Applications of Hypergraph Learning for Brain Disorder Diagnosis with Neuroimaging: A Survey
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Abstract
The human brain, as the most complex organ, comprises billions of neurons forming intricate and dynamic networks. This complexity results in brain disorders exhibiting multifaceted manifestations, both in their pathological mechanisms and clinical symptoms, thereby posing significant challenges for accurate diagnosis and effective treatment. In the light of this, the development of advanced diagnostic techniques and analytical methodologies has become increasingly crucial. While graph learning has promising performance in modeling neuroimaging data, its reliance on pairwise (binary) relationships limits its capacity to capture higher-order interactions among brain regions. Hypergraph learning frameworks address this shortcoming by modeling complex, multi-way relationships, offering a richer and more expressive mathematical foundation for understanding brain network structure and function. This survey provides a comprehensive overview of recent advancements in hypergraph learning for neuroimaging-based brain disorder diagnosis, discussing current methodological challenges and outlining promising directions for future research in this rapidly evolving field.
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