Li Jialong, Zheng Weihao, Fu Xiang, Zhang Yu, Yang Songyu, Wang Ying, Zhang Zhe, Hu Bin, Xu Guojun
Gansu Provincial Key Laboratory of Wearable Computing, School of Information Science and Engineering, Lanzhou University, Lanzhou 730000, China.
Institute of Brain Science, Hangzhou Normal University, Hangzhou 311121, China.
Brain Sci. 2024 Jul 24;14(8):738. doi: 10.3390/brainsci14080738.
Heterogeneity has been one of the main barriers to understanding and treatment of autism spectrum disorder (ASD). Previous studies have identified several subtypes of ASD through unsupervised clustering analysis. However, most of them primarily depicted the pairwise similarity between individuals through second-order relationships, relying solely on patient data for their calculation. This leads to an underestimation of the complexity inherent in inter-individual relationships and the diagnostic information provided by typical development (TD). To address this, we utilized an elastic net model to construct an individual deviation-based hypergraph (ID-Hypergraph) based on functional MRI data. We then conducted a novel community detection clustering algorithm to the ID-Hypergraph, with the aim of identifying subtypes of ASD. By applying this framework to the Autism Brain Imaging Data Exchange repository data (discovery: 147/125, ASD/TD; replication: 134/132, ASD/TD), we identified four reproducible ASD subtypes with roughly similar patterns of ALFF between the discovery and replication datasets. Moreover, these subtypes significantly varied in communication domains. In addition, we achieved over 80% accuracy for the classification between these subtypes. Taken together, our study demonstrated the effectiveness of identifying subtypes of ASD through the ID-hypergraph, highlighting its potential in elucidating the heterogeneity of ASD and diagnosing ASD subtypes.
异质性一直是理解和治疗自闭症谱系障碍(ASD)的主要障碍之一。先前的研究通过无监督聚类分析确定了ASD的几种亚型。然而,其中大多数主要通过二阶关系描述个体之间的成对相似性,计算仅依赖于患者数据。这导致对个体间关系固有的复杂性以及典型发育(TD)提供的诊断信息的低估。为了解决这个问题,我们利用弹性网络模型基于功能磁共振成像数据构建了一个基于个体偏差的超图(ID-超图)。然后,我们对ID-超图进行了一种新颖的社区检测聚类算法,旨在识别ASD的亚型。通过将此框架应用于自闭症脑成像数据交换库数据(发现集:147/125,ASD/TD;复制集:134/132,ASD/TD),我们确定了四种可重复的ASD亚型,发现集和复制集之间的低频振幅模式大致相似。此外,这些亚型在沟通领域有显著差异。此外,我们对这些亚型之间的分类准确率超过了80%。总之,我们的研究证明了通过ID-超图识别ASD亚型的有效性,突出了其在阐明ASD异质性和诊断ASD亚型方面的潜力。