使用可解释图学习进行分层大脑嵌入。

Haoteng Tang, Lei Guo, Xiyao Fu, Benjamin Qu, Paul M Thompson, Heng Huang, Liang Zhan
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摘要

为了更好地理解人类行为,以及识别和描述神经和精神疾病中的分布式大脑异常,神经科学领域对大脑网络进行了广泛的研究。目前已经提出了几种用于脑网络分析的深度图学习模型,但大多数现有模型都缺乏可解释性,因此很难从结果中获得启发式的生物学见解。在本文中,我们提出了一种新的可解释图学习模型,命名为分层大脑嵌入(HBE),根据网络群落结构提取大脑网络表征,产生可解释的分层模式。我们将新方法应用于预测攻击性、规则破坏和其他标准化行为评分,这些评分来自于人类连接组计划扫描的 1000 名年轻健康受试者的功能性脑网络。我们的研究结果表明,所提出的 HBE 在预测行为指标方面优于几种最先进的图学习方法,并展示了与临床症状相关的类似分层脑网络模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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HIERARCHICAL BRAIN EMBEDDING USING EXPLAINABLE GRAPH LEARNING.

Brain networks have been extensively studied in neuroscience, to better understand human behavior, and to identify and characterize distributed brain abnormalities in neurological and psychiatric conditions. Several deep graph learning models have been proposed for brain network analysis, yet most current models lack interpretability, which makes it hard to gain any heuristic biological insights into the results. In this paper, we propose a new explainable graph learning model, named hierarchical brain embedding (HBE), to extract brain network representations based on the network community structure, yielding interpretable hierarchical patterns. We apply our new method to predict aggressivity, rule-breaking, and other standardized behavioral scores from functional brain networks derived using ICA from 1,000 young healthy subjects scanned by the Human Connectome Project. Our results show that the proposed HBE outperforms several state-of-the-art graph learning methods in predicting behavioral measures, and demonstrates similar hierarchical brain network patterns associated with clinical symptoms.

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