STNAGNN: Spatiotemporal Node Attention Graph Neural Network for Task-based fMRI Analysis
Task-based fMRI uses actions or stimuli to trigger task-specific brain responses and measures them using BOLD contrast. Despite the significant task-induced spatiotemporal brain activation fluctuations, most studies on task-based fMRI ignore the task context information aligned with fMRI and conside...
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Zusammenfassung: | Task-based fMRI uses actions or stimuli to trigger task-specific brain
responses and measures them using BOLD contrast. Despite the significant
task-induced spatiotemporal brain activation fluctuations, most studies on
task-based fMRI ignore the task context information aligned with fMRI and
consider task-based fMRI a coherent sequence. In this paper, we show that using
the task structures as data-driven guidance is effective for spatiotemporal
analysis. We propose STNAGNN, a GNN-based spatiotemporal architecture, and
validate its performance in an autism classification task. The trained model is
also interpreted for identifying autism-related spatiotemporal brain
biomarkers. |
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DOI: | 10.48550/arxiv.2406.12065 |