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Multilevel non-linear interrupted time series analysis

Author

Listed:
  • RJ Waken
  • Fengxian Wang
  • Sarah A. Eisenstein
  • Tim McBride
  • Kim Johnson
  • Karen Joynt-Maddox

Abstract

Recent advances in interrupted time series analysis permit characterization of a typical non-linear interruption effect through use of generalized additive models. Concurrently, advances in latent time series modeling allow efficient Bayesian multilevel time series models. We propose to combine these concepts with a hierarchical model selection prior to characterize interruption effects with a multilevel structure, encouraging parsimony and partial pooling while incorporating meaningful variability in causal effects across subpopulations of interest, while allowing poststratification. These models are demonstrated with three applications: 1) the effect of the introduction of the prostate specific antigen test on prostate cancer diagnosis rates by race and age group, 2) the change in stroke or trans-ischemic attack hospitalization rates across Medicare beneficiaries by rurality in the months after the start of the COVID-19 pandemic, and 3) the effect of Medicaid expansion in Missouri on the proportion of inpatient hospitalizations discharged with Medicaid as a primary payer by key age groupings and sex.

Suggested Citation

  • RJ Waken & Fengxian Wang & Sarah A. Eisenstein & Tim McBride & Kim Johnson & Karen Joynt-Maddox, 2025. "Multilevel non-linear interrupted time series analysis," Papers 2511.05725, arXiv.org.
  • Handle: RePEc:arx:papers:2511.05725
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    File URL: http://arxiv.org/pdf/2511.05725
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