La Trobe

Including frameworks of public health ethics in computational modelling of infectious disease interventions

journal contribution
posted on 2025-10-28, 23:39 authored by Alexander E. Zarebski, N Tellioglu, J Stockdale, JA Spencer, WR Khudabukhsh, Joel MillerJoel Miller, C Zachreson
Decisions on public health interventions to control infectious diseases are often informed by computational models. Interpreting the predicted outcomes of a public health decision requires not only high-quality modelling but also an ethical framework for assessing the benefits and harms associated with different options. The design and specification of ethical frameworks matured independently of computational modelling, so many values recognized as important for ethical decision-making are missing from computational models. We demonstrate a proof-of-concept approach to incorporate multiple public health values into the evaluation of a simple computational model for vaccination against a pathogen such as SARS-CoV-2. By examining a bounded space of alternative prioritizations of three values relevant to public health ethics (aggregate clinical burden, equity in clinical burden, equity in adverse effects from vaccination), we identify value trade-offs, where the outcomes of optimal strategies differ depending on the ethical framework. This work demonstrates an approach to incorporating diverse values into decision criteria used to evaluate outcomes of models of infectious disease interventions.<p></p>

History

Publication Date

2025-09-26

Journal

Interface Focus

Volume

15

Issue

4

Article Number

20250004

Pagination

12p.

Publisher

The Royal Society

ISSN

2042-8898

Rights Statement

© 2025 The Authors. Published by the Royal Society under the terms of the Creative Commons Attribution License http://creativecommons.org/licenses/by/4.0/, which permits unrestricted use, provided the original author and source are credited.

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