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Learning Human Cognition via fMRI Analysis Using 3D CNN and Graph Neural Network

机译:使用3D CNN和图形神经网络通过fMRI分析学习人的认知

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摘要

Human cognitive control involves how mental resources are allocated when the brain processes various information. The study of such complex brain functionality is essential in understanding different neurological disorders. To investigate cognition control, various cognitive tasks have been designed and functional MRI data have been collected. In this paper, we study uncertainty representation, an important problem in human cognition study, with task-evoked fMRI data. Our goals are to learn how brain region of interests (ROIs) are activated under tasks with different uncertainty levels and how they interact with each other. We propose a novel neural network architecture to achieve the two goals simultaneously. Our architecture uses a 3D convolutional neural network (CNN) to extract a high-level representation for each ROI, and uses a graph neural network module to capture the interactions between ROIs. Empirical evaluations reveal that our method significantly outperforms the existing methods, and the derived brain network is consistent with domain knowledge.
机译:人类的认知控制涉及大脑处理各种信息时如何分配精神资源。这种复杂的大脑功能的研究对于理解不同的神经系统疾病至关重要。为了研究认知控制,已设计了各种认知任务并收集了功能性MRI数据。在本文中,我们使用任务诱发的功能磁共振成像数据研究不确定性表示,这是人类认知研究中的一个重要问题。我们的目标是学习在具有不同不确定性级别的任务下如何激活感兴趣的大脑区域(ROI)以及它们如何相互影响。我们提出了一种新颖的神经网络架构来同时实现两个目标。我们的体系结构使用3D卷积神经网络(CNN)提取每个ROI的高级表示,并使用图形神经网络模块捕获ROI之间的交互。实证评估表明,我们的方法明显优于现有方法,并且派生的大脑网络与领域知识是一致的。

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