Pleiotropic heritability quantifies the shared genetic variance of common diseases.

Yujie Zhao, Benjamin Strober, Kangcheng Hou, Gaspard Kerner, John Danesh, Steven Gazal, Wei Cheng, Michael Inouye, Alkes L Price, Xilin Jiang
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Abstract

Common diseases are highly pleiotropic, but the overall contribution of pleiotropy to a target disease's architecture is unknown, as most studies focus on genetic correlations with each auxiliary disease in turn. Here we propose a new method, pleiotropic heritability with bias correction (PHBC), to estimate pleiotropic heritability ( h 2 pleio ), defined as the liability-scale genetic variance of a target disease that is shared with a specific set of auxiliary diseases. We estimate h 2 pleio from GWAS summary statistics by estimating the proportion of variance explained from an estimated genetic correlation matrix and employing a Monte-Carlo bias correction procedure to account for sampling noise in genetic correlation estimates. Simulations showed that PHBC produces approximately unbiased estimates of pleiotropic heritability. The average ratio of pleiotropic heritability vs. total SNP-heritability ( h 2 pleio / h 2 ) across 15 diseases from the UK Biobank (spanning 7 disease categories) was 34% (s.e. 7%). Several diseases were dominated by pleiotropic heritability, including depression (71%) and type 2 diabetes (65%). Pleiotropic heritability was broadly distributed across disease categories, with h 2 pleio / h 2 decreasing only slightly when removing all auxiliary diseases in the target disease category (avg = 31% (s.e. 7%)) and only moderately when further removing one other (most informative) category whose removal had the greatest impact (avg = 20% (s.e. 3%)). Average 2 pleio 2 increased to 44% (s.e. 9%) when adding 16 auxiliary quantitative traits in UK Biobank, and 50% (s.e. 5%) when further adding 30 auxiliary diseases from large GWAS meta-analyses. On average, h 2 pleio / h 2 was 2.4x larger than the proportion of liability-scale total phenotypic variance explained by the same set of auxiliary diseases, implying higher pleiotropy for genetic effects than the effects of non-genetic exposures. In conclusion, we have uncovered pervasive sharing of genetic aetiologies, with roughly half of common disease heritability being pleiotropic with diseases from a broad range of disease categories, which strongly motivates the importance of multi-disease approaches to risk prediction and therapeutic development.

多效遗传力量化常见疾病的共有遗传变异。
常见疾病是高度多效性的,但多效性对靶疾病结构的总体贡献尚不清楚,因为大多数研究都集中在与每种辅助疾病的遗传相关性上。在这里,我们提出了一种新的方法,多效遗传力与偏倚校正(PHBC),以估计多效遗传力(h 2 pleio),定义为与一组特定辅助疾病共享的目标疾病的负性遗传变异。我们通过估计遗传相关矩阵解释的方差比例,并采用蒙特卡罗偏差校正程序来考虑遗传相关估计中的抽样噪声,从GWAS汇总统计中估计出2pleio。模拟结果表明,PHBC对多效遗传力产生了近似无偏的估计。来自英国生物库的15种疾病(涵盖7种疾病类别)的多效性遗传率与总snp遗传率(h 2 pleio / h 2)的平均比率为34%(即7%)。有几种疾病以多效性遗传为主,包括抑郁症(71%)和2型糖尿病(65%)。多效遗传力在疾病类别中广泛分布,当去除目标疾病类别中的所有辅助疾病时,h 2多效/ h 2仅略有下降(平均值= 31%(标准差为7%)),当进一步去除去除影响最大的另一个(信息量最大的)类别时,h 2多效/ h 2仅略有下降(平均值= 20%(标准差为3%))。当在UK Biobank中添加16个辅助数量性状时,平均2 pleio增加到44%(即9%),当进一步添加来自大型GWAS荟萃分析的30个辅助疾病时,平均2 pleio增加到50%(即5%)。平均而言,h 2 pleio / h 2比由同一组辅助疾病解释的负债量表总表型方差的比例大2.4倍,这意味着遗传效应的多效性高于非遗传暴露的效应。总之,我们已经发现了普遍的遗传病因共享,大约一半的常见疾病遗传力与来自广泛疾病类别的疾病具有多效性,这强烈激发了多疾病方法对风险预测和治疗开发的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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