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多跳功能连接通过图神经网络改善梭状回面孔激活的个体预测。

Multi-Hops Functional Connectivity Improves Individual Prediction of Fusiform Face Activation via a Graph Neural Network.

作者信息

Wu Dongya, Li Xin, Feng Jun

机构信息

School of Information Science and Technology, Northwest University, Xi'an, China.

School of Mathematics, Northwest University, Xi'an, China.

出版信息

Front Neurosci. 2021 Jan 14;14:596109. doi: 10.3389/fnins.2020.596109. eCollection 2020.

Abstract

Brain connectivity plays an important role in determining the brain region's function. Previous researchers proposed that the brain region's function is characterized by that region's input and output connectivity profiles. Following this proposal, numerous studies have investigated the relationship between connectivity and function. However, this proposal only utilizes direct connectivity profiles and thus is deficient in explaining individual differences in the brain region's function. To overcome this problem, we proposed that a brain region's function is characterized by that region's multi-hops connectivity profile. To test this proposal, we used multi-hops functional connectivity to predict the individual face activation of the right fusiform face area (rFFA) via a multi-layer graph neural network and showed that the prediction performance is essentially improved. Results also indicated that the two-layer graph neural network is the best in characterizing rFFA's face activation and revealed a hierarchical network for the face processing of rFFA.

摘要

脑连接性在决定脑区功能方面起着重要作用。先前的研究人员提出,脑区功能由该区域的输入和输出连接图谱所表征。遵循这一观点,众多研究探讨了连接性与功能之间的关系。然而,这一观点仅利用了直接连接图谱,因此在解释脑区功能的个体差异方面存在不足。为克服这一问题,我们提出脑区功能由该区域的多跳连接图谱所表征。为验证这一观点,我们通过多层图神经网络使用多跳功能连接来预测右侧梭状回面孔区(rFFA)的个体面孔激活情况,并表明预测性能得到了显著提升。结果还表明,两层图神经网络在表征rFFA的面孔激活方面表现最佳,并揭示了rFFA面孔处理的分层网络。

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