. This will be a direction for future work.
1. Jones DT, Vemuri P, Murphy MC, Gunter JL, Senjem ML, Machulda MM, et al. Non-stationarity in the “resting brain’s” modular architecture. PLoS One. 2012;7: e39731.