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Estimating relative risks in multicenter studies with a small number of centers — which methods to use? A simulation study

机译:在少数几个中心的多中心研究中估计相对风险-使用哪种方法?模拟研究

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Analyses of multicenter studies often need to account for center clustering to ensure valid inference. For binary outcomes, it is particularly challenging to properly adjust for center when the number of centers or total sample size is small, or when there are few events per center. Our objective was to evaluate the performance of generalized estimating equation (GEE) log-binomial and Poisson models, generalized linear mixed models (GLMMs) assuming binomial and Poisson distributions, and a Bayesian binomial GLMM to account for center effect in these scenarios. We conducted a simulation study with few centers (≤30) and 50 or fewer subjects per center, using both a randomized controlled trial and an observational study design to estimate relative risk. We compared the GEE and GLMM models with a log-binomial model without adjustment for clustering in terms of bias, root mean square error (RMSE), and coverage. For the Bayesian GLMM, we used informative neutral priors that are skeptical of large treatment effects that are almost never observed in studies of medical interventions. All frequentist methods exhibited little bias, and the RMSE was very similar across the models. The binomial GLMM had poor convergence rates, ranging from 27% to 85%, but performed well otherwise. The results show that both GEE models need to use small sample corrections for robust SEs to achieve proper coverage of 95% CIs. The Bayesian GLMM had similar convergence rates but resulted in slightly more biased estimates for the smallest sample sizes. However, it had the smallest RMSE and good coverage across all scenarios. These results were very similar for both study designs. For the analyses of multicenter studies with a binary outcome and few centers, we recommend adjustment for center with either a GEE log-binomial or Poisson model with appropriate small sample corrections or a Bayesian binomial GLMM with informative priors.
机译:多中心研究的分析通常需要考虑中心聚类,以确保有效的推断。对于二元结果,当中心的数量或样本总数较小或每个中心的事件很少时,正确调整中心尤其具有挑战性。我们的目标是评估广义估计方程(GEE)对数二项式和Poisson模型,假设二项式和Poisson分布的广义线性混合模型(GLMM)以及贝叶斯二项式GLMM的性能,以解决这些情况下的中心效应。我们使用一个随机对照试验和一项观察性研究设计来估计相对风险,从而在很少几个中心(≤30)和每个中心不超过50个受试者的情况下进行了模拟研究。我们将GEE和GLMM模型与对数二项式模型进行了比较,而没有对聚类进行调整(在偏差,均方根误差(RMSE)和覆盖率方面)。对于贝叶斯GLMM,我们使用了信息丰富的中性先验,他们对大型治疗效果持怀疑态度,而在医学干预研究中几乎从未观察到这种效果。所有的频繁使用方法都几乎没有偏差,并且模型之间的RMSE非常相似。二项式GLMM的收敛速度较差,范围从27%到85%,但在其他方面表现良好。结果表明,两个GEE模型都需要对稳健的SE进行小的样本校正,以实现95%CI的正确覆盖。贝叶斯GLMM具有相似的收敛速度,但对最小样本量的估计略有偏差。但是,它在所有情况下的RMSE最小,覆盖范围也很好。这两种研究设计的结果非常相似。对于具有二元结果和很少中心的多中心研究的分析,我们建议使用具有适当小样本校正的GEE对数二项式或Poisson模型或先验性先验的贝叶斯二项式GLMM对中心进行调整。

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