Lang Jinwei, Yang Li-Zhuang, Li Hai
Anhui Province Key Laboratory of Medical Physics and Technology, Institute of Health and Medical Technology, Hefei Institutes of Physical Science, Chinese Academy of Sciences, Hefei, China.
University of Science and Technology of China, Hefei, China.
Front Neurosci. 2023 Dec 21;17:1288882. doi: 10.3389/fnins.2023.1288882. eCollection 2023.
Neuropsychiatric disorder (ND) is often accompanied by abnormal functional connectivity (FC) patterns in specific task contexts. The distinctive task-specific FC patterns can provide valuable features for ND classification models using deep learning. However, most previous studies rely solely on the whole-brain FC matrix without considering the prior knowledge of task-specific FC patterns. Insight by the decoding studies on brain-behavior relationship, we develop TSP-GNN, which extracts task-specific prior (TSP) connectome patterns and employs graph neural network (GNN) for disease classification. TSP-GNN was validated using publicly available datasets. Our results demonstrate that different ND types show distinct task-specific connectivity patterns. Compared with the whole-brain node characteristics, utilizing task-specific nodes enhances the accuracy of ND classification. TSP-GNN comprises the first attempt to incorporate prior task-specific connectome patterns and the power of deep learning. This study elucidates the association between brain dysfunction and specific cognitive processes, offering valuable insights into the cognitive mechanism of neuropsychiatric disease.
神经精神障碍(ND)在特定任务情境中常伴有异常的功能连接(FC)模式。独特的任务特异性FC模式可为使用深度学习的ND分类模型提供有价值的特征。然而,大多数先前的研究仅依赖于全脑FC矩阵,而未考虑任务特异性FC模式的先验知识。通过对脑-行为关系的解码研究获得的见解,我们开发了TSP-GNN,它提取任务特异性先验(TSP)连接组模式,并采用图神经网络(GNN)进行疾病分类。使用公开可用的数据集对TSP-GNN进行了验证。我们的结果表明,不同类型的ND表现出不同的任务特异性连接模式。与全脑节点特征相比,利用任务特异性节点可提高ND分类的准确性。TSP-GNN首次尝试结合先验任务特异性连接组模式和深度学习的力量。这项研究阐明了脑功能障碍与特定认知过程之间的关联,为神经精神疾病的认知机制提供了有价值的见解。