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Configurable Pipeline for the Analysis of Connectomes

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============================================================ C-PAC: Configurable Pipeline for the Analysis of Connectomes

A configurable, open-source, Nipype-based, automated processing pipeline for resting state fMRI data. Designed for use by both novice users and experts, C-PAC brings the power, flexibility and elegance of Nipype to users in a plug-and-play fashion; no programming required.

Website

CPAC website is located here: http://fcp-indi.github.com/

Installation

If you are running ubuntu >=10.4: Download C-PAC/scripts/cpac_install_ubuntu.tar.gz, unzip it and run from the terminal. sudo ./ cpac_install.sh

Otherwise, follow the installation documentation here: http://fcp-indi.github.io/docs/user/install.html

Documentation

User documentation can be found here: http://fcp-indi.github.com/docs/user/index.html

Developer documention can ne found here: http://fcp-indi.github.com/docs/developer/index.html

Dicussion Forum

CPAC Discussion forum is located here: http://www.nitrc.org/forum/forum.php?forum_id=3567

Troubleshooting and Help

This is an alpha version of CPAC, which means that it is still under active development. As such, although we have done our best to ensure a stable pipeline, there will likely still be a few bugs that we did not catch. If you find a bug, have a question that is not answered in the User Guide, or would like to suggest a new feature, please create an issue on CPAC github issue page: https://github.com/FCP-INDI/C-PAC/issues?state=open

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