fphsFischmeister / olfactoryRSN

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

olfactoryRSN

README for the olfactory resting-state network pipeline

This document details how the pipeline can be applied to data from the Human Connectome Project (HCP) to generate adjacency matrices for network analysis.

DATA PREPARATION: data must be downloaded from HCP (https://www.humanconnectome.org/) via the Amazon Web Services (AWS) S3 application. Instructions for using S3 to access HCP data can be found here: https://wiki.humanconnectome.org/display/PublicData/How+To+Connect+to+Connectome+Data+via+AWS. After setting up AWS S3, the main processing script HCP_automated.sh should be able to download all necessary files for processing.

PIPELINE ORGANIZATION: Each subject is processed individually using HCP_automated.sh, which carries out all steps neccesary to generate functional connectivity adjacency matrices. Steps include downloading data from HCP, removing low SNR voxels, extracting ROI level timeseries, mean-centering and whitening timeseries, concatenating phase encodings, bandpass filtering, motion correction (http://rfmri.org/DPARSF), scrubbing spikes, and correlation of pairwise timeseries to form adjacency matrices. Subjects are processed serially in commandfile.sh, which can be altered to include the subjects of interest.

OUTPUT: scripts output a .csv containing timeseries for the atlas specified regions of interest (ROIs) and an adjacency matrix corresponding to the pearsons correlation coefficient between all pairwise combinations of timeseries.

alt text

About

License:GNU General Public License v3.0


Languages

Language:C 39.3%Language:C++ 34.3%Language:Shell 26.4%