A comparative review of methods for comparing means using partially paired data
Document Type
Article
Publication Date
6-1-2017
Abstract
In medical experiments with the objective of testing the equality of two means, data are often partially paired by design or because of missing data. The partially paired data represent a combination of paired and unpaired observations. In this article, we review and compare nine methods for analyzing partially paired data, including the two-sample t-test, paired t-test, corrected z-test, weighted t-test, pooled t-test, optimal pooled t-test, multiple imputation method, mixed model approach, and the test based on a modified maximum likelihood estimate. We compare the performance of these methods through extensive simulation studies that cover a wide range of scenarios with different effect sizes, sample sizes, and correlations between the paired variables, as well as true underlying distributions. The simulation results suggest that when the sample size is moderate, the test based on the modified maximum likelihood estimator is generally superior to the other approaches when the data is normally distributed and the optimal pooled t-test performs the best when the data is not normally distributed, with well-controlled type I error rates and high statistical power; when the sample size is small, the optimal pooled t-test is to be recommended when both variables have missing data and the paired t-test is to be recommended when only one variable has missing data.
Publication Source (Journal or Book title)
Statistical Methods in Medical Research
First Page
1323
Last Page
1340
Recommended Citation
Guo, B., & Yuan, Y. (2017). A comparative review of methods for comparing means using partially paired data. Statistical Methods in Medical Research, 26 (3), 1323-1340. https://doi.org/10.1177/0962280215577111