Missing data ubiquitously occur in randomized controlled trials and may compromise the causal inference if inappropriately handled. Some problematic missing data methods such as complete case (CC) analysis and last-observation-carried-forward (LOCF) are unfortunately still common in nutrition trials. This situation is partially caused by investigator confusion on missing data assumptions for different methods. In this statistical guidance, we provide a brief introduction of missing data mechanisms and the unreasonable assumptions that underlie CC and LOCF and recommend 2 appropriate missing data methods: multiple imputation and full information maximum likelihood.
CITATION STYLE
Li, P., & Stuart, E. A. (2019, March 1). Best (but oft-forgotten) practices: Missing data methods in randomized controlled nutrition trials. American Journal of Clinical Nutrition. Oxford University Press. https://doi.org/10.1093/ajcn/nqy271
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