A Bayesian multilevel time-varying framework for joint modeling of hospitalization and survival in patients on dialysis

Stat Med. 2022 Dec 20;41(29):5597-5611. doi: 10.1002/sim.9582. Epub 2022 Oct 1.

Abstract

Over 782 000 individuals in the United States have end-stage kidney disease with about 72% of patients on dialysis, a life-sustaining treatment. Dialysis patients experience high mortality and frequent hospitalizations, at about twice per year. These poor outcomes are exacerbated at key time periods, such as the fragile period after transition to dialysis. In order to study the time-varying effects of modifiable patient and dialysis facility risk factors on hospitalization and mortality, we propose a novel Bayesian multilevel time-varying joint model. Efficient estimation and inference is achieved within the Bayesian framework using Markov chain Monte Carlo, where multilevel (patient- and dialysis facility-level) varying coefficient functions are targeted via Bayesian P-splines. Applications to the United States Renal Data System, a national database which contains data on nearly all patients on dialysis in the United States, highlight significant time-varying effects of patient- and facility-level risk factors on hospitalization risk and mortality. Finite sample performance of the proposed methodology is studied through simulations.

Keywords: Markov chain Monte Carlo; United States Renal Data System; end-stage kidney disease; mixed-effects models; varying-coefficient models.

Publication types

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

MeSH terms

  • Bayes Theorem
  • Hospitalization
  • Humans
  • Kidney Failure, Chronic* / etiology
  • Renal Dialysis*
  • Risk Factors
  • United States / epidemiology