University of Exeter Medical School, University of Exeter, RILD Building, Level 4, Barrack Rd, Exeter, EX2 5DW, UK.
Department of Public Health, Aarhus University, Aarhus, Denmark.
Genome Med. 2018 Mar 28;10(1):19. doi: 10.1186/s13073-018-0527-4.
Autism spectrum disorder (ASD) is a severe neurodevelopmental disorder characterized by deficits in social communication and restricted, repetitive behaviors, interests, or activities. The etiology of ASD involves both inherited and environmental risk factors, with epigenetic processes hypothesized as one mechanism by which both genetic and non-genetic variation influence gene regulation and pathogenesis. The aim of this study was to identify DNA methylation biomarkers of ASD detectable at birth.
We quantified neonatal methylomic variation in 1263 infants-of whom ~ 50% went on to subsequently develop ASD-using DNA isolated from archived blood spots taken shortly after birth. We used matched genotype data from the same individuals to examine the molecular consequences of ASD-associated genetic risk variants, identifying methylomic variation associated with elevated polygenic burden for ASD. In addition, we performed DNA methylation quantitative trait loci (mQTL) mapping to prioritize target genes from ASD GWAS findings.
We identified robust epigenetic signatures of gestational age and prenatal tobacco exposure, confirming the utility of DNA methylation data generated from neonatal blood spots. Although we did not identify specific loci showing robust differences in neonatal DNA methylation associated with later ASD, there was a significant association between increased polygenic burden for autism and methylomic variation at specific loci. Each unit of elevated ASD polygenic risk score was associated with a mean increase in DNA methylation of - 0.14% at two CpG sites located proximal to a robust GWAS signal for ASD on chromosome 8.
This study is the largest analysis of DNA methylation in ASD undertaken and the first to integrate genetic and epigenetic variation at birth. We demonstrate the utility of using a polygenic risk score to identify molecular variation associated with disease, and of using mQTL to refine the functional and regulatory variation associated with ASD risk variants.
自闭症谱系障碍(ASD)是一种严重的神经发育障碍,其特征是社交沟通障碍和受限、重复的行为、兴趣或活动。ASD 的病因涉及遗传和环境风险因素,表观遗传过程被假设为遗传和非遗传变异影响基因调控和发病机制的一种机制。本研究旨在确定可在出生时检测到的 ASD 的 DNA 甲基化生物标志物。
我们使用从出生后不久采集的存档血斑中分离的 DNA,对 1263 名婴儿进行了新生儿甲基组学变异的定量分析 - 其中约 50%随后发展为 ASD。我们使用来自同一个体的匹配基因型数据来研究与 ASD 相关遗传风险变异相关的分子后果,确定与 ASD 多基因负担升高相关的甲基组学变异。此外,我们进行了 DNA 甲基化定量性状基因座(mQTL)作图,以优先考虑来自 ASD GWAS 发现的靶基因。
我们确定了与胎龄和产前烟草暴露相关的稳健的表观遗传特征,证实了从新生儿血斑中生成的 DNA 甲基化数据的实用性。尽管我们没有发现与后来的 ASD 相关的新生儿 DNA 甲基化中具有稳健差异的特定部位,但自闭症的多基因负担增加与特定部位的甲基组学变异之间存在显著关联。自闭症多基因风险评分每升高一个单位,与位于染色体 8 上 ASD 强 GWAS 信号附近的两个 CpG 位点的 DNA 甲基化平均增加 - 0.14%相关。
这是迄今为止对 ASD 进行的最大规模的 DNA 甲基化分析,也是首次在出生时整合遗传和表观遗传变异。我们证明了使用多基因风险评分来识别与疾病相关的分子变异以及使用 mQTL 来细化与 ASD 风险变异相关的功能和调节变异的实用性。