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Missing data in clinical trials: From clinical assumptions to statistical analysis using pattern mixture models

机译:临床试验中缺少数据:从临床假设到使用模式混合模型的统计分析

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摘要

The need to use rigorous, transparent, clearly interpretable, and scientifically justified methodology for preventing and dealing with missing data in clinical trials has been a focus of much attention from regulators, practitioners, and academicians over the past years. New guidelines and recommendations emphasize the importance of minimizing the amount of missing data and carefully selecting primary analysis methods on the basis of assumptions regarding the missingness mechanism suitable for the study at hand, as well as the need to stress-test the results of the primary analysis under different sets of assumptions through a range of sensitivity analyses. Some methods that could be effectively used for dealing with missing data have not yet gained widespread usage, partly because of their underlying complexity and partly because of lack of relatively easy approaches to their implementation. In this paper, we explore several strategies for missing data on the basis of pattern mixture models that embody clear and realistic clinical assumptions. Pattern mixture models provide a statistically reasonable yet transparent framework for translating clinical assumptions into statistical analyses. Implementation details for some specific strategies are provided in an Appendix (available online as Supporting Information), whereas the general principles of the approach discussed in this paper can be used to implement various other analyses with different sets of assumptions regarding missing data.
机译:在过去的几年中,一直需要使用严格,透明,清晰易懂且科学合理的方法来预防和处理临床试验中的缺失数据,这一直是监管机构,从业人员和学术界广泛关注的焦点。新的指南和建议强调了最大程度地减少遗失数据的重要性,并根据有关适合于即将进行的研究的缺失机制的假设以及需要对主要结果进行压力测试的假设,谨慎选择主要分析方法。通过一系列敏感性分析在不同的假设下进行分析。某些可有效用于处理丢失数据的方法尚未得到广泛使用,部分原因是其潜在的复杂性,部分原因是缺乏实现它们的相对简单的方法。在本文中,我们基于体现清晰和现实临床假设的模式混合模型,探索了几种丢失数据的策略。模式混合模型为将临床假设转化为统计分析提供了统计上合理但透明的框架。附录中提供了一些特定策略的实施细节(可作为支持信息在线获得),而本文中讨论的方法的一般原理可用于执行各种其他分析,并针对丢失的数据采用不同的假设集。

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