On the reproducibility of discrete-event simulation studies in health research: an empirical study using open models

Reproducible
Authors
Affiliations

Amy Heather

University of Exeter Medical School

Thomas Monks

University of Exeter Medical School

Alison Harper

University of Exeter Business School

Navonil Mustafee

University of Exeter Business School

Andrew Mayne

Somerset NHS Foundation Trust

Published

09 Sep 2025

Doi

Abstract

Reproducibility of computational research is critical for ensuring transparency, reliability, and reusability. Challenges with computational reproducibility have been documented in several fields, but healthcare discrete-event simulation (DES) models have not been thoroughly examined in this context. This study assessed the computational reproducibility of eight published healthcare DES models (Python or R), selected to represent diverse contexts, complexities, and years of publication. Repositories and articles were also assessed against guidelines and reporting standards, offering insights into their relationship with reproducibility success. Reproducing results required up to 28 hours of troubleshooting per model, with 50% fully reproduced and 50% partially reproduced (12.5% to 94.1% of reported outcomes). Key barriers included the absence of open licences, discrepancies between reported and coded parameters, and missing code to produce model outputs, run scenarios, and generate tables and figures. Addressing these issues would often require relatively little effort from authors: adding an open licence and sharing all materials used to produce the article. Actionable recommendations are proposed to enhance reproducibility practices for simulation modellers and reviewers.

Article

Citation

BibTeX citation:
@online{heather2025,
  author = {Heather, Amy and Monks, Thomas and Harper, Alison and
    Mustafee, Navonil and Mayne, Andrew},
  title = {On the Reproducibility of Discrete-Event Simulation Studies
    in Health Research: An Empirical Study Using Open Models},
  date = {2025-09-09},
  url = {https://pythonhealthdatascience.github.io/stars/pages/publications/2025/heather2025reproducibility/},
  doi = {10.1080/17477778.2025.2552177},
  langid = {en}
}
For attribution, please cite this work as:
Heather, Amy, Thomas Monks, Alison Harper, Navonil Mustafee, and Andrew Mayne. 2025. “On the Reproducibility of Discrete-Event Simulation Studies in Health Research: An Empirical Study Using Open Models.” September 9, 2025. https://doi.org/10.1080/17477778.2025.2552177.