brainGraph
(RRID: SCR_017260) is an
R package for performing graph theory
analyses of brain MRI data. It is most useful in atlas-based analyses (e.g., using an atlas such as
AAL,
or one from Freesurfer); however, many of
the computations (e.g., the GLM-based
functions and the network-based statistic) will work with any graph that
is compatible with igraph. The package will
perform analyses for structural covariance networks (SCN), DTI tractography
(I use probtrackx2 from FSL), and
resting-state fMRI covariance (I have used the Matlab-based DPABI
toolbox).
- Requirements
- Compatibility
- Installation
- Usage - the User Guide
- Major changes in v3.0.0
- Graph measures
- Visualization
- Getting Help
- Future versions
The package should work "out-of-the-box" on Linux systems (at least on Red Hat-based systems; i.e., CentOS, RHEL, Scientific Linux, etc.) since almost all development (and use, by me) has been on computers running CentOS 6 and (currently) CentOS 7. I have also had success running it (and did some development) on Windows 7, and have heard from users that it works on some versions of Mac OS and on Ubuntu. Please see the User Guide (mentioned below) for more details.
Many brainGraph
functions utilize multiple CPU cores. This is primarily done
via the foreach
package. Depending on your OS, you will need to install
doMC (macOS and Linux)
or doSNOW
(Windows).
I mostly use Freesurfer and FSL, but the following software packages should be suitable. Note that this is an incomplete list; any software that can output a connectivity matrix will work.
There are several brain atlases for which the data are present in brainGraph
.
Atlases containing .scgm
in the name contain both cortical and SubCortical Gray Matter (SCGM) regions.
dk
anddk.scgm
: Desikan-Killianydkt
anddkt.scgm
: Desikan-Killiany-Tourvilledestrieux
anddestrieux.scgm
: Destrieuxaal90
andaal116
: Automated Anatomical Labeling atlasaal2.94
andaal2.120
: AAL-2brainsuite
: Brainsuitecraddock200
: Craddock-200dosenbach160
: Dosenbach-160hoa112
: Harvard-Oxford atlaslpba40
: LONI Probabilistic Brain Atlashcp_mmp1.0
: HCP-1mmpower264
: Power-264gordon333
: Gordon-333brainnetome
: Brainnetome
Some functions accept a custom.atlas
argument, so that you can analyze data that is from an atlas not present in brainGraph
.
Other atlases to be added in the future include the following (I would need specific coordinate, region name, and lobe and hemisphere information):
- Shen-268
- Von Economo-Koskinas
- Willard-499 (see Richiardi et al., 2015)
- Schaefer-400 (see Schaefer et al., 2018)
There are (primarily) two ways to install this package:
- Directly from CRAN: (use one of the following commands)
install.packages('brainGraph')
install.packages('brainGraph', dependencies=TRUE)
- From the GitHub repo (for development versions). This requires that the devtools package be installed:
devtools::install_github('cwatson/brainGraph')
This should install all of the dependencies needed along with the package itself. For more details, see the User Guide (PDF link).
To set up your R session for parallel processing, you can use the following code. Note that it is different for Windows. This code should be run before any data processing. If you will always use a single OS, you can remove the unnecessary lines.
OS <- .Platform$OS.type
if (OS == 'windows') {
library(snow)
library(doSNOW)
num.cores <- as.numeric(Sys.getenv('NUMBER_OF_PROCESSORS'))
cl <- makeCluster(num.cores, type='SOCK')
clusterExport(cl, 'sim.rand.graph.par') # Or whatever functions you will use
registerDoSNOW(cl)
} else {
library(doMC)
registerDoMC(detectCores() - 1L) # Keep 1 core free
}
For example, I source the following simple script before I do any parallel processing with brainGraph
:
pacman::p_load(brainGraph, doMC)
registerDoMC(detectCores())
On some systems (e.g., macOS and Windows) it might be difficult to
install the necessary packages/dependencies for the GUI functions. Since v2.2.0
(released 2018-05-28),
the R packages RGtk2
and cairoDevice
have been changed to Suggests (i.e., they are no longer required),
so it can be installed on a "headless" server.
