Royston Patrick, Sauerbrei Willi
MRC Clinical Trials Unit, University College London, London, WC2B 6NH, U.K.
Stat Med. 2014 Nov 30;33(27):4695-708. doi: 10.1002/sim.6308. Epub 2014 Sep 22.
In a large simulation study reported in a companion paper, we investigated the significance levels of 21 methods for investigating interactions between binary treatment and a continuous covariate in a randomised controlled trial. Several of the methods were shown to have inflated type 1 errors. In the present paper, we report the second part of the simulation study in which we investigated the power of the interaction procedures for two sample sizes and with two distributions of the covariate (well and badly behaved). We studied several methods involving categorisation and others in which the covariate was kept continuous, including fractional polynomials and splines. We believe that the results provide sufficient evidence to recommend the multivariable fractional polynomial interaction procedure as a suitable approach to investigate interactions of treatment with a continuous variable. If subject-matter knowledge gives good arguments for a non-monotone treatment effect function, we propose to use a second-degree fractional polynomial approach, but otherwise a first-degree fractional polynomial (FP1) function with added flexibility (FLEX3) is the method of choice. The FP1 class includes the linear function, and the selected functions are simple, understandable, and transferable. Furthermore, software is available. We caution that investigation of interactions in one dataset can only be interpreted in a hypothesis-generating sense and needs validation in new data.
在一篇配套论文中报道的一项大型模拟研究中,我们调查了在随机对照试验中研究二元治疗与连续协变量之间相互作用的21种方法的显著性水平。结果表明,其中几种方法存在第一类错误膨胀的情况。在本文中,我们报告了模拟研究的第二部分,其中我们调查了两种样本量以及协变量的两种分布(表现良好和表现不佳)下相互作用程序的功效。我们研究了几种涉及分类的方法以及其他协变量保持连续的方法,包括分数多项式和样条。我们认为,这些结果提供了充分的证据,推荐多变量分数多项式相互作用程序作为研究治疗与连续变量相互作用的合适方法。如果专业知识能有力支持非单调治疗效应函数,我们建议使用二次分数多项式方法,但否则,具有额外灵活性(FLEX3)的一次分数多项式(FP1)函数是首选方法。FP1类别包括线性函数,所选函数简单、易懂且具有可转移性。此外,有可用的软件。我们提醒,在一个数据集中对相互作用的研究只能在产生假设的意义上进行解释,并且需要在新数据中进行验证。