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A novel complete-case analysis to determine statistical significance between treatments in an intention-to-treat population of randomized clinical trials involving missing data

机译:一种新颖的完整病例分析用于确定意向性治疗人群中涉及缺失数据的治疗方案之间的统计显着性

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摘要

The application of the principle of the intention-to-treat (ITT) to the analysis of clinical trials is challenged in the presence of missing outcome data. The consequences of stopping an assigned treatment in a withdrawn subject are unknown. It is difficult to make a single assumption about missing mechanisms for all clinical trials because there are complicated reactions in the human body to drugs due to the presence of complex biological networks, leading to data missing randomly or non-randomly. Currently there is no statistical method that can tell whether a difference between two treatments in the ITT population of a randomized clinical trial with missing data is significant at a pre-specified level. Making no assumptions about the missing mechanisms, we propose a generalized complete-case (GCC) analysis based on the data of completers. An evaluation of the impact of missing data on the ITT analysis reveals that a statistically significant GCC result implies a significant treatment effect in the ITT population at a pre-specified significance level unless, relative to the comparator, the test drug is poisonous to the non-completers as documented in their medical records. Applications of the GCC analysis are illustrated using literature data, and its properties and limits are discussed.
机译:在缺少结果数据的情况下,将意向性治疗(ITT)原理应用于临床试验分析面临挑战。在退出受试者中停止指定治疗的后果尚不清楚。很难对所有临床试验的缺失机制做出单一假设,因为由于复杂的生物网络的存在,人体对药物的反应很复杂,导致数据随机或非随机缺失。当前,尚无统计方法能够判断出在随机临床试验的ITT人群中,两种治疗方法之间在数据缺失的情况下的差异在预定水平上是否显着。在不假设缺少机制的情况下,我们基于完成者的数据提出了广义完整案例(GCC)分析。对缺失数据对ITT分析的影响进行的评估表明,统计学上显着的GCC结果表明,在预先指定的显着性水平下,ITT人群具有显着的治疗效果,除非相对于比较者,测试药物对非-他们的病历中记录的完成者。使用文献数据说明了GCC分析的应用,并讨论了其性质和限制。

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