Abstract
Trial‐based cost‐effectiveness analyses (CEAs) are an important source of evidence in the assessment of health interventions. In these studies, cost and effectiveness outcomes are commonly measured at multiple time points, but some observations may be missing. Restricting the analysis to the participants with complete data can lead to biased and inefficient estimates. Methods, such as multiple imputation, have been recommended as they make better use of the data available and are valid under less restrictive Missing At Random (MAR) assumption. Linear mixed effects models (LMMs) offer a simple alternative to handle missing data under MAR without requiring imputations, and have not been very well explored in the CEA context. In this manuscript, we aim to familiarize readers with LMMs and demonstrate their implementation in CEA. We illustrate the approach on a randomized trial of antidepressants, and provide the implementation code in R and Stata. We hope that the more familiar statistical framework associated with LMMs, compared to other missing data approaches, will encourage their implementation and move practitioners away from inadequate methods.
DOI
10.1002/hec.4510
Publication Date
2022-04-02
Publication Title
Health Economics
Publisher
Wiley
ISSN
1099-1050
Embargo Period
2024-11-19
Recommended Citation
Gabrio, A., Plumpton, C., Banerjee, S., & Leurent, B. (2022) 'Linear mixed models to handle missing at random data in trial‐based economic evaluations', Health Economics, . Wiley: Available at: https://doi.org/10.1002/hec.4510