TiBGL: Template-induced Brain Graph Learning for Functional Neuroimaging Analysis
Xiangzhu Meng, Wei Wei, Qiang Liu, Shu Wu, Liang Wang

TL;DR
TiBGL is a novel framework that enhances functional neuroimaging analysis by extracting template brain graphs to improve noise reduction, interpretability, and classification performance in brain disorder diagnosis.
Contribution
The paper introduces TiBGL, a new brain graph learning method that combines template-induced graph extraction with neural networks for better interpretability and accuracy.
Findings
Outperforms nine state-of-the-art methods in brain disorder classification
Effectively removes noise and highlights important connectivity patterns
Provides neuroscience-consistent insights into brain connectivity
Abstract
In recent years, functional magnetic resonance imaging has emerged as a powerful tool for investigating the human brain's functional connectivity networks. Related studies demonstrate that functional connectivity networks in the human brain can help to improve the efficiency of diagnosing neurological disorders. However, there still exist two challenges that limit the progress of functional neuroimaging. Firstly, there exists an abundance of noise and redundant information in functional connectivity data, resulting in poor performance. Secondly, existing brain network models have tended to prioritize either classification performance or the interpretation of neuroscience findings behind the learned models. To deal with these challenges, this paper proposes a novel brain graph learning framework called Template-induced Brain Graph Learning (TiBGL), which has both discriminative and…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Health, Environment, Cognitive Aging · EEG and Brain-Computer Interfaces
