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首页> 外文期刊>Statistics in medicine >Comparison of the risk difference, risk ratio and odds ratio scales for quantifying the unadjusted intervention effect in cluster randomized trials.
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Comparison of the risk difference, risk ratio and odds ratio scales for quantifying the unadjusted intervention effect in cluster randomized trials.

机译:比较风险差异,风险比和优势比量表,以量化整群随机试验中未经调整的干预效果。

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摘要

This paper evaluates methods for unadjusted analyses of binary outcomes in cluster randomized trials (CRTs). Under the generalized estimating equations (GEE) method the identity, log and logit link functions may be specified to make inferences on the risk difference, risk ratio and odds ratio scales, respectively. An alternative, 'cluster-level', method applies the t-test to summary statistics calculated for each cluster, using proportions, log proportions and log odds, to make inferences on the respective scales. Simulation was used to estimate the bias of the unadjusted intervention effect estimates and confidence interval coverage, generating data sets with different combinations of number of clusters, number of participants per cluster, intra-cluster correlation coefficient rho and intervention effect. When the identity link was specified, GEE had little bias and good coverage, performing slightly better than the log and logit link functions. The cluster-level method provided unbiased point estimates when proportions were used to summarize the clusters. When the log proportion and log odds were used, however, the method often had markedly large bias for two reasons: (i) bias in the modified summary statistic used for cluster-level estimation when a cluster has zero cases with the outcome of interest (arising when the number of participants sampled per cluster is small and the outcome prevalence is low) and (ii) asymptotically, the method estimates the ratio of geometric means of the cluster proportions or odds, respectively, between the trial arms rather than the ratio of arithmetic means. Copyright (c) 2008 John Wiley & Sons, Ltd.
机译:本文评估了在群集随机试验(CRT)中未经调整的二进制结果分析方法。在广义估计方程(GEE)方法下,可以指定身份,对数和对数链接函数,分别推断风险差,风险比和优势比标度。另一种“集群级别”方法将t检验应用于每个聚类的汇总统计信息,并使用比例,对数比例和对数比对来对各个等级进行推断。使用模拟来估计未调整干预效果估计值和置信区间覆盖率的偏差,生成具有不同组数,每个组参与者数,组内相关系数rho和干预效果的不同组合的数据集。指定身份链接后,GEE几乎没有偏见且覆盖范围广,其性能比log和logit链接功能稍好。当使用比例汇总聚类时,聚类级方法提供了无偏点估计。但是,当使用对数比例和对数赔率时,该方法通常具有显着的偏差,原因有两个:(i)当聚类具有零个案例且感兴趣的结果时,用于聚类级估计的修改后的摘要统计量中的偏差( (ii)渐近地,该方法估计试验组之间的聚类比例或几率的几何平均值之比,而不是(ii)渐近。算术手段。版权所有(c)2008 John Wiley&Sons,Ltd.

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