4.7 Article

Functional annotation of human cognitive states using deep graph convolution

Journal

NEUROIMAGE
Volume 231, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2021.117847

Keywords

fMRI; Brain decoding; Brain dynamics; Cognitive states; Graph convolutional network; Deep learning

Funding

  1. Courtois foundation through the Courtois NeuroMod Project
  2. IVADO Postdoctoral Scholarships Program

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This study introduces a multidomain brain decoder using deep learning to understand the relationship between brain activity and cognitive functions. The model shows high decoding accuracy across multiple cognitive tasks and various cognitive domains, indicating potential applications in neurological and psychiatric disorders.
A key goal in neuroscience is to understand brain mechanisms of cognitive functions. An emerging approach is brain decoding , which consists of inferring a set of experimental conditions performed by a participant, using pattern classification of brain activity. Few works so far have attempted to train a brain decoding model that would generalize across many different cognitive tasks drawn from multiple cognitive domains. To tackle this problem, we proposed a multidomain brain decoder that automatically learns the spatiotemporal dynamics of brain response within a short time window using a deep learning approach. We evaluated the decoding model on a large population of 1200 participants, under 21 different experimental conditions spanning six different cognitive domains, acquired from the Human Connectome Project task-fMRI database. Using a 10s window of fMRI response, the 21 cognitive states were identified with a test accuracy of 90% (chance level 4.8%). Performance remained good when using a 6s window (82%). It was even feasible to decode cognitive states from a single fMRI volume (720ms), with the performance following the shape of the hemodynamic response. Moreover, a saliency map analysis demonstrated that the high decoding performance was driven by the response of biologically meaningful brain regions. Together, we provide an automated tool to annotate human brain activity with fine temporal resolution and fine cognitive granularity. Our model shows potential applications as a reference model for domain adaptation, possibly making contributions in a variety of domains, including neurological and psychiatric disorders.

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