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鉴定和分析与遗传预测表型不符的个体。

Identification and analysis of individuals who deviate from their genetically-predicted phenotype.

机构信息

Genetics of Complex Traits, College of Medicine and Health, University of Exeter, Exeter, Devon, United Kingdom.

Institute for Molecular Bioscience, The University of Queensland, Brisbane, Australia.

出版信息

PLoS Genet. 2023 Sep 21;19(9):e1010934. doi: 10.1371/journal.pgen.1010934. eCollection 2023 Sep.

Abstract

Findings from genome-wide association studies have facilitated the generation of genetic predictors for many common human phenotypes. Stratifying individuals misaligned to a genetic predictor based on common variants may be important for follow-up studies that aim to identify alternative causal factors. Using genome-wide imputed genetic data, we aimed to classify 158,951 unrelated individuals from the UK Biobank as either concordant or deviating from two well-measured phenotypes. We first applied our methods to standing height: our primary analysis classified 244 individuals (0.15%) as misaligned to their genetically predicted height. We show that these individuals are enriched for self-reporting being shorter or taller than average at age 10, diagnosed congenital malformations, and rare loss-of-function variants in genes previously catalogued as causal for growth disorders. Secondly, we apply our methods to LDL cholesterol (LDL-C). We classified 156 (0.12%) individuals as misaligned to their genetically predicted LDL-C and show that these individuals were enriched for both clinically actionable cardiovascular risk factors and rare genetic variants in genes previously shown to be involved in metabolic processes. Individuals whose LDL-C was higher than expected based on the genetic predictor were also at higher risk of developing coronary artery disease and type-two diabetes, even after adjustment for measured LDL-C, BMI and age, suggesting upward deviation from genetically predicted LDL-C is indicative of generally poor health. Our results remained broadly consistent when performing sensitivity analysis based on a variety of parametric and non-parametric methods to define individuals deviating from polygenic expectation. Our analyses demonstrate the potential importance of quantitatively identifying individuals for further follow-up based on deviation from genetic predictions.

摘要

全基因组关联研究的结果促进了许多常见人类表型的遗传预测因子的产生。根据常见变异对与遗传预测因子不一致的个体进行分层,对于旨在识别替代因果因素的后续研究可能很重要。我们使用全基因组推断的遗传数据,旨在将来自英国生物库的 158951 名无亲缘关系的个体分为与两种测量良好的表型一致或不一致的个体。我们首先将我们的方法应用于站立身高:我们的主要分析将 244 个人(0.15%)归类为与遗传预测身高不一致。我们表明,这些个体在自我报告的身高在 10 岁时比平均身高矮或高、诊断出先天性畸形以及先前归类为生长障碍因果的基因中罕见的功能丧失变异方面更为丰富。其次,我们将我们的方法应用于 LDL 胆固醇(LDL-C)。我们将 156 个人(0.12%)归类为与遗传预测的 LDL-C 不一致,并且表明这些个体在临床可操作的心血管危险因素和先前显示与代谢过程相关的基因中的罕见遗传变异方面更为丰富。根据遗传预测,LDL-C 高于预期的个体患冠状动脉疾病和 2 型糖尿病的风险也更高,即使在调整了测量的 LDL-C、BMI 和年龄后也是如此,这表明 LDL-C 从遗传预测的向上偏差表明总体健康状况不佳。当基于各种参数和非参数方法来定义与多基因预期偏差的个体进行敏感性分析时,我们的结果仍然基本一致。我们的分析表明,根据遗传预测的偏差定量识别个体进行进一步随访的潜在重要性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/48a9/10564121/c984d26598ae/pgen.1010934.g001.jpg

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