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Microsimulation Model Calibration with Approximate Bayesian Computation in R: A Tutorial

Author

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  • Peter Shewmaker

    (Center for Gerontology and Healthcare Research, Brown University, Providence, RI, USA)

  • Stavroula A. Chrysanthopoulou

    (Center for Statistical Sciences, Brown University, Providence, RI, USA)

  • Rowan Iskandar

    (Center for Evidence Synthesis in Health, Brown University, Providence, RI, USA
    Center of Excellence in Decision-Analytic Modeling and Health Economics Research, sitem-insel, Bern, Switzerland)

  • Derek Lake

    (Center for Gerontology and Healthcare Research, Brown University, Providence, RI, USA)

  • Earic Jutkowitz

    (Center for Gerontology and Healthcare Research, Brown University, Providence, RI, USA
    Center of Innovation in Long Term Services and Supports, Providence VA Medical Center, Providence, RI, USA)

Abstract

Mathematical health policy models, including microsimulation models (MSMs), are widely used to simulate complex processes and predict outcomes consistent with available data. Calibration is a method to estimate parameter values such that model predictions are similar to observed outcomes of interest. Bayesian calibration methods are popular among the available calibration techniques, given their strong theoretical basis and flexibility to incorporate prior beliefs and draw values from the posterior distribution of model parameters and hence the ability to characterize and evaluate parameter uncertainty in the model outcomes. Approximate Bayesian computation (ABC) is an approach to calibrate complex models in which the likelihood is intractable, focusing on measuring the difference between the simulated model predictions and outcomes of interest in observed data. Although ABC methods are increasingly being used, there is limited practical guidance in the medical decision-making literature on approaches to implement ABC to calibrate MSMs. In this tutorial, we describe the Bayesian calibration framework, introduce the ABC approach, and provide step-by-step guidance for implementing an ABC algorithm to calibrate MSMs, using 2 case examples based on a microsimulation model for dementia. We also provide the R code for applying these methods.

Suggested Citation

  • Peter Shewmaker & Stavroula A. Chrysanthopoulou & Rowan Iskandar & Derek Lake & Earic Jutkowitz, 2022. "Microsimulation Model Calibration with Approximate Bayesian Computation in R: A Tutorial," Medical Decision Making, , vol. 42(5), pages 557-570, July.
  • Handle: RePEc:sae:medema:v:42:y:2022:i:5:p:557-570
    DOI: 10.1177/0272989X221085569
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    References listed on IDEAS

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    1. Eline M. Krijkamp & Fernando Alarid-Escudero & Eva A. Enns & Hawre J. Jalal & M. G. Myriam Hunink & Petros Pechlivanoglou, 2018. "Microsimulation Modeling for Health Decision Sciences Using R: A Tutorial," Medical Decision Making, , vol. 38(3), pages 400-422, April.
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