Linking epigenetic marks to clinical outcomes improves insight into molecular processes, disease prediction, and therapeutic target identification. Here, a statistical approach is presented to infer the epigenetic architecture of complex disease, determine the variation captured by epigenetic effects, and estimate phenotype-epigenetic probe associations jointly. Implicitly adjusting for probe correlations, data structure (cell-count or relatedness), and single-nucleotide polymorphism (SNP) marker effects, improves association estimates and in 9,448 individuals, 75.7% (95% CI 71.70-79.3) of body mass index (BMI) variation and 45.6% (95% CI 37.3-51.9) of cigarette consumption variation was captured by whole blood methylation array data. Pathway-linked probes of blood cholesterol, lipid transport and sterol metabolism for BMI, and xenobiotic stimuli response for smoking, showed >1.5 times larger associations with >95% posterior inclusion probability. Prediction accuracy improved by 28.7% for BMI and 10.2% for smoking over a LASSO model, with age-, and tissue-specificity, implying associations are a phenotypic consequence rather than causal.

译文

:将表观遗传标记与临床结果联系起来,可以改善对分子过程,疾病预测和治疗靶标识别的了解。在这里,提出了一种统计方法来推断复杂疾病的表观遗传结构,确定由表观遗传效应捕获的变异,并共同估计表型-表观遗传探针的关联。隐式调整探针的相关性,数据结构(细胞计数或相关性)和单核苷酸多态性(SNP)标记效应,可改善关联估计,在9,448位个体中,体重指数为75.7%(95%CI 71.70-79.3)( BMI)变异和45.6%(95%CI 37.3-51.9)的卷烟消费差异通过全血甲基化阵列数据捕获。血液胆固醇,脂质转运和固醇代谢,BMI以及吸烟的异种生物刺激反应的途径相关探针显示,关联性大于1.5倍,后入容率大于95%。与年龄和组织特异性相比,在LASSO模型中,BMI的预测准确性提高了28.7%,吸烟的预测准确性提高了10.2%,这意味着关联是表型的结果而不是因果关系。

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