Statistical properties of randomization in clinical trials.

This is the first of five articles on the properties of different randomization procedures used in clinical trials. This paper presents definitions and discussions of the statistical properties of randomization procedures as they relate to both the design of a clinical trial and the statistical analysis of trial results. The subsequent papers consider, respectively, the properties of simple (complete), permuted-block (i.e., blocked), and urn (adaptive biased-coin) randomization. The properties described herein are the probabilities of treatment imbalances and the potential effects on the power of statistical tests; the permutational basis for statistical tests; and the potential for experimental biases in the assessment of treatment effects due either to the predictability of the random allocations (selection bias) or the susceptibility of the randomization procedure to covariate imbalances (accidental bias). For most randomization procedures, the probabilities of overall treatment imbalances are readily computed, even when a stratified randomization is used. This is important because treatment imbalance may affect statistical power. It is shown, however, that treatment imbalance must be substantial before power is more than trivially affected. The differences between a population versus a permutation model as a basis for a statistical test are reviewed. It is argued that a population model can only be invoked in clinical trials as an untestable assumption, rather than being formally based on sampling at random from a population. On the other hand, a permutational analysis based on the randomization actually employed requires no assumptions regarding the origin of the samples of patients studied. The large sample permutational distribution of the family of linear rank tests is described as a basis for easily conducting a variety of permutation tests. Subgroup (stratified) analyses, analyses when some data are missing, and regression model analyses are also discussed. The Blackwell-Hodges model for selection bias in the composition of the study groups is described. The expected selection bias associated with a randomization procedure is a function of the predictability of the treatment allocations and is readily evaluated for any sequence of treatment assignments. In an unmasked study, the potential for selection bias may be substantial with highly predictable sequences. Finally, the Efron model for accidental bias in the estimate of treatment effect in a linear model is described. This is important because the potential for accidental bias is equivalent to the potential for a covariate imbalance.(ABSTRACT TRUNCATED AT 400 WORDS)

[1]  M Zelen,et al.  The randomization and stratification of patients to clinical trials. , 1974, Journal of chronic diseases.

[2]  L. J. Wei,et al.  The Adaptive Biased Coin Design for Sequential Experiments , 1978 .

[3]  P. Meier Stratification in the design of a clinical trial. , 1981, Controlled clinical trials.

[4]  J. H. Mitchell Medical aid to vietnam. , 1969, The Medical journal of Australia.

[5]  E. Lehmann Testing Statistical Hypotheses , 1960 .

[6]  J. Ware,et al.  Randomized clinical trials. Perspectives on some recent ideas. , 1976, The New England journal of medicine.

[7]  R. Simon,et al.  Restricted randomization designs in clinical trials. , 1979, Biometrics.

[8]  J. L. Hodges,et al.  Design for the Control of Selection Bias , 1957 .

[9]  R. Randles,et al.  Introduction to the Theory of Nonparametric Statistics , 1991 .

[10]  M Palta,et al.  Magnitude and likelihood of loss resulting from non-stratified randomization. , 1982, Statistics in medicine.

[11]  J. Lachin Introduction to sample size determination and power analysis for clinical trials. , 1981, Controlled clinical trials.

[12]  Calyampudi Radhakrishna Rao,et al.  Linear Statistical Inference and its Applications , 1967 .

[13]  Pocock Sj,et al.  Allocation of patients to treatment in clinical trials. , 1979 .

[14]  David R. Cox Planning of Experiments , 1958 .

[15]  J. Kalbfleisch,et al.  The Statistical Analysis of Failure Time Data , 1980 .

[16]  M. Gail,et al.  Biased estimates of treatment effect in randomized experiments with nonlinear regressions and omitted covariates , 1984 .

[17]  J. Lachin Properties of simple randomization in clinical trials. , 1988, Controlled clinical trials.

[18]  L. J. Wei,et al.  An Application of an Urn Model to the Design of Sequential Controlled Clinical Trials , 1978 .

[19]  Lee-Jen Wei,et al.  A Class of Designs for Sequential Clinical Trials , 1977 .

[20]  J. Grizzle,et al.  A note on stratifying versus complete random assignment in clinical trials. , 1982, Controlled clinical trials.

[21]  R. A. Fisher,et al.  Design of Experiments , 1936 .

[22]  D. Rubin,et al.  Statistical Analysis with Missing Data. , 1989 .

[23]  Richard L. Smith Sequential Treatment Allocation Using Biased Coin Designs , 1984 .

[24]  P. Armitage,et al.  Design and analysis of randomized clinical trials requiring prolonged observation of each patient. I. Introduction and design. , 1976, British Journal of Cancer.

[25]  J P Matts,et al.  Randomization in clinical trials: conclusions and recommendations. , 1988, Controlled clinical trials.

[26]  C B Begg,et al.  The impact of treatment allocation procedures on nominal significance levels and bias. , 1987, Controlled clinical trials.

[27]  R. McHugh,et al.  Post-stratification in the randomized clinical trial. , 1983, Biometrics.

[28]  L. J. Wei,et al.  Properties of the urn randomization in clinical trials. , 1988, Controlled clinical trials.

[29]  B. Efron Forcing a sequential experiment to be balanced , 1971 .

[30]  D. Rubin INFERENCE AND MISSING DATA , 1975 .

[31]  J. Lachin,et al.  Properties of permuted-block randomization in clinical trials. , 1988, Controlled clinical trials.

[32]  Douglas A. Wolfe,et al.  Introduction to the Theory of Nonparametric Statistics. , 1980 .

[33]  C B Begg,et al.  Treatment allocation methods in clinical trials: a review. , 1985, Statistics in medicine.

[34]  P. McCullagh,et al.  Generalized Linear Models , 1984 .

[35]  E. Lehmann,et al.  Nonparametrics: Statistical Methods Based on Ranks , 1976 .

[36]  D. DeMets,et al.  Fundamentals of Clinical Trials , 1982 .