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Environmental mixtures and children's health: identifying appropriate statistical approaches

机译:环境混合物和儿童健康:确定适当的统计方法

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Purpose of review Biomonitoring studies have shown that children are constantly exposed to complex patterns of chemical and nonchemical exposures. Here, we briefly summarize the rationale for studying multiple exposures, also called mixture, in relation to child health and key statistical approaches that can be used. We discuss advantages over traditional methods, limitations and appropriateness of the context. Recent findings New approaches allow pediatric researchers to answer increasingly complex questions related to environmental mixtures. We present methods to identify the most relevant exposures among a high-multitude of variables, via shrinkage and variable selection techniques, and identify the overall mixture effect, via Weighted Quantile Sum and Bayesian Kernel Machine regressions. We then describe novel extensions that handle high-dimensional exposure data and allow identification of critical exposure windows. Recent advances in statistics and machine learning enable researchers to identify important mixture components, estimate joint mixture effects and pinpoint critical windows of exposure. Despite many advantages over single chemical approaches, measurement error and biases may be amplified in mixtures research, requiring careful study planning and design. Future research requires increased collaboration between epidemiologists, statisticians and data scientists, and further integration with causal inference methods.
机译:审查生物监测研究的目的表明,儿童不断地暴露于化学和非经济曝光的复杂模式。在这里,我们简要概述了研究多种曝光的理由,也称为混合物,与可以使用的儿童健康和关键统计方法。我们讨论了传统方法,限制和上下文的适当性的优势。最近的调查结果新方法允许儿科研究员回答与环境混合物有关的越来越复杂的问题。我们提供了通过收缩和可变选择技术识别高多变量中最相关的暴露的方法,并通过加权量子和贝叶斯内核机回归来识别整体混合效果。然后,我们描述了处理高维曝光数据的新型扩展,并允许识别临界曝光窗口。统计和机器学习的最新进展使研究人员能够识别重要的混合物组分,估计关节混合物效应和定位暴露的关键窗口。尽管对单一化学方法进行了许多优点,但在混合物研究中可能会扩增测量误差和偏差,需要仔细研究规划和设计。未来的研究需要增加流行病学家,统计学家和数据科学家之间的合作,以及与因果推断方法的进一步集成。

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