A Tutorial on Time-Dependent Cohort State-Transition Models in R Using a Cost-Effectiveness Analysis Example

Author:

Alarid-Escudero Fernando12ORCID,Krijkamp Eline34ORCID,Enns Eva A.5ORCID,Yang Alan6ORCID,Hunink M. G. Myriam37,Pechlivanoglou Petros6,Jalal Hawre8ORCID

Affiliation:

1. Department of Health Policy, School of Medicine, and Stanford Health Policy, Freeman-Spogli Institute for International Studies, Stanford University, Stanford, California, USA

2. Division of Public Administration, Center for Research and Teaching in Economics (CIDE), Aguascalientes, Aguascalientes, Mexico

3. Department of Epidemiology and Department of Radiology, Erasmus University Medical Center, Rotterdam, The Netherlands

4. Erasmus School of Health Policy and Management, Erasmus University Rotterdam

5. Division of Health Policy and Management, University of Minnesota School of Public Health, Minneapolis, MN, USA

6. The Hospital for Sick Children, Toronto, Ontario, Canada

7. Center for Health Decision Sciences, Harvard T.H. Chan School of Public Health, Boston, USA

8. University of Toronto, Toronto, Ontario, Canada (PP); University of Ottawa, Ottawa, Ontario, Canada

Abstract

In an introductory tutorial, we illustrated building cohort state-transition models (cSTMs) in R, where the state transition probabilities were constant over time. However, in practice, many cSTMs require transitions, rewards, or both to vary over time (time dependent). This tutorial illustrates adding 2 types of time dependence using a previously published cost-effectiveness analysis of multiple strategies as an example. The first is simulation-time dependence, which allows for the transition probabilities to vary as a function of time as measured since the start of the simulation (e.g., varying probability of death as the cohort ages). The second is state-residence time dependence, allowing for history by tracking the time spent in any particular health state using tunnel states. We use these time-dependent cSTMs to conduct cost-effectiveness and probabilistic sensitivity analyses. We also obtain various epidemiological outcomes of interest from the outputs generated from the cSTM, such as survival probability and disease prevalence, often used for model calibration and validation. We present the mathematical notation first, followed by the R code to execute the calculations. The full R code is provided in a public code repository for broader implementation.

Funder

Society for Medical Decision Making

National Cancer Institute

National Institute of Allergy and Infectious Diseases

National Institute on Drug Abuse

Gordon and Betty Moore Foundation

Publisher

SAGE Publications

Subject

Health Policy

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