Yongdong Ouyang, Monica Taljaard, Andrew B Forbes, Fan Li
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To circumvent these challenges, robust variance estimators may be applied to linear mixed models to provide consistent estimators of standard errors of fixed effect parameters in the presence of random-effects misspecification. However, there has been no empirical investigation of robust variance estimators for stepped-wedge cluster randomized trials. In this article, we review six robust variance estimators (both standard and small-sample bias-corrected robust variance estimators) that are available for linear mixed models in R, and then describe a comprehensive simulation study to examine the performance of these robust variance estimators for stepped-wedge cluster randomized trials with a continuous outcome under different data generators. For each data generator, we investigate whether the use of a robust variance estimator with either the random intercept model or the random cluster-by-period model is sufficient to provide valid statistical inference for fixed effect parameters, when these working models are subject to random-effect misspecification. Our results indicate that the random intercept and random cluster-by-period models with robust variance estimators performed adequately. The CR3 robust variance estimator (approximate jackknife) estimator, coupled with the number of clusters minus two degrees of freedom correction, consistently gave the best coverage results, but could be slightly conservative when the number of clusters was below 16. 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引用次数: 0
摘要
线性混合模型通常用于分析阶梯式楔形分组随机试验。分析阶梯式楔形分组随机试验的一个主要考虑因素是考虑潜在的复杂相关结构,这可以通过指定随机效应来实现。最简单的随机效应结构是随机截距,但也有人提出了更复杂的结构,如按期随机分组、离散时间衰减以及最近提出的随机干预结构。在实践中指定适当的随机效应可能具有挑战性:假设更复杂的相关结构可能是合理的,但它们容易受到计算挑战的影响。为了规避这些挑战,可以将稳健方差估计器应用于线性混合模型,以便在随机效应指定错误的情况下,提供固定效应参数标准误差的一致估计器。然而,目前还没有针对阶梯楔形分组随机试验的稳健方差估计器的实证研究。在这篇文章中,我们回顾了 R 语言中可用于线性混合模型的 6 个稳健方差估计器(包括标准稳健方差估计器和小样本偏差校正稳健方差估计器),然后介绍了一项综合模拟研究,以检验这些稳健方差估计器在不同数据生成器下用于连续结果的阶梯楔形分组随机试验的性能。对于每种数据生成器,我们研究了当这些工作模型受到随机效应错误规范的影响时,使用随机截距模型或随机逐期分组模型的稳健方差估计器是否足以为固定效应参数提供有效的统计推断。我们的结果表明,采用稳健方差估计器的随机截距模型和随机逐期聚类模型表现良好。CR3 稳健方差估计器(近似千分法)估计器加上聚类数减去两个自由度校正,一直能提供最好的覆盖结果,但当聚类数低于 16 时可能略显保守。我们总结了我们的结果对阶梯楔形分组随机试验线性混合模型分析的影响,并就分析模型的选择提出了一些实用建议。
Maintaining the validity of inference from linear mixed models in stepped-wedge cluster randomized trials under misspecified random-effects structures.
Linear mixed models are commonly used in analyzing stepped-wedge cluster randomized trials. A key consideration for analyzing a stepped-wedge cluster randomized trial is accounting for the potentially complex correlation structure, which can be achieved by specifying random-effects. The simplest random effects structure is random intercept but more complex structures such as random cluster-by-period, discrete-time decay, and more recently, the random intervention structure, have been proposed. Specifying appropriate random effects in practice can be challenging: assuming more complex correlation structures may be reasonable but they are vulnerable to computational challenges. To circumvent these challenges, robust variance estimators may be applied to linear mixed models to provide consistent estimators of standard errors of fixed effect parameters in the presence of random-effects misspecification. However, there has been no empirical investigation of robust variance estimators for stepped-wedge cluster randomized trials. In this article, we review six robust variance estimators (both standard and small-sample bias-corrected robust variance estimators) that are available for linear mixed models in R, and then describe a comprehensive simulation study to examine the performance of these robust variance estimators for stepped-wedge cluster randomized trials with a continuous outcome under different data generators. For each data generator, we investigate whether the use of a robust variance estimator with either the random intercept model or the random cluster-by-period model is sufficient to provide valid statistical inference for fixed effect parameters, when these working models are subject to random-effect misspecification. Our results indicate that the random intercept and random cluster-by-period models with robust variance estimators performed adequately. The CR3 robust variance estimator (approximate jackknife) estimator, coupled with the number of clusters minus two degrees of freedom correction, consistently gave the best coverage results, but could be slightly conservative when the number of clusters was below 16. We summarize the implications of our results for the linear mixed model analysis of stepped-wedge cluster randomized trials and offer some practical recommendations on the choice of the analytic model.
期刊介绍:
Statistical Methods in Medical Research is a peer reviewed scholarly journal and is the leading vehicle for articles in all the main areas of medical statistics and an essential reference for all medical statisticians. This unique journal is devoted solely to statistics and medicine and aims to keep professionals abreast of the many powerful statistical techniques now available to the medical profession. This journal is a member of the Committee on Publication Ethics (COPE)