Power and sample size for multistate model analysis of longitudinal discrete outcomes in disease prevention trials

Stat Med. 2021 Apr 15;40(8):1960-1971. doi: 10.1002/sim.8882. Epub 2021 Feb 7.

Abstract

For clinical trials where participants pass through a number of discrete health states resulting in longitudinal measures over time, there are several potential primary estimands for the treatment effect. Incidence or time to a particular health state are commonly used outcomes but the choice of health state may not be obvious and these estimands do not make full use of the longitudinal assessments. Multistate models have been developed for some diseases and conditions with the purpose of understanding their natural history and have been used for secondary analysis to understand mechanisms of action of treatments. There is little published on the use of multistate models as the primary analysis method and potential implications on design features, such as assessment schedules. We illustrate methods via analysis of data from a motivating example; a Phase III clinical trial of pressure ulcer prevention strategies. We clarify some of the possible estimands that might be considered and we show, via a simulation study, that under some circumstances the sample size could be reduced by half using a multistate model based analysis, without adversely affecting the power of the trial.

Keywords: clinical trial design; discrete outcomes; longitudinal data; multistate model.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Causality
  • Humans
  • Research Design*
  • Sample Size