Multimodal Brain Connectomics-Based Prediction of Parkinson’s Disease Using Graph Attention Networks
Frontiers in Neuroscience2022Vol. 15, pp. 741489–741489
Citations Over TimeTop 12% of 2022 papers
Apoorva Safai, Nirvi Vakharia, Shweta Prasad, Jitender Saini, Apurva Shah, Abhishek Lenka, Pramod Kumar Pal, Madhura Ingalhalikar
Abstract
Multimodal brain connectomic markers and GAT architecture can facilitate robust prediction of PD pathology and provide an attention mechanism-based interpretability framework that can highlight the pathology-specific relation between brain regions.
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