Pirondini Leah, Gregson John, Owen Ruth, Collier Tim, Pocock Stuart
Department of Medical Statistics, London School of Hygiene and Tropical Medicine, London, United Kingdom.
Department of Medical Statistics, London School of Hygiene and Tropical Medicine, London, United Kingdom.
JACC Heart Fail. 2022 May;10(5):297-305. doi: 10.1016/j.jchf.2022.02.007. Epub 2022 Apr 6.
In randomized controlled trials, patient characteristics are expected to be well balanced between treatment groups; however, adjustment for characteristics that are prognostic can still be beneficial with a modest gain in statistical power. Nevertheless, previous reviews show that many trials use unadjusted analyses. In this article, we review current practice regarding covariate adjustment in cardiovascular trials among all 84 randomized controlled trials relating to cardiovascular disease published in the New England Journal of Medicine, The Lancet, and the Journal of the American Medical Association during 2019. We identify trials in which use of covariate adjustment led to a change in the trial conclusions. By using these trials as case studies, along with data from the CHARM trial and simulation studies, we demonstrate some of the potential benefits and pitfalls of covariate adjustment. We discuss some of the complexities of using covariate adjustment, including how many covariates to choose, how covariates should be modeled, how to handle missing data for baseline covariates, and how adjusted analyses are viewed by regulators. We conclude that contemporary cardiovascular trials do not make best use of covariate adjustment and that more frequent use could lead to improvements in the efficiency of future trials.
在随机对照试验中,预期各治疗组之间的患者特征能达到良好平衡;然而,对具有预后意义的特征进行调整仍可能有益,可在一定程度上提高统计效能。尽管如此,以往的综述表明,许多试验采用的是未调整分析。在本文中,我们回顾了2019年发表在《新英格兰医学杂志》《柳叶刀》和《美国医学会杂志》上的所有84项与心血管疾病相关的随机对照试验中,心血管试验在协变量调整方面的当前做法。我们确定了那些因使用协变量调整而导致试验结论发生变化的试验。通过将这些试验用作案例研究,并结合CHARM试验的数据和模拟研究,我们展示了协变量调整的一些潜在益处和陷阱。我们讨论了使用协变量调整的一些复杂性,包括选择多少协变量、应如何对协变量进行建模、如何处理基线协变量的缺失数据,以及监管机构如何看待调整后的分析。我们得出结论,当代心血管试验并未充分利用协变量调整,更频繁地使用协变量调整可能会提高未来试验的效率。