Department of Epidemiology and Biostatistics, School of Public Health Imperial College London, London W2 1PG, U.K.
MRC Centre for Environment and Health Imperial College London, London W2 1PG, U.K.
Environ Sci Technol. 2024 Mar 26;58(12):5383-5393. doi: 10.1021/acs.est.3c08739. Epub 2024 Mar 13.
Cardiometabolic health is complex and characterized by an ensemble of correlated and/or co-occurring conditions including obesity, dyslipidemia, hypertension, and diabetes mellitus. It is affected by social, lifestyle, and environmental factors, which in-turn exhibit complex correlation patterns. To account for the complexity of (i) exposure profiles and (ii) health outcomes, we propose to use a multitrait Bayesian variable selection approach and identify a sparse set of exposures jointly explanatory of the complex cardiometabolic health status. Using data from a subset ( = 941 participants) of the nutrition, environment, and cardiovascular health (NESCAV) study, we evaluated the link between measurements of the cumulative exposure to ( = 33) pollutants derived from hair and cardiometabolic health as proxied by up to nine measured traits. Our multitrait analysis showed increased statistical power, compared to single-trait analyses, to detect subtle contributions of exposures to a set of clinical phenotypes, while providing parsimonious results with improved interpretability. We identified six exposures that were jointly explanatory of cardiometabolic health as modeled by six complementary traits, of which, we identified strong associations between hexachlorobenzene and trifluralin exposure and adverse cardiometabolic health, including traits of obesity, dyslipidemia, and hypertension. This supports the use of this type of approach for the joint modeling, in an exposome context, of correlated exposures in relation to complex and multifaceted outcomes.
心脏代谢健康是复杂的,其特征是一系列相关和/或同时发生的疾病,包括肥胖、血脂异常、高血压和糖尿病。它受到社会、生活方式和环境因素的影响,而这些因素又表现出复杂的相关模式。为了说明(i)暴露谱和(ii)健康结果的复杂性,我们建议使用多特质贝叶斯变量选择方法,并确定一组共同解释复杂心脏代谢健康状况的稀疏暴露因素。我们使用营养、环境和心血管健康研究(NESCAV)的一个子集(=941 名参与者)的数据,评估了(=33)种源自头发的污染物的累积暴露测量值与心脏代谢健康之间的关系,心脏代谢健康通过多达九种测量的特征来代理。与单特质分析相比,我们的多特质分析显示出更高的统计能力,以检测暴露对一组临床表型的微妙贡献,同时提供了更简洁的结果,提高了可解释性。我们确定了六种暴露因素,它们共同解释了六种互补特征所代表的心脏代谢健康,其中,我们发现六氯苯和三氟拉嗪暴露与不良心脏代谢健康之间存在强烈关联,包括肥胖、血脂异常和高血压等特征。这支持在暴露组学背景下,使用这种类型的方法联合建模与复杂和多方面的结果相关的相关暴露。