Oak Ridge Institute for Science and Education (ORISE) Research Participant at U.S. EPA, Office of Research and Development, Center for Public Health and Environmental Assessment, Research Triangle Park, Research Triangle Park, North Carolina 27711, United States.
Center for Public Health and Environmental Assessment, Office of Research and Development, U.S. EPA, Research Triangle Park, Research Triangle Park, North Carolina 27711, United States.
Environ Sci Technol. 2023 Oct 17;57(41):15356-15365. doi: 10.1021/acs.est.3c02231. Epub 2023 Oct 5.
Measurement uncertainty has long been a concern in the characterizing and interpreting environmental and toxicological measurements. We compared statistical analysis approaches when there are replicates: a Naı̈ve approach that omits replicates, a Hybrid approach that inappropriately treats replicates as independent samples, and a Measurement Error Model (MEM) approach in a random effects analysis of variance (ANOVA) model that appropriately incorporates replicates. A simulation study assessed the effects of sample size and levels of replication, signal variance, and measurement error on estimates from the three statistical approaches. MEM results were superior overall with confidence intervals for the observed mean narrower on average than those from the Naı̈ve approach, giving improved characterization. The MEM approach also featured an unparalleled advantage in estimating signal and measurement error variance separately, directly addressing measurement uncertainty. These MEM estimates were approximately unbiased on average with more replication and larger sample sizes. Case studies illustrated analyzing normally distributed arsenic and log-normally distributed chromium concentrations in tap water and calculating MEM confidence intervals for the true, latent signal mean and latent signal geometric mean (i.e., with measurement error removed). MEM estimates are valuable for study planning; we used simulation to compare various sample sizes and levels of replication.
测量不确定度一直是环境和毒理学测量中特征描述和解释的关注点。我们比较了有重复测量时的统计分析方法:一种是忽略重复测量的 Naive 方法,一种是将重复测量不当视为独立样本的 Hybrid 方法,还有一种是在随机效应方差分析(ANOVA)模型中适当纳入重复测量的测量误差模型(MEM)方法。一项模拟研究评估了样本量和重复测量水平、信号方差和测量误差对三种统计方法估计值的影响。总体而言,MEM 结果更优,平均而言,观测均值的置信区间比 Naive 方法窄,从而改善了特征描述。MEM 方法还具有无与伦比的优势,可分别估计信号和测量误差方差,直接解决测量不确定度问题。这些 MEM 估计值平均而言大约无偏,随着重复测量和更大的样本量而增加。案例研究说明了如何分析自来水中正态分布的砷和对数正态分布的铬浓度,并计算真实、潜在信号均值和潜在信号几何均值(即去除测量误差)的 MEM 置信区间。MEM 估计值对于研究规划很有价值;我们使用模拟来比较各种样本量和重复测量水平。