Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/31812
Title: Calibration of individual-based models to epidemiological data: A systematic review
Authors: Hazelbag, C. Marijn
Dushoff, Jonathan
Dominic, Emanuel M.
Mthombothi, Zinhle E.
DELVA, Wim 
Kouyos, Roger Dimitri
Pitzer, Virginia E.
Editors: Kouyos, Roger Dimitri
Issue Date: 2020
Publisher: PUBLIC LIBRARY SCIENCE
Source: PLOS COMPUTATIONAL BIOLOGY, 16 (5) (Art N° e1007893)
Abstract: Individual-based models (IBMs) informing public health policy should be calibrated to data and provide estimates of uncertainty. Two main components of model-calibration methods are the parameter-search strategy and the goodness-of-fit (GOF) measure; many options exist for each of these. This review provides an overview of calibration methods used in IBMs modelling infectious disease spread. We identified articles on PubMed employing simulation-based methods to calibrate IBMs informing public health policy in HIV, tuberculosis, and malaria epidemiology published between 1 January 2013 and 31 December 2018. Articles were included if models stored individual-specific information, and calibration involved comparing model output to population-level targets. We extracted information on parameter-search strategies, GOF measures, and model validation. The PubMed search identified 653 candidate articles, of which 84 met the review criteria. Of the included articles, 40 (48%) combined a quantitative GOF measure with an algorithmic parameter-search strategy-either an optimisation algorithm (14/40) or a sampling algorithm (26/40). These 40 articles varied widely in their choices of parameter-search strategies and GOF measures. For the remaining 44 (52%) articles, the parameter-search strategy could either not be identified (32/44) or was described as an informal, non-reproducible method (12/44). Of these 44 articles, the majority (25/44) were unclear about the GOF measure used; of the rest, only five quantitatively evaluated GOF. Only a minority of the included articles, 14 (17%) provided a rationale for their choice of model-calibration method. Model validation was reported in 31 (37%) articles. Reporting on calibration methods is far from optimal in epidemiological modelling studies of HIV, malaria and TB transmission dynamics. The adoption of better documented, algorithmic calibration methods could improve both reproducibility and the quality of inference in model-based epidemiology. There is a need for research comparing the performance of calibration methods to inform decisions about the parameter-search strategies and GOF measures. Author summary Calibration-that is, "fitting" the model to data-is a crucial part of using mathematical models to better forecast and control the population-level spread of infectious diseases. Evidence that the mathematical model is well-calibrated improves confidence that the model provides a realistic picture of the consequences of health policy decisions. To make informed decisions, Policymakers need information about uncertainty: i.e., what is the range of likely outcomes (rather than just a single prediction). Thus, modellers should also strive to provide accurate measurements of uncertainty, both for their model parameters and for their predictions. This systematic review provides an overview of the methods used to calibrate individual-based models (IBMs) of the spread of HIV, malaria, and tuberculosis. We found that less than half of the reviewed articles used reproducible, non-subjective calibration methods. For the remaining articles, the method could either not be identified or was described as an informal, non-reproducible method. Only one-third of the articles obtained estimates of parameter uncertainty. We conclude that the adoption of better-documented, algorithmic calibration methods could improve both reproducibility and the quality of inference in model-based epidemiology.
Notes: Hazelbag, CM (corresponding author), Stellenbosch Univ, South African DSI NRF Ctr Excellence Epidemiol Mo, Stellenbosch, South Africa.
marijnhazelbag@sun.ac.za
Other: Hazelbag, CM (corresponding author), Stellenbosch Univ, South African DSI NRF Ctr Excellence Epidemiol Mo, Stellenbosch, South Africa. marijnhazelbag@sun.ac.za
Keywords: Simulation-Models;Uncertainty Analysis;Economic-Evaluation;Inference;Strategies;Care
Document URI: http://hdl.handle.net/1942/31812
ISSN: 1553-734X
e-ISSN: 1553-7358
DOI: 10.1371/journal.pcbi.1007893
ISI #: WOS:000538053200020
Datasets of the publication: 10.5061/dryad.8sf7m0cj6
Datasets of the publication: https://datadryad.org/stash/dataset/doi:10.5061/dryad.8sf7m0cj6
Rights: 2020 Hazelbag et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Category: A1
Type: Journal Contribution
Validations: ecoom 2021
Appears in Collections:Research publications

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