Hu Valerie W, Bi Chongfeng
Department of Biochemistry and Molecular Medicine, The George Washington University School of Medicine and Health Sciences, Washington, DC, United States.
Front Neurol. 2020 Nov 12;11:578972. doi: 10.3389/fneur.2020.578972. eCollection 2020.
Autism spectrum disorder (ASD) describes a collection of neurodevelopmental disorders characterized by core symptoms that include social communication deficits and repetitive, stereotyped behaviors often coupled with restricted interests. Primary challenges to understanding and treating ASD are the genetic and phenotypic heterogeneity of cases that complicates all omics analyses as well as a lack of information on relationships among genes, pathways, and autistic traits. In this study, we re-analyze existing transcriptomic data from simplex families by subtyping individuals with ASD according to multivariate cluster analyses of clinical ADI-R scores that encompass a broad range of behavioral symptoms. We also correlate multiple ASD traits, such as deficits in verbal and non-verbal communication, play and social skills, ritualistic behaviors, and savant skills, with expression profiles using Weighted Gene Correlation Network Analyses (WGCNA). Our results show that subtyping greatly enhances the ability to identify differentially expressed genes involved in specific canonical pathways and biological functions associated with ASD within each phenotypic subgroup. Moreover, using WGCNA, we identify gene modules that correlate significantly with specific ASD traits. Network prediction analyses of the genes in these modules reveal canonical pathways as well as neurological functions and disorders relevant to the pathobiology of ASD. Finally, we compare the WGCNA-derived data on autistic traits in simplex families with analogous data from multiplex families using transcriptomic data from our previous studies. The comparison reveals overlapping trait-associated pathways as well as upstream regulators of the module-associated genes that may serve as useful targets for a precision medicine approach to ASD.
自闭症谱系障碍(ASD)描述了一组神经发育障碍,其特征是核心症状包括社交沟通缺陷以及常伴有兴趣受限的重复、刻板行为。理解和治疗ASD的主要挑战在于病例的遗传和表型异质性,这使所有组学分析变得复杂,同时还缺乏关于基因、通路和自闭症特征之间关系的信息。在本研究中,我们通过根据包含广泛行为症状的临床ADI - R评分进行多变量聚类分析,对患有ASD的个体进行亚型分类,从而重新分析来自单纯家庭的现有转录组数据。我们还使用加权基因共表达网络分析(WGCNA)将多种ASD特征,如言语和非言语沟通缺陷、玩耍和社交技能、仪式行为以及学者技能,与表达谱进行关联。我们的结果表明,亚型分类极大地增强了识别每个表型亚组中与ASD相关的特定经典通路和生物学功能中差异表达基因的能力。此外,使用WGCNA,我们识别出与特定ASD特征显著相关的基因模块。对这些模块中的基因进行网络预测分析,揭示了与ASD病理生物学相关的经典通路以及神经功能和障碍。最后,我们使用我们之前研究的转录组数据,将单纯家庭中来自WGCNA的自闭症特征数据与来自复杂家庭的类似数据进行比较。比较结果揭示了重叠的特征相关通路以及模块相关基因的上游调节因子这些可能作为ASD精准医学方法的有用靶点。