A Bayesian hierarchical model for discrete choice data in health care

Stat Methods Med Res. 2018 Dec;27(12):3544-3559. doi: 10.1177/0962280217704226. Epub 2017 Apr 18.

Abstract

In discrete choice experiments, patients are presented with sets of health states described by various attributes and asked to make choices from among them. Discrete choice experiments allow health care researchers to study the preferences of individual patients by eliciting trade-offs between different aspects of health-related quality of life. However, many discrete choice experiments yield data with incomplete ranking information and sparsity due to the limited number of choice sets presented to each patient, making it challenging to estimate patient preferences. Moreover, methods to identify outliers in discrete choice data are lacking. We develop a Bayesian hierarchical random effects rank-ordered multinomial logit model for discrete choice data. Missing ranks are accounted for by marginalizing over all possible permutations of unranked alternatives to estimate individual patient preferences, which are modeled as a function of patient covariates. We provide a Bayesian version of relative attribute importance, and adapt the use of the conditional predictive ordinate to identify outlying choice sets and outlying individuals with unusual preferences compared to the population. The model is applied to data from a study using a discrete choice experiment to estimate individual patient preferences for health states related to prostate cancer treatment.

Keywords: Best–worst discrete choice experiment; conditional predictive ordinate; missing data; outliers; random effects; relative attribute importance.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Bayes Theorem*
  • Humans
  • Male
  • Patient Preference / statistics & numerical data*
  • Prostatic Neoplasms / therapy*
  • Quality of Life
  • Research Design