Sample size considerations for micro-randomized trials with binary proximal outcomes.
Eric R CohnTianchen QianSusan A MurphyPublished in: Statistics in medicine (2023)
Micro-randomized trials (MRTs) are a novel experimental design for developing mobile health interventions. Participants are repeatedly randomized in an MRT, resulting in longitudinal data with time-varying treatments. Causal excursion effects are the main quantities of interest in MRT primary and secondary analyses. We consider MRTs where the proximal outcome is binary and the randomization probability is constant or time-varying but not data-dependent. We develop a sample size formula for detecting a nonzero marginal excursion effect. We prove that the formula guarantees power under a set of working assumptions. We demonstrate via simulation that violations of certain working assumptions do not affect the power, and for those that do, we point out the direction in which the power changes. We then propose practical guidelines for using the sample size formula. As an illustration, the formula is used to size an MRT on interventions for excessive drinking. The sample size calculator is implemented in R package MRTSampleSizeBinary and an interactive R Shiny app. This work can be used in trial planning for a wide range of MRTs with binary proximal outcomes.
Keyphrases
- human milk
- physical activity
- clinical trial
- phase iii
- ionic liquid
- electronic health record
- type diabetes
- double blind
- cross sectional
- randomized controlled trial
- machine learning
- deep learning
- adipose tissue
- big data
- metabolic syndrome
- skeletal muscle
- insulin resistance
- artificial intelligence
- low birth weight
- virtual reality
- alcohol consumption