Plasma metabolomics of autism spectrum disorder and influence of shared components in proband families.

Exposome Pub Date : 2021-10-07 eCollection Date: 2021-01-01 DOI:10.1093/exposome/osab004
Ming Kei Chung, Matthew Ryan Smith, Yufei Lin, Douglas I Walker, Dean Jones, Chirag J Patel, Sek Won Kong
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Abstract

Prevalence of autism spectrum disorder (ASD) has been increasing in the United States in the past decades. The exact mechanisms remain enigmatic, and diagnosis of the disease still relies primarily on assessment of behavior. We first used a case-control design (75 idiopathic cases and 29 controls, enrolled at Boston Children's Hospital from 2007-2012) to identify plasma biomarkers of ASD through a metabolome-wide association study approach. Then we leveraged a family-based design (31 families) to investigate the influence of shared genetic and environmental components on the autism-associated features. Using untargeted high-resolution mass spectrometry metabolomics platforms, we detected 19 184 features. Of these, 191 were associated with ASD (false discovery rate < 0.05). We putatively annotated 30 features that had an odds ratio (OR) between <0.01 and 5.84. An identified endogenous metabolite, O-phosphotyrosine, was associated with an extremely low autism odds (OR 0.17; 95% confidence interval 0.06-0.39). We also found that glutathione metabolism was associated with ASD (P = 0.048). Correlations of the significant features between proband and parents were low (median = 0.09). Of the 30 annotated features, the median correlations within families (proband-parents) were -0.15 and 0.24 for the endogenous and exogenous metabolites, respectively. We hypothesize that, without feature identification, family-based correlation analysis of autism-associated features can be an alternative way to assist the prioritization of potentially diagnostic features. A panel of ASD diagnostic metabolic markers with high specificity could be derived upon further studies.

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自闭症谱系障碍的血浆代谢组学及原发性家族中共同成分的影响。
过去几十年来,自闭症谱系障碍(ASD)的发病率在美国不断上升。自闭症的确切机制仍是个谜,诊断该疾病仍主要依靠行为评估。我们首先采用病例对照设计(75 例特发性病例和 29 例对照,2007-2012 年期间在波士顿儿童医院登记),通过全代谢组关联研究方法确定 ASD 的血浆生物标志物。然后,我们利用基于家庭的设计(31 个家庭)来研究共同的遗传和环境因素对自闭症相关特征的影响。利用非靶向高分辨率质谱代谢组学平台,我们发现了 19 184 个特征。其中,191 个特征与 ASD 相关(误发现率小于 0.05)。我们推测注释了 30 个特征,其几率比(OR)在 P = 0.048 之间。)原告和父母之间的重要特征相关性较低(中位数 = 0.09)。在 30 个已注释的特征中,内源性代谢物和外源性代谢物在家系(原告-父母)内的相关性中位数分别为-0.15 和 0.24。我们假设,在不进行特征鉴定的情况下,对自闭症相关特征进行基于家系的相关性分析可以作为一种替代方法,帮助确定潜在诊断特征的优先次序。经过进一步研究,可以得出一组具有高度特异性的 ASD 诊断代谢标记物。
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