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ASLPREP is a robust and easy-to-use pipeline for preprocessing of diverse ASL data.

Project description

Preprocessing of arterial spin labeling (ASL) involves numerous steps to clean and standardize the data before statistical analysis. Generally, researchers create ad hoc preprocessing workflows for each dataset, building upon a large inventory of available tools. The complexity of these workflows has snowballed with rapid advances in acquisition and processing. ASLPrep is an analysis-agnostic tool that addresses the challenge of robust and reproducible preprocessing for task-based and resting ASL data. ASLPrep automatically adapts a best-in-breed workflow to the idiosyncrasies of virtually any dataset, ensuring high-quality preprocessing without manual intervention. ASLPrep robustly produces high-quality results on diverse ASL data. Additionally, ASLPrep introduces less uncontrolled spatial smoothness than observed with commonly used preprocxessing tools. ASLPrep equips neuroscientists with an easy-to-use and transparent preprocessing workflow, which can help ensure the validity of inference and the interpretability of results.

The workflow is based on Nipype and encompases a large set of tools from well-known neuroimaging packages, including FSL, ANTs, FreeSurfer, AFNI, and Nilearn. This pipeline was designed to provide the best software implementation for each state of preprocessing, and will be updated as newer and better neuroimaging software becomes available.

ASLPrep performs basic preprocessing steps (coregistration, normalization, unwarping,segmentation, skullstripping and computation of cerebral blood flow (CBF)) providing outputs that can be easily submitted to a variety of group level analyses, including task-based or resting-state CBF, graph theory measures, surface or volume-based statistics, etc. ASLPrep allows you to easily do the following:

  • Take ASL data from unprocessed (only reconstructed) to ready for analysis.

  • Compute Cerebral Blood Flow(CBF), denoising and partial volume correction

  • Implement tools from different software packages.

  • Achieve optimal data processing quality by using the best tools available.

  • Generate preprocessing-assessment reports, with which the user can easily identify problems.

  • Receive verbose output concerning the stage of preprocessing for each subject, including meaningful errors.

  • Automate and parallelize processing steps, which provides a significant speed-up from typical linear, manual processing.

[Documentation aslprep.org ]

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