基于脑网络的精神病诊断预测子网络的识别:信息论视角

Kaizhong Zheng, Shujian Yu, Badong Chen
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引用次数: 0

摘要

图神经网络(gnn)最近被应用于开发有用的精神疾病诊断工具。然而,由于缺乏可解释性,临床医生很难确定提供生物学和临床相关性的可量化和个性化的生物标志物。本文从信息论的角度介绍了最近提出的基于gnn的精神疾病诊断模型BrainIB、Graph-PRI和CI-GNN。这些模型能够区分精神病患者和健康对照,并识别预测子图,即生物标志物,仅从观察。我们在ABIDE数据库上演示了它们提高的分类精度和可解释性。并对今后的研究提出了三点建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Predictive Subnetwork for Brain Network-Based Psychiatric Diagnosis: An Information-Theoretic Perspective
Graph neural networks (GNNs) have recently been applied to develop useful diagnostic tools for psychiatric disorders. However, due to the lack of interpretability, clinicians are hard to identify quantifiable and personalizable biomarkers which provide biologically and clinically relevance. We introduce three recently proposed GNN-based psychiatric disorders diagnostic models, namely BrainIB, Graph-PRI and CI-GNN, from an information-theoretic perspective. These models are able to discriminate psychiatric patients from healthy controls and identify predictive subgraph, a.k.a. biomarkers, solely from observations. We demonstrate their improved classification accuracy and interpretability on ABIDE database. We also put forward three proposals for future research.
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