Wang Yu, Fu Yu, Luo Xun
Hunan Provincial Key Laboratory of Intelligent Computing and Language Information Processing, Hunan Normal University, Changsha, China.
College of Information Science and Engineering, Hunan Normal University, Changsha, China.
Front Neurosci. 2022 May 17;16:900330. doi: 10.3389/fnins.2022.900330. eCollection 2022.
Autism spectrum disorder (ASD) is a kind of neurodevelopmental disorder that often occurs in children and has a hidden onset. Patients usually have lagged development of communication ability and social behavior and thus suffer an unhealthy physical and mental state. Evidence has indicated that diseases related to ASD have commonalities in brain imaging characteristics. This study aims to study the pathogenesis of ASD based on brain imaging data to locate the ASD-related brain regions. Specifically, we collected the functional magnetic resonance image data of 479 patients with ASD and 478 normal subjects matched in age and gender and used a machine-learning framework named random support vector machine cluster to extract distinctive brain regions from the preprocessed data. According to the experimental results, compared with other existing approaches, the method used in this study can more accurately distinguish patients from normal individuals based on brain imaging data. At the same time, this study found that the development of ASD was highly correlated with certain brain regions, e.g., lingual gyrus, superior frontal gyrus, medial gyrus, insular lobe, and olfactory cortex. This study explores the effectiveness of a novel machine-learning approach in the study of ASD brain imaging and provides a reference brain area for the medical research and clinical treatment of ASD.
自闭症谱系障碍(ASD)是一种常发生于儿童的神经发育障碍,起病隐匿。患者通常存在沟通能力和社交行为发育滞后的情况,进而导致身心健康状态不佳。有证据表明,与ASD相关的疾病在脑成像特征方面存在共性。本研究旨在基于脑成像数据研究ASD的发病机制,以定位与ASD相关的脑区。具体而言,我们收集了479例ASD患者以及478例年龄和性别匹配的正常受试者的功能磁共振图像数据,并使用一种名为随机支持向量机聚类的机器学习框架从预处理数据中提取有区别的脑区。根据实验结果,与其他现有方法相比,本研究中使用的方法能够基于脑成像数据更准确地区分患者与正常个体。同时,本研究发现ASD的发展与某些脑区高度相关,例如舌回、额上回、内侧回、岛叶和嗅觉皮层。本研究探索了一种新型机器学习方法在ASD脑成像研究中的有效性,并为ASD的医学研究和临床治疗提供了一个参考脑区。