Testing hypotheses under adaptive randomization with continuous covariates in clinical trials

Covariate-adaptive designs are widely used to balance covariates and maintain randomization in clinical trials. Adaptive designs for discrete covariates and their asymptotic properties have been well studied in the literature. However, important continuous covariates are often involved in clinical studies. Simply discretizing or categorizing continuous covariates can result in loss of information. The current understanding of adaptive designs with continuous covariates lacks a theoretical foundation as the existing works are entirely based on simulations. Consequently, conventional hypothesis testing in clinical trials using continuous covariates is still not well understood. In this paper, we establish a theoretical framework for hypothesis testing on adaptive designs with continuous covariates based on linear models. For testing treatment effects and significance of covariates, we obtain the asymptotic distributions of the test statistic under null and alternative hypotheses. Simulation studies are conducted under a class of covariate-adaptive designs, including the p-value-based method, the Su’s percentile method, the empirical cumulative-distribution method, the Kullback–Leibler divergence method, and the kernel-density method. Key findings about adaptive designs with independent covariates based on linear models are (1) hypothesis testing that compares treatment effects are conservative in terms of smaller type I error, (2) hypothesis testing using adaptive designs outperforms complete randomization method in terms of power, and (3) testing on significance of covariates is still valid.

[1]  Christopher J Weir,et al.  Comparison of stratification and adaptive methods for treatment allocation in an acute stroke clinical trial. , 2004, Statistics in medicine.

[2]  Feifang Hu,et al.  Testing Hypotheses of Covariate-Adaptive Randomized Clinical Trials , 2015 .

[3]  James Frane,et al.  A Method of Biased Coin Randomization, Its Implementation, and Its Validation , 1998 .

[4]  Herman Chernoff,et al.  Forcing a Sequential Experiment to be Balanced , 2008 .

[5]  Yunzhi Lin,et al.  Balancing continuous and categorical baseline covariates in sequential clinical trials using the area between empirical cumulative distribution functions , 2012, Statistics in medicine.

[6]  Feifang Hu,et al.  Balancing continuous covariates based on Kernel densities. , 2013, Contemporary clinical trials.

[7]  Mikel Aickin,et al.  A Simulation Study of the Validity and Efficiency of Design-Adaptive Allocation to Two Groups in the Regression Situation , 2009, The international journal of biostatistics.

[8]  S. Pocock,et al.  Sequential treatment assignment with balancing for prognostic factors in the controlled clinical trial. , 1975, Biometrics.

[9]  D. Taves,et al.  Rank-Minimization for balanced assignment of subjects in clinical trials. , 2010, Contemporary clinical trials.

[10]  A. Forsythe,et al.  Validity and power of tests when groups have been balanced for prognostic factors , 1987 .

[11]  D R Taves,et al.  Minimization: A new method of assigning patients to treatment and control groups , 1974, Clinical pharmacology and therapeutics.

[12]  Yasuo Ohashi,et al.  Statistical comparison of random allocation methods in cancer clinical trials. , 2004, Controlled clinical trials.

[13]  N. Birkett,et al.  Adaptive allocation in randomized controlled trials. , 1985, Controlled clinical trials.

[14]  F K Hoehler,et al.  Balancing allocation of subjects in biomedical research: a minimization strategy based on ranks. , 1987, Computers and biomedical research, an international journal.

[15]  Wenle Zhao,et al.  Quantifying the cost in power of ignoring continuous covariate imbalances in clinical trial randomization. , 2011, Contemporary clinical trials.

[16]  Dongsheng Tu,et al.  Adjustment of Treatment Effect for Covariates in Clinical Trials: Statistical and Regulatory Issues , 2000 .

[17]  Isao Yoshimura,et al.  Minimization method for balancing continuous prognostic variables between treatment and control groups using Kullback-Leibler divergence. , 2006, Contemporary clinical trials.

[18]  Zheng Su Balancing multiple baseline characteristics in randomized clinical trials. , 2011, Contemporary clinical trials.

[19]  Jun Shao,et al.  A theory for testing hypotheses under covariate-adaptive randomization , 2010 .