Li Jingcong, Wang Fei, Pan Jiahui, Wen Zhenfu
School of Software, South China Normal University, Guangzhou, China.
Pazhou Lab, Guangzhou, China.
Front Neurosci. 2021 Oct 21;15:729937. doi: 10.3389/fnins.2021.729937. eCollection 2021.
Autism spectrum disorder (ASD) is a specific brain disease that causes communication impairments and restricted interests. Functional connectivity analysis methodology is widely used in neuroscience research and shows much potential in discriminating ASD patients from healthy controls. However, due to heterogeneity of ASD patients, the performance of conventional functional connectivity classification methods is relatively poor. Graph neural network is an effective graph representation method to model structured data like functional connectivity. In this paper, we proposed a functional graph discriminative network (FGDN) for ASD classification. On the basis of pre-built graph templates, the proposed FGDN is able to effectively distinguish ASD patient from health controls. Moreover, we studied the size of training set for effective training, inter-site predictions, and discriminative brain regions. Discriminative brain regions were determined by the proposed model to investigate its applicability and biomarkers for ASD identification. For functional connectivity classification and analysis, FGDN is not only an effective tool for ASD identification but also a potential technique in neuroscience research.
自闭症谱系障碍(ASD)是一种导致沟通障碍和兴趣受限的特定脑部疾病。功能连接分析方法在神经科学研究中被广泛应用,并且在区分ASD患者和健康对照方面显示出很大潜力。然而,由于ASD患者的异质性,传统功能连接分类方法的性能相对较差。图神经网络是一种用于对诸如功能连接等结构化数据进行建模的有效图表示方法。在本文中,我们提出了一种用于ASD分类的功能图判别网络(FGDN)。在所构建的图模板基础上,所提出的FGDN能够有效区分ASD患者和健康对照。此外,我们研究了有效训练的训练集大小、跨站点预测以及判别性脑区。所提出的模型确定了判别性脑区,以研究其在ASD识别中的适用性和生物标志物。对于功能连接分类和分析,FGDN不仅是ASD识别的有效工具,也是神经科学研究中的一项潜在技术。