4.5 Article

Decoding Task-Based fMRI Data with Graph Neural Networks, Considering Individual Differences

期刊

BRAIN SCIENCES
卷 12, 期 8, 页码 -

出版社

MDPI
DOI: 10.3390/brainsci12081094

关键词

task fMRI; brain decoding; classification; graph convolutional network; human connectome project

资金

  1. AFOSR
  2. Brain and Behavior Foundation
  3. NIH

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This study introduces a method that uses a graph convolutional network (GCN) framework to classify task fMRI data, and compares the impact of different node embedding algorithms on the model's performance. The empirical results show that this method performs well in predicting individual differences, and there are significant differences in gender in classification predictions.
Task fMRI provides an opportunity to analyze the working mechanisms of the human brain during specific experimental paradigms. Deep learning models have increasingly been applied for decoding and encoding purposes study to representations in task fMRI data. More recently, graph neural networks, or neural networks models designed to leverage the properties of graph representations, have recently shown promise in task fMRI decoding studies. Here, we propose an end-to-end graph convolutional network (GCN) framework with three convolutional layers to classify task fMRI data from the Human Connectome Project dataset. We compared the predictive performance of our GCN model across four of the most widely used node embedding algorithms-NetMF, RandNE, Node2Vec, and Walklets-to automatically extract the structural properties of the nodes in the functional graph. The empirical results indicated that our GCN framework accurately predicted individual differences (0.978 and 0.976) with the NetMF and RandNE embedding methods, respectively. Furthermore, to assess the effects of individual differences, we tested the classification performance of the model on sub-datasets divided according to gender and fluid intelligence. Experimental results indicated significant differences in the classification predictions of gender, but not high/low fluid intelligence fMRI data. Our experiments yielded promising results and demonstrated the superior ability of our GCN in modeling task fMRI data.

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