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Comparisons of statistical methods in analyzing clinical data through systematically using historical data

机译:通过系统地使用历史数据来分析临床数据的统计方法的比较

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摘要

With increasing requirements, from both regulatory and scientific community, for pre-specification of details of all analyses prior to unblinding of data in clinical trials, it is critical that one selects the most appropriate statistical model. Selecting a model based on assumption checking either inflates type I error or compromises the statistical power. Previous research is mainly focused on comparing various analysis models through either simulation or case studies. Simulation does provide a flexible way to compare models but requires assumptions on models for generating simulation data. On the other hand, although results based on case studies are close to the real situations, it is difficult to draw a definite conclusion due to lack of replication. These two approaches ignore the fact that for most variables, large amount of data may be available from historical studies. We propose a procedure that systematically utilizes the historical data, evaluates various models of interest, and provides a powerful choice for model pre-specification for subsequent studies. Based on the comparisons on the generated data from a historical data base, one can pre-specify the particular model for the purpose of controlling the type 1 error and power of prospective studies, or ease of interpretation when they all have similar performance.
机译:随着监管机构和科学界对在不进行临床试验中的数据盲目化之前对所有分析的详细信息进行预先指定的要求不断提高,至关重要的是选择一种最合适的统计模型。根据假设检查选择模型,可以夸大I型错误或损害统计功效。先前的研究主要集中在通过仿真或案例研究比较各种分析模型上。仿真确实提供了一种比较模型的灵活方法,但需要对模型进行假设才能生成仿真数据。另一方面,尽管基于案例研究的结果接近实际情况,但由于缺乏重复性,很难得出明确的结论。这两种方法忽略了以下事实:对于大多数变量,历史研究可能会提供大量数据。我们提出了一种程序,该程序可以系统地利用历史数据,评估各种感兴趣的模型,并为模型的预规范化提供强大的选择,以用于后续研究。基于对历史数据库生成数据的比较,可以预先指定特定模型,以控制前瞻性研究的类型1错误和功效,或者在它们具有相似性能时易于解释。

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