在环境混合物分析中适应多重暴露的检测限:统计方法概述。

IF 5.3 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Myeonggyun Lee, Abhisek Saha, Rajeshwari Sundaram, Paul S Albert, Shanshan Zhao
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引用次数: 0

摘要

背景:确定环境混合物对人体健康的影响是一个重要课题。然而,当暴露测量值低于检测限(LOD)时,此类研究就会面临挑战。虽然已经使用了各种方法来适应 LOD 的单次暴露,但这些方法对混合物分析的影响尚未得到深入研究。我们的研究旨在了解五种常用的 LOD 迁移方法对多种 LOD 暴露的混合物分析结果的影响,包括省略任何低于 LOD 暴露的受试者(完整病例分析);根据 LOD/ 2 进行单一归因,以及根据删减加速失效时间(AFT)模型的估计值进行单一归因;以及根据 LOD 进行或不进行截断的多重归因(MI):在对高维、高度相关的暴露和连续的健康结果进行的大量模拟研究中,我们检验了每种 LOD 方法在三种混合分析方法中的表现:弹性净回归、加权量子和回归(WQS)和贝叶斯核机器回归(BKMR)。我们进一步分析了美国国家健康与营养调查(NHANES)中关于持久性有机污染物(POPs)如何影响白细胞端粒长度(LTL)的数据:结果:完整的病例分析效率很低,可能会导致某些混合方法出现严重偏差。在不同的混合方法中,通过 LOD/ 2 进行的推算显示出不稳定的性能。传统的 MI 与持续的轻度偏差有关,使用截断分布进行归因可以减少这种偏差。通过 AFT 模型估计删减值对结果的影响很小。在 NHANES 分析中,LOD/2、截断 MI 和删减 AFT 模型的估算结果类似,持久性有机污染物对低密度脂蛋白的总体影响为正,而多氯联苯 126、多氯联苯 169 和呋喃 2,3,4,7,8-pncdf 是最重要的暴露:我们的研究倾向于使用截断的 MI 和删减的 AFT 模型,以适应低于 LOD 的值,从而保证下游混合物分析的稳定性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accommodating detection limits of multiple exposures in environmental mixture analyses: an overview of statistical approaches.

Background: Identifying the impact of environmental mixtures on human health is an important topic. However, such studies face challenges when exposure measurements lie below limit of detection (LOD). While various approaches for accommodating a single exposure subject to LOD have been used, their impact on mixture analysis has not been thoroughly investigated. Our study aims to understand the impact of five popular LOD accommodation approaches on mixture analysis results with multiple exposures subject to LOD, including omitting subjects with any exposures below LOD (complete case analysis); single imputations by LOD/ 2 , and by estimates from a censored accelerated failure time (AFT) model; and multiple imputation (MI) with or without truncation based on LOD.

Methods: In extensive simulation studies with high-dimensional and highly correlated exposures and a continuous health outcome, we examined the performance of each LOD approach on three mixture analysis methods: elastic net regression, weighted quantile sum regression (WQS) and Bayesian kernel machine regression (BKMR). We further analyzed data from the National Health and Nutrition Examination Survey (NHANES) on how persistent organic pollutants (POPs) influenced leukocyte telomere length (LTL).

Results: Complete case analysis was inefficient and could result in severe bias for some mixture methods. Imputation by LOD/ 2 showed unstable performance across mixture methods. Conventional MI was associated with consistent mild biases, which can be reduced by using a truncated distribution for imputation. Estimating censored values by AFT models had a minimal impact on the results. In the NHANES analysis, imputation by LOD/ 2 , truncated MI and censored AFT models performed similarly, with a positive overall effect of POPs on LTL while PCB126, PCB169 and furan 2,3,4,7,8-pncdf being the most important exposures.

Conclusions: Our study favored using truncated MI and censored AFT models to accommodate values below LOD for the stability of downstream mixture analysis.

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来源期刊
Environmental Health
Environmental Health 环境科学-公共卫生、环境卫生与职业卫生
CiteScore
10.10
自引率
1.70%
发文量
115
审稿时长
3.0 months
期刊介绍: Environmental Health publishes manuscripts on all aspects of environmental and occupational medicine and related studies in toxicology and epidemiology. Environmental Health is aimed at scientists and practitioners in all areas of environmental science where human health and well-being are involved, either directly or indirectly. Environmental Health is a public health journal serving the public health community and scientists working on matters of public health interest and importance pertaining to the environment.
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