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A Bayesian mixed modeling approach for estimating heritability

机译:用于估计遗传力的贝叶斯混合建模方法

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BackgroundA Bayesian mixed model approach using integrated nested Laplace approximations (INLA) allows us to construct flexible models that can account for pedigree structure. Using these models, we estimate genome-wide patterns of DNA methylation heritability ( h 2 ), which are currently not well understood, as well as h 2 of blood lipid measurements. MethodsWe included individuals from the Genetics of Lipid Lowering Drugs and Diet Network (GOLDN) study with Infinium 450?K cytosine-phosphate-guanine (CpG) methylation and blood lipid data pre- and posttreatment with fenofibrate in families with up to three-generation pedigrees. For genome-wide patterns, we constructed 1 model per CpG with methylation as the response variable, with a random effect to model kinship, and age and gender as fixed effects. ResultsIn total, 425,791 CpG sites pre-, but only 199,027 CpG sites posttreatment were found to have nonzero heritability. Across these CpG sites, the distributions of h 2 estimates are similar in pre- and posttreatment ( pre: median?=?0.31, interquartile range [IQR]?=?0.16; post: median?=?0.34, IQR?=?0.20). Blood lipid h 2 estimates were similar pre- and posttreatment with overlapping 95% credibility intervals. Heritability was nonzero for treatment effect, that is, the difference between pre- and posttreatment blood lipids. Estimates for triglycerides h 2 are 0.48 (pre), 0.42 (post), and 0.21 (difference); likewise for high-density lipoprotein cholesterol h 2 the estimates are 0.61, 0.68, and 0.10. ConclusionsWe show that with INLA, a fully Bayesian approach to estimate DNA methylation h 2 is possible on a genome-wide scale. This provides uncertainty assessment of the estimates, and allows us to perform model selection via deviance information criterion (DIC) to identify CpGs with strong evidence for nonzero heritability.
机译:背景技术使用集成嵌套拉普拉斯近似(INLA)的贝叶斯混合模型方法使我们能够构建可解释谱系结构的灵活模型。使用这些模型,我们估计了目前尚不十分了解的全基因组DNA甲基化遗传力模式(h 2 )以及血脂测量的h 2 。方法我们纳入了由Infinium 450?K胞嘧啶-磷酸-鸟嘌呤(CpG)甲基化和非诺贝特治疗前后的血脂降低药物和饮食网络(GOLDN)遗传研究的个体,研究对象多达三代谱系。对于全基因组模式,我们为每个CpG构建了1个模型,其中甲基化为响应变量,随机建模亲缘关系,年龄和性别为固定效应。结果总共发现425,791个CpG位点在治疗前,但仅199,027个CpG位点在治疗后具有非零的遗传力。在这些CpG位点上,治疗前和治疗后h 2 的分布相似(前:中位数== 0.31,四分位间距[IQR]?=?0.16;后:中位数==? 0.34,IQR≥0.20)。血脂h 2 的估计与治疗前后相似,可信度重叠为95%。对于治疗效果的遗传力非零,即治疗前和治疗后血脂之间的差异。甘油三酸酯h 2 的估计值为0.48(前),0.42(后)和0.21(差);同样,对于高密度脂蛋白胆固醇h 2 ,估计值分别为0.61、0.68和0.10。结论我们表明,使用INLA,可以在全基因组范围内使用完全贝叶斯方法估计DNA甲基化h 2 。这提供了估计的不确定性评估,并允许我们通过偏差信息准则(DIC)进行模型选择,以识别具有非零遗传力的有力证据的CpG。

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