Department of Mathematics and Statistics, Williams College, Williamstown, MA, United States of America.
PLoS One. 2018 Dec 17;13(12):e0209321. doi: 10.1371/journal.pone.0209321. eCollection 2018.
There is a growing literature that suggests environmental exposure during key developmental periods could have harmful impacts on growth and development of humans. Understanding and estimating the relationship between early-life exposure and human growth is vital to studying the adverse health impacts of environmental exposure. We compare two statistical tools, mixed-effects models with interaction terms and growth mixture models, used to measure the association between exposure and change over time within the context of non-linear growth and non-monotonic relationships between exposure and growth. We illustrate their strengths and weaknesses through a real data example and simulation study. The data example, which focuses on the relationship between phthalates and the body mass index growth of children, indicates that the conclusions from the two models can differ. The simulation study provides a broader understanding of the robustness of these models in detecting the relationships between any exposure and growth that could be observed. Data-driven growth mixture models are more robust to non-monotonic growth and stochastic relationships but at the expense of interpretability. We offer concrete modeling strategies to estimate complex relationships with growth patterns.
越来越多的文献表明,人类在关键发育阶段的环境暴露可能对其生长和发育产生有害影响。了解和估计早期暴露与人类生长之间的关系对于研究环境暴露对健康的不良影响至关重要。我们比较了两种统计工具,即带有交互项的混合效应模型和增长混合模型,用于测量非线性生长和暴露与生长之间非单调关系背景下暴露与随时间变化之间的关联。我们通过真实数据示例和模拟研究来说明它们的优缺点。该数据示例侧重于邻苯二甲酸酯与儿童体重指数生长之间的关系,表明这两个模型的结论可能不同。模拟研究更广泛地了解了这些模型在检测任何暴露与生长之间可能观察到的关系方面的稳健性。基于数据的增长混合模型对非单调生长和随机关系更稳健,但代价是可解释性。我们提供了具体的建模策略来估计具有复杂生长模式的关系。