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Brief description of what was accomplished with this project
We have (1) implemented GIFT PCA decomposition in Python, (2) improved how TE-dependence is evaluated, (3) restructured and enhanced automated testing, and (4) improved BIDS Derivatives compatibility of workflow outputs (which will also make the outputs more stable and easier for AFNI to ingest). Additionally, we have starting working on a large refactor of the package that will allow researchers to implement their own denoising pipelines within tedana. These changes will make it easier for researchers to utilize multi-echo fMRI data and to use the tedana package specifically.
Improvements to multi-echo denoising in tedana
Brief description of what was accomplished with this project
We have (1) implemented GIFT PCA decomposition in Python, (2) improved how TE-dependence is evaluated, (3) restructured and enhanced automated testing, and (4) improved BIDS Derivatives compatibility of workflow outputs (which will also make the outputs more stable and easier for AFNI to ingest). Additionally, we have starting working on a large refactor of the package that will allow researchers to implement their own denoising pipelines within tedana. These changes will make it easier for researchers to utilize multi-echo fMRI data and to use the tedana package specifically.
Resources
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