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Randomized trials, generalizability, and meta-analysis: Graphical insights for binary outcomes

机译:随机试验,推广性和荟萃分析:二元结果的图形化见解

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Background Randomized trials stochastically answer the question. "What would be the effect of treatment on outcome if one turned back the clock and switched treatments in the given population?" Generalizations to other subjects are reliable only if the particular trial is performed on a random sample of the target population. By considering an unobserved binary variable, we graphically investigate how randomized trials can also stochastically answer the question, "What would be the effect of treatment on outcome in a population with a possibly different distribution of an unobserved binary baseline variable that does not interact with treatment in its effect on outcome?" Method For three different outcome measures, absolute difference (DIF), relative risk (RR), and odds ratio (OR), we constructed a modified BK-Plot under the assumption that treatment has the same effect on outcome if either all or no subjects had a given level of the unobserved binary variable. (A BK-Plot shows the effect of an unobserved binary covariate on a binary outcome in two treatment groups; it was originally developed to explain Simpsons's paradox.) Results For DIF and RR, but not OR, the BK-Plot shows that the estimated treatment effect is invariant to the fraction of subjects with an unobserved binary variable at a given level. Conclusion The BK-Plot provides a simple method to understand generalizability in randomized trials. Meta-analyses of randomized trials with a binary outcome that are based on DIF or RR, but not OR, will avoid bias from an unobserved covariate that does not interact with treatment in its effect on outcome.
机译:背景随机试验随机回答了这个问题。 “如果给定人群中的时间倒转并改变治疗方式,治疗对结果会有什么影响?”仅当对目标人群的随机样本进行特定试验时,才能将其推广到其他主题。通过考虑未观察到的二元变量,我们以图形方式研究了随机试验如何也能随机回答以下问题:“在未观察到二元基线变量且可能与治疗无交互作用的人群中,治疗对结局的影响如何?对结果有影响吗?”方法对于三种不同的结局指标,绝对差(DIF),相对风险(RR)和优势比(OR),我们假设在所有受试者或无受试者的情况下治疗对结局具有相同影响的假设下,构建了改良的BK图具有给定水平的未观察到的二进制变量。 (BK图显示了两个治疗组中未观察到的二元协变量对二元结局的影响;最初是为了解释辛普森一家的悖论。)结果对于DIF和RR,但不是OR,BK图显示了估计的在给定水平上,治疗效果对于未观察到二元变量的受试者比例是不变的。结论BK图提供了一种简单的方法来了解随机试验中的普遍性。基于DIF或RR但不基于OR的具有二项结果的随机试验的荟萃分析将避免未观察到的协变量产生偏倚,该变量在治疗效果方面与治疗没有相互作用。

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