Fast construction of interpretable whole-brain decoders

Cell Rep Methods. 2022 Jun 6;2(6):100227. doi: 10.1016/j.crmeth.2022.100227. eCollection 2022 Jun 20.

Abstract

Researchers often seek to decode mental states from brain activity measured with functional MRI. Rigorous decoding requires the use of formal neural prediction models, which are likely to be the most accurate if they use the whole brain. However, the computational burden and lack of interpretability of off-the-shelf statistical methods can make whole-brain decoding challenging. Here, we propose a method to build whole-brain neural decoders that are both interpretable and computationally efficient. We extend the partial least squares algorithm to build a regularized model with variable selection that offers a unique "fit once, tune later" approach: users need to fit the model only once and can choose the best tuning parameters post hoc. We show in real data that our method scales well with increasing data size and yields interpretable predictors. The algorithm is publicly available in multiple languages in the hope that interpretable whole-brain predictors can be implemented more widely in neuroimaging research.

Keywords: MVPA; big data; brain decoding; fMRI; prediction.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Algorithms
  • Brain Mapping* / methods
  • Brain* / diagnostic imaging
  • Magnetic Resonance Imaging / methods
  • Neuroimaging / methods