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首页> 外文期刊>PLoS Medicine >Associations of genetics, behaviors, and life course circumstances with a novel aging and healthspan measure: Evidence from the Health and Retirement Study
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Associations of genetics, behaviors, and life course circumstances with a novel aging and healthspan measure: Evidence from the Health and Retirement Study

机译:遗传学,行为和生活过程环境与新型衰老和健康跨度测量方法的关联:来自健康和退休研究的证据

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Background An individual’s rate of aging directly influences his/her susceptibility to morbidity and mortality. Thus, quantifying aging and disentangling how various factors coalesce to produce between-person differences in the rate of aging, have important implications for potential interventions. We recently developed and validated a novel multi-system-based aging measure, Phenotypic Age (PhenoAge), which has been shown to capture mortality and morbidity risk in the full US population and diverse subpopulations. The aim of this study was to evaluate associations between PhenoAge and a comprehensive set of factors, including genetic scores, childhood and adulthood circumstances, and health behaviors, to determine the relative contributions of these factors to variance in this aging measure. Methods and findings Based on data from 2,339 adults (aged 51+ years, mean age 69.4 years, 56% female, and 93.9% non-Hispanic white) from the US Health and Retirement Study, we calculated PhenoAge and evaluated the multivariable associations for a comprehensive set of factors using 2 innovative approaches—Shapley value decomposition (the Shapley approach hereafter) and hierarchical clustering. The Shapley approach revealed that together all 11 study domains (4 childhood and adulthood circumstances domains, 5 polygenic score [PGS] domains, and 1 behavior domain, and 1 demographic domain) accounted for 29.2% (bootstrap standard error = 0.003) of variance in PhenoAge after adjustment for chronological age. Behaviors exhibited the greatest contribution to PhenoAge (9.2%), closely followed by adulthood adversity, which was suggested to contribute 9.0% of the variance in PhenoAge. Collectively, the PGSs contributed 3.8% of the variance in PhenoAge (after accounting for chronological age). Next, using hierarchical clustering, we identified 6 distinct subpopulations based on the 4 childhood and adulthood circumstances domains. Two of these subpopulations stood out as disadvantaged, exhibiting significantly higher PhenoAges on average. Finally, we observed a significant gene-by-environment interaction between a previously validated PGS for coronary artery disease and the seemingly most disadvantaged subpopulation, suggesting a multiplicative effect of adverse life course circumstances coupled with genetic risk on phenotypic aging. The main limitations of this study were the retrospective nature of self-reported circumstances, leading to possible recall biases, and the unrepresentative racial/ethnic makeup of the population. Conclusions In a sample of US older adults, genetic, behavioral, and socioenvironmental circumstances during childhood and adulthood account for about 30% of differences in phenotypic aging. Our results also suggest that the detrimental effects of disadvantaged life course circumstances for health and aging may be further exacerbated among persons with genetic predisposition to coronary artery disease. Finally, our finding that behaviors had the largest contribution to PhenoAge highlights a potential policy target. Nevertheless, further validation of these findings and identification of causal links are greatly needed.
机译:背景个体的衰老率直接影响其对发病率和死亡率的敏感性。因此,量化衰老并弄清各种因素如何结合以产生人与人之间的衰老率差异,对潜在的干预措施具有重要意义。我们最近开发并验证了一种新颖的基于多系统的衰老测量方法,即表型年龄(PhenoAge),该方法已被证明能够捕获整个美国人口和不同亚人群的死亡和发病风险。这项研究的目的是评估PhenoAge与一系列综合因素之间的关联,包括遗传评分,童年和成年状况以及健康行为,以确定这些因素对这一衰老指标的相对贡献。方法和发现基于美国健康与退休研究的2339名成年人(年龄在51岁以上,平均年龄69.4岁,女性56%,非西班牙裔白人93.9%)的数据,我们计算了PhenoAge并评估了多变量关联使用2种创新方法(萨普利值分解(以下称为Shapley方法)和层次聚类)的综合因素集。 Shapley方法显示,所有11个研究领域(4个童年和成年情况领域,5个多基因得分[PGS]域,1个行为领域和1个人口统计学领域)加起来占29.2%(自举标准误= 0.003)。调整年龄后的PhenoAge。行为对PhenoAge的贡献最大(9.2%),紧随其后的是成年逆境,这表明PhenoAge的差异贡献了9.0%。从总体上看,PGS贡献了PhenoAge的3.8%差异(考虑了年代年龄)。接下来,使用层次聚类,我们根据4个童年和成年情况域确定了6个不同的亚群。这些亚群中有两个表现为弱势群体,平均表现出明显更高的PhenoAges。最后,我们观察到先前经过验证的用于冠心病的PGS与看似最弱势的亚群之间存在显着的基因-环境相互作用,这表明不良的生活过程环境与遗传风险对表型衰老的相乘作用。这项研究的主要局限性是自我报告情况的回顾性,可能导致召回偏见,以及种族/族裔的代表性不足。结论在美国老年人的样本中,儿童和成年时期的遗传,行为和社会环境情况占表型衰老差异的约30%。我们的研究结果还表明,在具有遗传易感性冠心病的人群中,不利的生命过程环境对健康和衰老的不利影响可能会进一步加剧。最后,我们的发现表明行为对PhenoAge的贡献最大,这突出了潜在的政策目标。尽管如此,仍然非常需要对这些发现进行进一步的验证并确定因果关系。

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