4.7 Article

Enhancing task fMRI preprocessing via individualized model -based filtering of intrinsic activity dynamics

期刊

NEUROIMAGE
卷 247, 期 -, 页码 -

出版社

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2021.118836

关键词

Task fMRI; Resting state fMRI; Brain dynamics; Causal modeling; Individual differences; Cognitive control

资金

  1. US National Science Foundation [NSF-DGE-1143954]
  2. National Institute of Drug Abuse [T32 DA007261-29]
  3. US National Insti-tute of Health [R37 MH066078]
  4. Career Award at the Scientific Interface from the Burroughs-Wellcome Fund
  5. AFOSR [15RT0189]
  6. NIMH from US Air Force Office of Scientific Research [MH066078-15S1]
  7. US National Institute of Mental Health
  8. US National Science Foundation
  9. NSF [ECCS 1509342, CMMI 1537015, NCS-FO 1835209]

向作者/读者索取更多资源

This study introduces a method to improve estimation of task-evoked brain activity by filtering out the propagation of previous activity from the BOLD signal using MINDy models. Results demonstrate that this simple operation significantly increases the statistical power and temporal precision of estimated group-level effects, while also enhancing the similarity of neural activation profiles and prediction accuracy of individual differences in behavior.
Brain responses recorded during fMRI are thought to reflect both rapid, stimulus-evoked activity and the propagation of spontaneous activity through brain networks. In the current work, we describe a method to improve the estimation of task-evoked brain activity by first filtering-out the intrinsic propagation of pre-event activity from the BOLD signal. We do so using Mesoscale Individualized NeuroDynamic (MINDy; Singh et al. 2020b) models built from individualized resting-state data to subtract the propagation of spontaneous activity from the task-fMRI signal (MINDy-based Filtering). After filtering, time-series are analyzed using conventional techniques. Results demonstrate that this simple operation significantly improves the statistical power and temporal precision of estimated group-level effects. Moreover, use of MINDy-based filtering increased the similarity of neural activation profiles and prediction accuracy of individual differences in behavior across tasks measuring the same construct (cognitive control). Thus, by subtracting the propagation of previous activity, we obtain better estimates of task-related neural effects.

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