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      Interaction of treatment with a continuous variable: simulation study of power for several methods of analysis.

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          Abstract

          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.

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          Author and article information

          Journal
          Stat Med
          Statistics in medicine
          1097-0258
          0277-6715
          Nov 30 2014
          : 33
          : 27
          Affiliations
          [1 ] MRC Clinical Trials Unit, University College London, London, WC2B 6NH, U.K.
          Article
          10.1002/sim.6308
          25244679
          e659afd5-0eee-4fd5-af66-759b1d2e4c1b
          Copyright © 2014 John Wiley & Sons, Ltd.
          History

          categorisation,continuous covariate,fractional polynomials,interaction,randomised controlled trials

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