Zhang Yali, Yahia Ashraf, Sandin Sven, Åden Ulrika, Tammimies Kristiina
Center of Neurodevelopmental Disorders (KIND), Centre for Psychiatry Research, Department of Women's and Children's Health, Karolinska Institutet.
Astrid Lindgren Children's Hospital, Karolinska University Hospital, Region Stockholm, Stockholm, Sweden.
medRxiv. 2024 Nov 20:2024.11.20.24317613. doi: 10.1101/2024.11.20.24317613.
Autism Spectrum Disorder (ASD) is a neurodevelopmental condition characterized by diverse presentations and a strong genetic component. Environmental factors, such as prematurity, have also been linked to increased liability for ASD, though the interaction between genetic predisposition and prematurity remains unclear. This study aims to investigate the impact of genetic liability and preterm birth on ASD conditions.
We analyzed phenotype and genetic data from two large ASD cohorts, the Simons Foundation Powering Autism Research for Knowledge (SPARK) and Simons Simplex Collection (SSC), encompassing 78,559 individuals for phenotype analysis, 12,519 individuals with genome sequencing data, and 8,104 individuals with exome sequencing data. Statistical significance of differences in clinical measures were evaluated between individuals with different ASD and preterm status. We assessed the rare variants burden using generalized estimating equations (GEE) models and polygenic load using ASD-associated polygenic risk score (PRS). Furthermore, we developed a machine learning model to predict ASD in preterm children using phenotype and genetic features available at birth.
Individuals with both preterm birth and ASD exhibit more severe phenotypic outcomes despite similar levels of genetic liability for ASD across the term and preterm groups. Notable, preterm ASD individuals showed an elevated rate of de novo variants identified in exome sequencing (GEE model with Poisson family, p-value = 0.005) in comparison to the non-ASD preterm group. Additionally, a GEE model showed that a higher ASD PRS, preterm birth, and male sex were positively associated with a higher predicted probability for ASD, reaching a probability close to 90%. Lastly, we developed a machine learning model using phenotype and genetic features available at birth with limited predictive power (AUROC = 0.65).
Preterm birth may exacerbate the multimorbidity present in ASD, which was not due to the ASD genetic factors. However, increased genetic factors may elevate the likelihood of a preterm child being diagnosed with ASD. Additionally, a polygenic load of ASD-associated variants had an additive role with preterm birth in the predicted probability for ASD, especially for boys. We propose that incorporating genetic assessment into neonatal care could benefit early ASD identification and intervention for preterm infants.
自闭症谱系障碍(ASD)是一种神经发育疾病,其特征表现多样且具有很强的遗传因素。环境因素,如早产,也与患ASD的风险增加有关,尽管遗传易感性与早产之间的相互作用尚不清楚。本研究旨在调查遗传易感性和早产对ASD病情的影响。
我们分析了来自两个大型ASD队列——西蒙斯基金会助力自闭症研究以增进知识(SPARK)和西蒙斯单基因队列(SSC)——的表型和基因数据,其中包括78559名用于表型分析的个体、12519名有基因组测序数据的个体以及8104名有外显子组测序数据的个体。评估了不同ASD和早产状态个体之间临床指标差异的统计学显著性。我们使用广义估计方程(GEE)模型评估罕见变异负担,并使用与ASD相关的多基因风险评分(PRS)评估多基因负荷。此外,我们开发了一种机器学习模型,利用出生时可用的表型和基因特征来预测早产儿童患ASD的风险。
尽管足月组和早产组的ASD遗传易感性水平相似,但早产且患有ASD的个体表现出更严重的表型结果。值得注意的是,与非ASD早产组相比,早产ASD个体在外显子组测序中发现的新生变异率有所升高(泊松家族GEE模型,p值 = 0.005)。此外,一个GEE模型显示,较高的ASD PRS、早产和男性性别与ASD的预测概率较高呈正相关,概率接近90%。最后,我们利用出生时可用的表型和基因特征开发了一个机器学习模型,其预测能力有限(曲线下面积 = 0.65)。
早产可能会加剧ASD中存在的多种疾病,这并非由ASD遗传因素导致。然而增加的遗传因素可能会提高早产儿童被诊断为ASD的可能性。此外,与ASD相关变异的多基因负荷在ASD的预测概率中与早产具有累加作用,尤其是对男孩而言。我们建议将遗传评估纳入新生儿护理中,这可能有助于早产婴儿ASD的早期识别和干预。