Litcius/Paper detail

An Interpretable Brain Graph Contrastive Learning Framework for Brain Disorder Analysis

Xuexiong Luo, Guangwei Dong, Jia Wu, Amin Beheshti, Jian Yang, Shan Xue

202410 citationsDOIOpen Access PDF

Abstract

In this paper, we propose an interpretable brain graph contrastive learning framework, which aims to learn brain graph representations by a unsupervised way for disorder prediction and pathogenic analysis. Our framework consists of two key designs: We first utilize the controllable data augmentation strategy to perturb unimportant structures and attribute features for the generation of brain graphs. Then, considering that the difference of healthy and patient brain graphs is small, we introduce hard negative sample evaluation to weight negative samples of the contrastive loss, which can learn more discriminative brain graph representations. More importantly, our method can observe salient brain regions and connections for pathogenic analysis. We conduct disorder prediction and interpretable analysis experiments on three real-world neuroimaging datasets to demonstrate the effectiveness of our framework.

Topics & Concepts

Discriminative modelSalientNeuroimagingComputer scienceGraphArtificial intelligenceMachine learningPower graph analysisNatural language processingKey (lock)Pattern recognition (psychology)PsychologyTheoretical computer scienceNeuroscienceComputer securityFunctional Brain Connectivity StudiesDementia and Cognitive Impairment ResearchMachine Learning in Healthcare
An Interpretable Brain Graph Contrastive Learning Framework for Brain Disorder Analysis | Litcius