McConnell Brain Imaging Centre, Montreal Neurological Institute and Hospital, McGill University, Montreal, QC, Canada.
Department of Data Science, Inha University, Incheon, South Korea.
Nat Commun. 2021 Apr 13;12(1):2225. doi: 10.1038/s41467-021-21732-0.
The pathophysiology of autism has been suggested to involve a combination of both macroscale connectome miswiring and microcircuit anomalies. Here, we combine connectome-wide manifold learning with biophysical simulation models to understand associations between global network perturbations and microcircuit dysfunctions in autism. We studied neuroimaging and phenotypic data in 47 individuals with autism and 37 typically developing controls obtained from the Autism Brain Imaging Data Exchange initiative. Our analysis establishes significant differences in structural connectome organization in individuals with autism relative to controls, with strong between-group effects in low-level somatosensory regions and moderate effects in high-level association cortices. Computational models reveal that the degree of macroscale anomalies is related to atypical increases of recurrent excitation/inhibition, as well as subcortical inputs into cortical microcircuits, especially in sensory and motor areas. Transcriptomic association analysis based on postmortem datasets identifies genes expressed in cortical and thalamic areas from childhood to young adulthood. Finally, supervised machine learning finds that the macroscale perturbations are associated with symptom severity scores on the Autism Diagnostic Observation Schedule. Together, our analyses suggest that atypical subcortico-cortical interactions are associated with both microcircuit and macroscale connectome differences in autism.
自闭症的病理生理学被认为涉及宏观连接组的布线错误和微电路异常的组合。在这里,我们结合连接组全尺度流形学习和生物物理模拟模型,以了解自闭症中全局网络扰动与微电路功能障碍之间的关联。我们研究了来自自闭症脑成像数据交换倡议的 47 名自闭症个体和 37 名典型发育对照者的神经影像学和表型数据。我们的分析确定了自闭症个体相对于对照组的结构连接组组织的显著差异,在低级感觉区域存在强烈的组间效应,在高级联合皮质中存在中度效应。计算模型表明,宏观异常的程度与异常的局部兴奋/抑制增加以及皮质下输入到皮质微电路有关,特别是在感觉和运动区域。基于尸检数据集的转录组关联分析确定了从儿童期到青年期在皮质和丘脑区域表达的基因。最后,监督机器学习发现宏观扰动与自闭症诊断观察量表上的症状严重程度评分相关。总之,我们的分析表明,异常的皮质下-皮质相互作用与自闭症中的微电路和宏观连接组差异有关。