If you are on macOS or Windows and would like GUI functionality, please see this GitHub Gist. The comments contain more recent information. You may also need to install a few additional packages, shown here:
install.packages('gWidgets', dependencies=TRUE)
install.packages('gWidgetsRGtk2', dependencies=TRUE)
install.packages('RGtk2Extras', dependencies=TRUE)
There are a few suggested packages that may be required for certain functions:
RGtk2
andcairoDevice
: as mentioned above, these are required to use the GUIboot
: required forbrainGraph_boot
Hmisc
: required forcorr.matrix
ade4
: required forloo
andaop
expm
: required forcommunicability
andcentr_betw_comm
I have a User Guide that contains extensive code examples for analyses common to brain MRI studies. I also include some code for getting your data into R from Freesurfer, FSL, and DPABI, and some suggestions for workflow organization.
The User Guide is the most complete documentation of this package. If you are a beginner using R, I encourage you to read it thoroughly. You may start with the Preface or at whichever chapter is suitable for your analyses.
There are several major changes in v3.0.0
. See the User Guide for more extensive details.
- There are several fewer package dependencies, allowing for a quicker install process
- There are a few new built-in atlases (see below for the full list)
- Graph creation is simpler (in terms of code) with the new
brainGraphList
object - The GLM-based functions are significantly faster and easily handle large models. The most significant speed improvements are seen in
NBS
andmtpc
- There are more methods to calculate GLM-based statistics (including residuals, coefficient of determination, ANOVA, etc.)
- There are global options that give the user some more control
- There are other methods that make manipulating data objects easier/more flexible
To access the User Guide, a PDF is available at this link.
In addition to the extensive list of measures available in igraph, I have functions for calculating/performing:
There are several analyses based on the General Linear Model (GLM), and others that have different purposes.
- Between-group differences in vertex- or graph-level measures (e.g., degree, betweenness centrality, global efficiency, etc.) using the GLM's. See Chapter 8 of the User Guide, which was partly modeled after the GLM page on the FSL wiki
- The multi-threshold permutation correction (MTPC) method for statistical inference (see Drakesmith et al., 2015 and Chapter 9 of the User Guide)
- The network-based statistic (NBS) (see Zalesky et al., 2010 and Chapter 10 of the User Guide)
- Graph- and vertex-level mediation analysis (see Chapter 11 of the User Guide, and the mediation package in R)
- Bootstrapping of graph-level metrics (e.g., modularity)
- Permutation analysis of between-group differences in vertex- or graph-level measures
- "Individual contributions" (leave-one-out [LOO] and add-one-patient [AOP]; see Saggar et al., 2015)
- Null/random graph generation (both the "standard" method, and also a method controlling for clustering; see Bansal et al., 2009)
- Small-worldness: the "original" of Watts & Strogatz, 1998 and Humphries et al., 2008, and "omega" introduced in Telesford et al., 2011
- Rich-club coefficients and normalization (see Zhou & Mondragon, 2004; and Colizza et al., 2006)
- Efficiency (global, nodal, and local; see Latora & Marchiori, 2001)
- The rich-core (see Ma & Mondragon, 2015)
- Leverage centrality (see Joyce et al., 2010)
- Asymmetry index
- Robustness ("targeted attack" and "random failure") and vulnerability
- Euclidean distances of edges
- Participation coefficient and within-module degree z-score (see Guimera & Amaral, 2005a and 2005b)
- Gateway coefficient (see Vargas & Wahl, 2014)
- Communicability and communicability betweenness (see Estrada & Hatano, 2008; Estrada et al., 2009; Crofts & Higham, 2009)
- Vertex s-core membership (see Eidsaa & Almaas, 2013)
There is a plotting GUI for fast and easy data exploration that will not work without data from a standard atlas (ideally to be extended some time in the future). You may use a custom atlas if you follow the same format as the other atlases in the package (see Chapter 4 of the User Guide for instructions).
For bug reports, feature requests, help with usage/code/etc., please join the Google Group brainGraph-help. You may also consult the User Guide, and you can open an issue here on GitHub.
An incomplete list of features/functionality I plan on adding to future versions:
- Longitudinal modeling (with linear mixed effects (LME) models)
- Thresholding and graph creation using the minimum spanning tree as a base
- Thresholding and graph creation for resting-state fMRI using a technique such as the graphical lasso
- Write functions to print group analysis results in xtable format for
LaTeX
documents