A guide to Value of Information methods for prioritising research in health impact modelling
Open Access
Online Resource
Type Preprint
Year 2019
Language English
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Research Methods

A guide to Value of Information methods for prioritising research in health impact modelling

Rob Johnson , James Woodcock, Audrey de Nazelle, Thiago de Sa, Rahul Goel, Marko Tainio
External / Open Access
2019 arXiv Preprint DOI: 10.1515/em-2021-0012

Abstract

Health impact simulation models are used to predict how a proposed intervention or scenario will affect public health outcomes, based on available data and knowledge of the process. The outputs of these models are uncertain due to uncertainty in the structure and inputs to the model. In order to assess the extent of uncertainty in the outcome we must quantify all potentially relevant uncertainties. Then to reduce uncertainty we should obtain and analyse new data, but it may be unclear which parts of the model would benefit from such extra research.
This paper presents methods for uncertainty quantification and research prioritisation in health impact models based on Value of Information (VoI) analysis. Specifically, we
1. discuss statistical methods for quantifying uncertainty in this type of model, given the typical kinds of data that are available, which are often weaker than the ideal data that are desired;
2. show how the expected value of partial perfect information (EVPPI) can be calculated to compare how uncertainty in each model parameter influences uncertainty in the output;
3. show how research time can be prioritised efficiently, in the light of which components contribute most to outcome uncertainty.
The same methods can be used whether the purpose of the model is to estimate quantities of interest to a policy maker, or to explicitly decide between policies. We demonstrate how these methods might be used in a model of the impact of air pollution on health outcomes.
Full Title A guide to Value of Information methods for prioritising research in health impact modelling
Primary Author Rob Johnson
Co-Authors James Woodcock, Audrey de Nazelle, Thiago de Sa, Rahul Goel, Marko Tainio
Publication Type Preprint
Year 2019
Journal arXiv Preprint
Category Research Methods
Institution External / Open Access
Access Open Access
Added to Library March 24, 2026

Cite This Publication

APA
Rob Johnson, James Woodcock, Audrey de Nazelle, Thiago de Sa, Rahul Goel, Marko Tainio (2019). *A guide to Value of Information methods for prioritising research in health impact modelling*. External / Open Access.
MLA
Rob Johnson. *A guide to Value of Information methods for prioritising research in health impact modelling*. External / Open Access, 2019.
DOI
https://doi.org/10.1515/em-2021-0012

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