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首页> 外文期刊>BMC Medical Research Methodology >The transitive fallacy for randomized trials: If A bests B and B bests C in separate trials, is A better than C?
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The transitive fallacy for randomized trials: If A bests B and B bests C in separate trials, is A better than C?

机译:随机试验的传递性谬误:如果在单独的试验中A胜过B,B胜过C,那么A是否优于C?

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摘要

Background If intervention A bests B in one randomized trial, and B bests C in another randomized trial, can one conclude that A is better than C? The problem was motivated by the planning of a randomized trial, where A is spiral-CT screening, B is x-ray screening, and C is no screening. On its surface, this would appear to be a straightforward application of the transitive principle of logic. Methods We extended the graphical approach for omitted binary variables that was originally developed to illustrate Simpson's paradox, applying it to hypothetical, but plausible scenarios involving lung cancer screening, treatment for gastric cancer, and antibiotic therapy for clinical pneumonia. Results Graphical illustrations of the three examples show different ways the transitive fallacy for randomized trials can arise due to changes in an unobserved or unadjusted binary variable. In the most dramatic scenario, B bests C in the first trial, A bests B in the second trial, but C bests A at the time of the second trial. Conclusion Even with large sample sizes, combining results from a previous randomized trial of B versus C with results from a new randomized trial of A versus B will not guarantee correct inference about A versus C. A three-arm trial of A, B, and C would protect against this problem and should be considered when the sequential trials are performed in the context of changing secular trends in important omitted variables such as therapy in cancer screening trials.
机译:背景如果干预A在一项随机试验中胜过B,而B在另一项随机试验中胜过C,能否得出结论说A优于C?该问题是由一项随机试验的计划引起的,其中A是螺旋CT筛查,B是X射线筛查,C是无筛查。从表面上看,这似乎是逻辑的传递原理的直接应用。方法我们扩展了图形化方法,以省略最初用于说明辛普森悖论的二元变量,将其应用于假设但可行的方案中,包括肺癌筛查,胃癌治疗和临床肺炎的抗生素治疗。结果这三个示例的图形说明显示了由​​于未观察或未调整的二进制变量的变化而可能导致随机试验的传递谬误的不同方式。在最戏剧性的情况下,B在第一审判中胜过C,A在第二审判中胜过B,但是C在第二审判时胜过A。结论即使样本量很大,将先前B与C的随机试验的结果与A与B的新随机试验的结果相结合也不能保证对A与C的正确推论。A,B和C的三臂试验C可以解决这个问题,并且在改变重要遗漏变量(例如癌症筛查试验中的治疗方法)的长期趋势变化的情况下进行顺序试验时应考虑C。

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