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Linear and Machine Learning modelling for spatiotemporal disease predictions: Force-of-Infection of Chagas disease

BACKGROUND: Chagas disease is a long-lasting disease with a prolonged asymptomatic period. Cumulative indices of infection such as prevalence do not shed light on the current epidemiological situation, as they integrate infection over long periods. Instead, metrics such as the Force-of-Infection (Fo...

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Autores principales: Ledien, Julia, Cucunubá, Zulma M., Parra-Henao, Gabriel, Rodríguez-Monguí, Eliana, Dobson, Andrew P., Adamo, Susana B., Basáñez, María-Gloria, Nouvellet, Pierre
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9337653/
https://www.ncbi.nlm.nih.gov/pubmed/35853042
http://dx.doi.org/10.1371/journal.pntd.0010594
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author Ledien, Julia
Cucunubá, Zulma M.
Parra-Henao, Gabriel
Rodríguez-Monguí, Eliana
Dobson, Andrew P.
Adamo, Susana B.
Basáñez, María-Gloria
Nouvellet, Pierre
author_facet Ledien, Julia
Cucunubá, Zulma M.
Parra-Henao, Gabriel
Rodríguez-Monguí, Eliana
Dobson, Andrew P.
Adamo, Susana B.
Basáñez, María-Gloria
Nouvellet, Pierre
author_sort Ledien, Julia
collection PubMed
description BACKGROUND: Chagas disease is a long-lasting disease with a prolonged asymptomatic period. Cumulative indices of infection such as prevalence do not shed light on the current epidemiological situation, as they integrate infection over long periods. Instead, metrics such as the Force-of-Infection (FoI) provide information about the rate at which susceptible people become infected and permit sharper inference about temporal changes in infection rates. FoI is estimated by fitting (catalytic) models to available age-stratified serological (ground-truth) data. Predictive FoI modelling frameworks are then used to understand spatial and temporal trends indicative of heterogeneity in transmission and changes effected by control interventions. Ideally, these frameworks should be able to propagate uncertainty and handle spatiotemporal issues. METHODOLOGY/PRINCIPAL FINDINGS: We compare three methods in their ability to propagate uncertainty and provide reliable estimates of FoI for Chagas disease in Colombia as a case study: two Machine Learning (ML) methods (Boosted Regression Trees (BRT) and Random Forest (RF)), and a Linear Model (LM) framework that we had developed previously. Our analyses show consistent results between the three modelling methods under scrutiny. The predictors (explanatory variables) selected, as well as the location of the most uncertain FoI values, were coherent across frameworks. RF was faster than BRT and LM, and provided estimates with fewer extreme values when extrapolating to areas where no ground-truth data were available. However, BRT and RF were less efficient at propagating uncertainty. CONCLUSIONS/SIGNIFICANCE: The choice of FoI predictive models will depend on the objectives of the analysis. ML methods will help characterise the mean behaviour of the estimates, while LM will provide insight into the uncertainty surrounding such estimates. Our approach can be extended to the modelling of FoI patterns in other Chagas disease-endemic countries and to other infectious diseases for which serosurveys are regularly conducted for surveillance.
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spelling pubmed-93376532022-07-30 Linear and Machine Learning modelling for spatiotemporal disease predictions: Force-of-Infection of Chagas disease Ledien, Julia Cucunubá, Zulma M. Parra-Henao, Gabriel Rodríguez-Monguí, Eliana Dobson, Andrew P. Adamo, Susana B. Basáñez, María-Gloria Nouvellet, Pierre PLoS Negl Trop Dis Research Article BACKGROUND: Chagas disease is a long-lasting disease with a prolonged asymptomatic period. Cumulative indices of infection such as prevalence do not shed light on the current epidemiological situation, as they integrate infection over long periods. Instead, metrics such as the Force-of-Infection (FoI) provide information about the rate at which susceptible people become infected and permit sharper inference about temporal changes in infection rates. FoI is estimated by fitting (catalytic) models to available age-stratified serological (ground-truth) data. Predictive FoI modelling frameworks are then used to understand spatial and temporal trends indicative of heterogeneity in transmission and changes effected by control interventions. Ideally, these frameworks should be able to propagate uncertainty and handle spatiotemporal issues. METHODOLOGY/PRINCIPAL FINDINGS: We compare three methods in their ability to propagate uncertainty and provide reliable estimates of FoI for Chagas disease in Colombia as a case study: two Machine Learning (ML) methods (Boosted Regression Trees (BRT) and Random Forest (RF)), and a Linear Model (LM) framework that we had developed previously. Our analyses show consistent results between the three modelling methods under scrutiny. The predictors (explanatory variables) selected, as well as the location of the most uncertain FoI values, were coherent across frameworks. RF was faster than BRT and LM, and provided estimates with fewer extreme values when extrapolating to areas where no ground-truth data were available. However, BRT and RF were less efficient at propagating uncertainty. CONCLUSIONS/SIGNIFICANCE: The choice of FoI predictive models will depend on the objectives of the analysis. ML methods will help characterise the mean behaviour of the estimates, while LM will provide insight into the uncertainty surrounding such estimates. Our approach can be extended to the modelling of FoI patterns in other Chagas disease-endemic countries and to other infectious diseases for which serosurveys are regularly conducted for surveillance. Public Library of Science 2022-07-19 /pmc/articles/PMC9337653/ /pubmed/35853042 http://dx.doi.org/10.1371/journal.pntd.0010594 Text en © 2022 Ledien et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Ledien, Julia
Cucunubá, Zulma M.
Parra-Henao, Gabriel
Rodríguez-Monguí, Eliana
Dobson, Andrew P.
Adamo, Susana B.
Basáñez, María-Gloria
Nouvellet, Pierre
Linear and Machine Learning modelling for spatiotemporal disease predictions: Force-of-Infection of Chagas disease
title Linear and Machine Learning modelling for spatiotemporal disease predictions: Force-of-Infection of Chagas disease
title_full Linear and Machine Learning modelling for spatiotemporal disease predictions: Force-of-Infection of Chagas disease
title_fullStr Linear and Machine Learning modelling for spatiotemporal disease predictions: Force-of-Infection of Chagas disease
title_full_unstemmed Linear and Machine Learning modelling for spatiotemporal disease predictions: Force-of-Infection of Chagas disease
title_short Linear and Machine Learning modelling for spatiotemporal disease predictions: Force-of-Infection of Chagas disease
title_sort linear and machine learning modelling for spatiotemporal disease predictions: force-of-infection of chagas disease
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9337653/
https://www.ncbi.nlm.nih.gov/pubmed/35853042
http://dx.doi.org/10.1371/journal.pntd.0010594
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