Sample Sizes Required to Detect Two-Way and Three-Way Interactions Involving Slope Differences in Mixed-Effects Linear Models

Based on maximum likelihood estimates obtained from mixed-effects linear models, closed-form power functions are derived to detect two-way and three-way interactions that involve longitudinal course of outcome over time in clinical trials. Sample size estimates are shown to decrease with increasing within-subject correlations. It is further shown that when clinical trial designs are balanced in group sizes, the sample size required to detect an effect size for a three-way interaction is exactly fourfold that required to detect the same effect size of a two-way interaction. Furthermore, this fourfold relationship virtually holds for unbalanced allocations of subjects if one factor is balanced in the three-way interaction model. Simulations are presented that verify the sample size estimates for two-way and three-way interactions.

[1]  Allan Donner,et al.  Design and Analysis of Cluster Randomization Trials in Health Research , 2001 .

[2]  J. Ware,et al.  Random-effects models for longitudinal data. , 1982, Biometrics.

[3]  W. R. Buckland,et al.  Distributions in Statistics: Continuous Multivariate Distributions , 1973 .

[4]  F. Hsieh,et al.  Sample size formulae for intervention studies with the cluster as unit of randomization. , 1988, Statistics in medicine.

[5]  W. R. Buckland,et al.  Distributions in Statistics: Continuous Multivariate Distributions , 1974 .

[6]  Nicole A. Lazar,et al.  Statistical Analysis With Missing Data , 2003, Technometrics.

[7]  P. Diggle Analysis of Longitudinal Data , 1995 .

[8]  Andrew C. Leon,et al.  Performance of a Mixed Effects Logistic Regression Model for Binary Outcomes With Unequal Cluster Size , 2005, Journal of biopharmaceutical statistics.

[9]  Andrew C. Leon,et al.  Computational Statistics and Data Analysis Sample Sizes Required to Detect Interactions between Two Binary Fixed-effects in a Mixed-effects Linear Regression Model , 2022 .

[10]  Roderick J. A. Little,et al.  Statistical Analysis with Missing Data: Little/Statistical Analysis with Missing Data , 2002 .

[11]  D. Hedeker,et al.  Sample Size Estimation for Longitudinal Designs with Attrition: Comparing Time-Related Contrasts Between Two Groups , 1999 .

[12]  James Rochon,et al.  Sample size calculations for two-group repeated-measures experiments , 1991 .

[13]  J. Overall,et al.  Estimating sample sizes for repeated measurement designs. , 1994, Controlled clinical trials.

[14]  A. Donner,et al.  Randomization by cluster. Sample size requirements and analysis. , 1981, American journal of epidemiology.

[15]  J. Fleiss The design and analysis of clinical experiments , 1987 .

[16]  P. Diggle,et al.  Analysis of Longitudinal Data. , 1997 .

[17]  S. Raudenbush,et al.  Effects of study duration, frequency of observation, and sample size on power in studies of group differences in polynomial change. , 2001, Psychological methods.