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Flexible selection of confounds in addition to AROMA Components #104

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LuRoe7 opened this issue Feb 28, 2025 · 1 comment
Open

Flexible selection of confounds in addition to AROMA Components #104

LuRoe7 opened this issue Feb 28, 2025 · 1 comment
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enhancement New feature or request

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@LuRoe7
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LuRoe7 commented Feb 28, 2025

What would you like to see added in fMRIPost-AROMA?

How does fmripost-aroma deal with white matter signal, CSF signal and global signal?

I was wondering if it's planned to include an option to flexibly select other confounds to regress from the BOLD time series in addition to the AROMA noise components?

For instance, choosing between the following different strategies would be great:

  1. white matter signal, csf signal + AROMA ICs
  2. white matter signal, csf signal, global signal + AROMA ICs
  3. white matter + derivatives, csf + derivatives, global signal + derivatives + AROMA ICs
  4. ...

My suggestion arises from Parkes et al. (2018), Neuroimage (https://doi.org/10.1016/j.neuroimage.2017.12.073) who compared various denoising strategies including those specified above...

Do you have any interest in helping implement the feature?

No

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@LuRoe7 LuRoe7 added the enhancement New feature or request label Feb 28, 2025
@tsalo
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tsalo commented Feb 28, 2025

I would recommend combining your AROMA regressors with other confounds in another tool, like Nilearn or XCP-D (which is actually set up to ingress fMRIPrep + fMRIPost-AROMA derivatives).

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