广义泛函线性模型:高维相关混合暴露的有效建模。

IF 4.1
Bing Song Zhang, Hai Bin Yu, Xin Peng, Hai Yi Yan, Si Ran Li, Shutong Luo, Hui Zi WeiRen, Zhu Jiang Zhou, Ya Lin Kuang, Yi Huan Zheng, Chu Lan Ou, Lin Hua Liu, Yuehua Hu, Jin Dong Ni
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引用次数: 0

摘要

目的:人类暴露于环境化学物质和其他可能影响其健康的因素的复杂混合物中。对这些混合暴露的分析为环境流行病学和风险评估提出了几个关键挑战,包括高维度、相关暴露和微妙的个体影响。方法:提出了一种新的统计方法——广义泛函线性模型(GFLM)来分析暴露混合物对健康的影响。GFLM将混合暴露的影响视为平滑函数,通过基于特定机制重新排序暴露并捕获内部相关性来提供有意义的估计和解释。通过广泛的仿真研究,对各种场景下的鲁棒性和效率进行了评估。结果:我们将GFLM应用于来自国家健康和营养检查调查(NHANES)的两个数据集。在第一个应用中,我们检查了37种营养素对BMI的影响(2011-2016周期)。GFLM发现了显著的混合效应,纤维和脂肪分别成为对BMI产生最大负面和正面影响的营养物质。对于第二个应用,我们调查了四种预氟烷基和全氟烷基物质(PFAS)与痛风风险之间的关系(2007-2018周期)。与传统方法不同的是,GFLM不存在显著的相关性,证明了其对多重共线性的鲁棒性。结论:GFLM框架是一个强大的混合暴露分析工具,提供了改进的相关暴露处理和可解释的结果。它在各种场景和实际应用中表现出强大的性能,促进了我们对复杂环境暴露及其对环境流行病学和毒理学的健康影响的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized Functional Linear Models: Efficient Modeling for High-dimensional Correlated Mixture Exposures.

Objective: Humans are exposed to complex mixtures of environmental chemicals and other factors that can affect their health. Analysis of these mixture exposures presents several key challenges for environmental epidemiology and risk assessment, including high dimensionality, correlated exposure, and subtle individual effects.

Methods: We proposed a novel statistical approach, the generalized functional linear model (GFLM), to analyze the health effects of exposure mixtures. GFLM treats the effect of mixture exposures as a smooth function by reordering exposures based on specific mechanisms and capturing internal correlations to provide a meaningful estimation and interpretation. The robustness and efficiency was evaluated under various scenarios through extensive simulation studies.

Results: We applied the GFLM to two datasets from the National Health and Nutrition Examination Survey (NHANES). In the first application, we examined the effects of 37 nutrients on BMI (2011-2016 cycles). The GFLM identified a significant mixture effect, with fiber and fat emerging as the nutrients with the greatest negative and positive effects on BMI, respectively. For the second application, we investigated the association between four pre- and perfluoroalkyl substances (PFAS) and gout risk (2007-2018 cycles). Unlike traditional methods, the GFLM indicated no significant association, demonstrating its robustness to multicollinearity.

Conclusion: GFLM framework is a powerful tool for mixture exposure analysis, offering improved handling of correlated exposures and interpretable results. It demonstrates robust performance across various scenarios and real-world applications, advancing our understanding of complex environmental exposures and their health impacts on environmental epidemiology and toxicology.

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