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Coping with missing data in clinical trials: a model-based approach applied to asthma trials.

机译:应对临床试验中的数据遗失:一种基于模型的方法应用于哮喘试验。

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摘要

In most clinical trials, some patients do not complete their intended follow-up according to protocol, for a variety of reasons, and are often described as having 'dropped out' before the conclusion of the trial. Their subsequent measurements are missing, and this makes the analysis of the trial's repeated measures data more difficult. In this paper we briefly review the reasons for patient drop-out, and their implications for some commonly used methods of analysis. We then propose a class of models for modelling both the response to treatment and the drop-out process. Such models are readily fitted in a Bayesian framework using non-informative priors with the software BUGS. The results from such models are then compared with the results of standard methods for dealing with missing data in clinical trials, such as last observation carried forward. We further propose the use of a time transformation to linearize an asymptotic pattern of repeated measures over time and therefore simplify the modelling. All these ideas are illustrated using data from a five-arm asthma clinical trial. Copyright 2002 John Wiley & Sons, Ltd.
机译:在大多数临床试验中,由于各种原因,一些患者没有按照方案完成其预期的随访,并且通常被描述为在试验结束之前“退学”。他们随后的测量值丢失了,这使得对试验的重复测量数据的分析更加困难。在本文中,我们简要回顾了导致患者退学的原因及其对某些常用分析方法的影响。然后,我们提出了一类用于对治疗反应和退出过程进行建模的模型。使用非信息先验软件BUGS,可以轻松地将此类模型拟合到贝叶斯框架中。然后将这些模型的结果与处理临床试验中遗漏数据的标准方法的结果进行比较,例如结转的最后观察结果。我们进一步建议使用时间变换来使重复测量随时间的渐近模式线性化,从而简化建模。所有这些想法均使用五臂哮喘临床试验中的数据进行了说明。版权所有2002 John Wiley&Sons,Ltd.

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