Dear Freesurfer users, (apologies for cross-post)

I am pleased to announce the first major release of my R package
"brainGraph" (v1.0.0), a collection of functions for performing graph
theory analyses of brain MRI data. I chose R because it is free and is, in
my opinion, the best choice for just about any statistical analysis. It is
available on CRAN at
https://cran.r-project.org/web/packages/brainGraph/index.html and
development versions will be on my Github page (link below).

You can use it for gray matter covariance networks (cortical thickness,
volume, surface area, or LGI), DTI tractography data (FSL's "probtrackx2",
PANDA, TrackVis, etc.), and for resting-state fMRI (the Matlab toolbox
DPABI/DPARSF).
It is very heavily dependent on the fantastic R package "igraph" (see
igraph.org), which is based on C code and is quite a bit faster than many
other R applications.

My Github page for the package is https://github.com/cwatson/brainGraph
<https://email.tch.harvard.edu/owa/redir.aspx?REF=AuYw-ae9TnjtRShTO7f-UJbUR68DDbXJHlMywLq1BKdgp0I_NYDUCAFodHRwczovL2dpdGh1Yi5jb20vY3dhdHNvbi9icmFpbkdyYXBo>.
At the bottom is the "README.md" file which provides some basic
information. Most important is the link to the User Guide, which has
extensive installation and usage information (warning: it is a direct PDF
link). It is very long but should be helpful. You will find code for
getting your data into R, and I have documented many analysis steps and
include multiple figures. I hope this is intuitive for both veteran and
novice R users. Additionally, there are links for help learning R, and
links to other R packages relevant to neuroimaging applications.

Some features that should be of interest include:
* calculation of a large number of graph/vertex/edge measures (particularly
those most common in neuroimaging)
* between-group vertex-wise analysis using the GLM
* implementation of the network-based statistic (NBS)
* bootstrapping & permutation testing
* random graph generation, small-worldness, and global/local/nodal
efficiency
* rich-club calculations
* robustness ("targeted attack" or "random failure") & vulnerability
* a basic GUI to explore your networks (up to 2 groups/subject at a time)

Please see the NEWS.md file (
https://github.com/cwatson/brainGraph/blob/master/NEWS.md) for the
changelog.

This remains a work-in-progress, so I am very happy to receive bug reports,
feature requests, general questions asking for help with code,
(constructive) criticism, etc.
Please join the Google Group that I set up for those purposes:
https://groups.google.com/forum/?hl=en#!forum/brainGraph-help

Chris Watson
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