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Comparing methods to estimate treatment effects on a continuous outcome in multicentre randomized controlled trials: A simulation study

机译:在多中心随机对照试验中比较评估连续治疗效果的方法的模拟研究

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Background Multicentre randomized controlled trials (RCTs) routinely use randomization and analysis stratified by centre to control for differences between centres and to improve precision. No consensus has been reached on how to best analyze correlated continuous outcomes in such settings. Our objective was to investigate the properties of commonly used statistical models at various levels of clustering in the context of multicentre RCTs. Methods Assuming no treatment by centre interaction, we compared six methods (ignoring centre effects, including centres as fixed effects, including centres as random effects, generalized estimating equation (GEE), and fixed- and random-effects centre-level analysis) to analyze continuous outcomes in multicentre RCTs using simulations over a wide spectrum of intraclass correlation (ICC) values, and varying numbers of centres and centre size. The performance of models was evaluated in terms of bias, precision, mean squared error of the point estimator of treatment effect, empirical coverage of the 95% confidence interval, and statistical power of the procedure. Results While all methods yielded unbiased estimates of treatment effect, ignoring centres led to inflation of standard error and loss of statistical power when within centre correlation was present. Mixed-effects model was most efficient and attained nominal coverage of 95% and 90% power in almost all scenarios. Fixed-effects model was less precise when the number of centres was large and treatment allocation was subject to chance imbalance within centre. GEE approach underestimated standard error of the treatment effect when the number of centres was small. The two centre-level models led to more variable point estimates and relatively low interval coverage or statistical power depending on whether or not heterogeneity of treatment contrasts was considered in the analysis. Conclusions All six models produced unbiased estimates of treatment effect in the context of multicentre trials. Adjusting for centre as a random intercept led to the most efficient treatment effect estimation across all simulations under the normality assumption, when there was no treatment by centre interaction.
机译:背景技术多中心随机对照试验(RCT)通常使用按中心分层的随机化和分析来控制中心之间的差异并提高准确性。在这种情况下,如何最好地分析相关的连续结果尚未达成共识。我们的目标是在多中心RCT的背景下研究在各种聚类水平下常用统计模型的属性。方法假设没有通过中心相互作用进行治疗,我们比较了六种方法(忽略中心效应,包括以固定为中心的中心,包括以随机效应为中心的中心效应,广义估计方程(GEE)以及固定效应和随机效应的中心水平分析)进行分析在广泛的类内相关性(ICC)值范围内进行模拟,并使用不同数量的中心和中心大小,从而在多中心RCT中获得连续结果。通过偏倚,精度,治疗效果的点估计器的均方误差,95%置信区间的经验覆盖率以及该过程的统计功效来评估模型的性能。结果尽管所有方法均能产生无偏估计的治疗效果,但如果存在中心相关性,则忽略中心会导致标准误膨胀和统计功效损失。混合效应模型是最有效的,并且在几乎所有情况下均达到95%和90%功率的标称覆盖率。当中心数量很多且治疗分配受中心内部机会失衡的影响时,固定效应模型的精确度较低。当中心数较少时,GEE方法低估了治疗效果的标准误。这两个中心水平模型根据分析中是否考虑了治疗对比的异质性,导致了更多的可变点估计和相对较低的区间覆盖率或统计功效。结论在多中心试验的背景下,所有六个模型均得出了治疗效果的无偏估计。当没有中心交互作用的治疗时,在正态性假设下,将中心调整为随机截距可导致所有模拟中最有效的治疗效果估计。

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