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Published:2025/8/22 23:18:06

脳画像と遺伝子、AIで解明!IT企業も注目👀

超要約: 脳と遺伝子の関係をAIで解析!医療とITの未来を切り開く💖

✨ ギャル的キラキラポイント ✨

● 脳の画像と遺伝子をAIが合体!病気の謎を解き明かすんだって~! ● AIが「なんでこの病気になったか」教えてくれるから、分かりやすい! ● IT企業がこの技術で、新しいサービス作れちゃうかも!

詳細解説いくよー!

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Learning Explainable Imaging-Genetics Associations Related to a Neurological Disorder

Jueqi Wang / Zachary Jacokes / John Darrell Van Horn / Michael C. Schatz / Kevin A. Pelphrey / Archana Venkataraman

While imaging-genetics holds great promise for unraveling the complex interplay between brain structure and genetic variation in neurological disorders, traditional methods are limited to simplistic linear models or to black-box techniques that lack interpretability. In this paper, we present NeuroPathX, an explainable deep learning framework that uses an early fusion strategy powered by cross-attention mechanisms to capture meaningful interactions between structural variations in the brain derived from MRI and established biological pathways derived from genetics data. To enhance interpretability and robustness, we introduce two loss functions over the attention matrix - a sparsity loss that focuses on the most salient interactions and a pathway similarity loss that enforces consistent representations across the cohort. We validate NeuroPathX on both autism spectrum disorder and Alzheimer's disease. Our results demonstrate that NeuroPathX outperforms competing baseline approaches and reveals biologically plausible associations linked to the disorder. These findings underscore the potential of NeuroPathX to advance our understanding of complex brain disorders. Code is available at https://github.com/jueqiw/NeuroPathX .

cs / cs.LG / cs.AI / q-bio.QM