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XCP-D: A Robust Pipeline for the post-processing of fMRI data.

Kahini MehtaTaylor SaloThomas MadisonAzeez AdebimpeDanielle S BassettMax BertoleroMatthew C CieslakSydney CovitzAudrey HoughtonArielle S KellerAudrey C LuoOscar Miranda-DominguezSteve M NelsonGolia ShafieiSheila ShanmuganRussell T ShinoharaValerie J SydnorEric FeczkoDamien A FairTheodore Daniel Satterthwaite
Published in: bioRxiv : the preprint server for biology (2023)
Functional neuroimaging is an essential tool for neuroscience research. Pre-processing pipelines produce standardized, minimally pre-processed data to support a range of potential analyses. However, post-processing is not similarly standardized. While several options for post-processing exist, they tend not to support output from disparate pre-processing pipelines, may have limited documentation, and may not follow BIDS best practices. Here we present XCP-D, which presents a solution to these issues. XCP-D is a collaborative effort between PennLINC at the University of Pennsylvania and the DCAN lab at the University at Minnesota. XCP-D uses an open development model on GitHub and incorporates continuous integration testing; it is distributed as a Docker container or Singularity image. XCP-D generates denoised BOLD images and functional derivatives from resting-state data in either NifTI or CIFTI files, following pre-processing with fMRIPrep, HCP, and ABCD-BIDS pipelines. Even prior to its official release, XCP-D has been downloaded >3,000 times from DockerHub. Together, XCP-D facilitates robust, scalable, and reproducible post-processing of fMRI data.
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