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Parasite associations predict infection risk: incorporating co-infections in predictive models for neglected tropical diseases

BACKGROUND: Schistosomiasis and infection by soil-transmitted helminths are some of the world’s most prevalent neglected tropical diseases. Infection by more than one parasite (co-infection) is common and can contribute to clinical morbidity in children. Geostatistical analyses of parasite infection...

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Autores principales: Clark, Nicholas J., Owada, Kei, Ruberanziza, Eugene, Ortu, Giuseppina, Umulisa, Irenee, Bayisenge, Ursin, Mbonigaba, Jean Bosco, Mucaca, Jean Bosco, Lancaster, Warren, Fenwick, Alan, Soares Magalhães, Ricardo J., Mbituyumuremyi, Aimable
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7077138/
https://www.ncbi.nlm.nih.gov/pubmed/32178706
http://dx.doi.org/10.1186/s13071-020-04016-2
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author Clark, Nicholas J.
Owada, Kei
Ruberanziza, Eugene
Ortu, Giuseppina
Umulisa, Irenee
Bayisenge, Ursin
Mbonigaba, Jean Bosco
Mucaca, Jean Bosco
Lancaster, Warren
Fenwick, Alan
Soares Magalhães, Ricardo J.
Mbituyumuremyi, Aimable
author_facet Clark, Nicholas J.
Owada, Kei
Ruberanziza, Eugene
Ortu, Giuseppina
Umulisa, Irenee
Bayisenge, Ursin
Mbonigaba, Jean Bosco
Mucaca, Jean Bosco
Lancaster, Warren
Fenwick, Alan
Soares Magalhães, Ricardo J.
Mbituyumuremyi, Aimable
author_sort Clark, Nicholas J.
collection PubMed
description BACKGROUND: Schistosomiasis and infection by soil-transmitted helminths are some of the world’s most prevalent neglected tropical diseases. Infection by more than one parasite (co-infection) is common and can contribute to clinical morbidity in children. Geostatistical analyses of parasite infection data are key for developing mass drug administration strategies, yet most methods ignore co-infections when estimating risk. Infection status for multiple parasites can act as a useful proxy for data-poor individual-level or environmental risk factors while avoiding regression dilution bias. Conditional random fields (CRF) is a multivariate graphical network method that opens new doors in parasite risk mapping by (i) predicting co-infections with high accuracy; (ii) isolating associations among parasites; and (iii) quantifying how these associations change across landscapes. METHODS: We built a spatial CRF to estimate infection risks for Ascaris lumbricoides, Trichuris trichiura, hookworms (Ancylostoma duodenale and Necator americanus) and Schistosoma mansoni using data from a national survey of Rwandan schoolchildren. We used an ensemble learning approach to generate spatial predictions by simulating from the CRF’s posterior distribution with a multivariate boosted regression tree that captured non-linear relationships between predictors and covariance in infection risks. This CRF ensemble was compared against single parasite gradient boosted machines to assess each model’s performance and prediction uncertainty. RESULTS: Parasite co-infections were common, with 19.57% of children infected with at least two parasites. The CRF ensemble achieved higher predictive power than single-parasite models by improving estimates of co-infection prevalence at the individual level and classifying schools into World Health Organization treatment categories with greater accuracy. The CRF uncovered important environmental and demographic predictors of parasite infection probabilities. Yet even after capturing demographic and environmental risk factors, the presences or absences of other parasites were strong predictors of individual-level infection risk. Spatial predictions delineated high-risk regions in need of anthelminthic treatment interventions, including areas with higher than expected co-infection prevalence. CONCLUSIONS: Monitoring studies routinely screen for multiple parasites, yet statistical models generally ignore this multivariate data when assessing risk factors and designing treatment guidelines. Multivariate approaches can be instrumental in the global effort to reduce and eventually eliminate neglected helminth infections in developing countries. [Image: see text]
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spelling pubmed-70771382020-03-19 Parasite associations predict infection risk: incorporating co-infections in predictive models for neglected tropical diseases Clark, Nicholas J. Owada, Kei Ruberanziza, Eugene Ortu, Giuseppina Umulisa, Irenee Bayisenge, Ursin Mbonigaba, Jean Bosco Mucaca, Jean Bosco Lancaster, Warren Fenwick, Alan Soares Magalhães, Ricardo J. Mbituyumuremyi, Aimable Parasit Vectors Research BACKGROUND: Schistosomiasis and infection by soil-transmitted helminths are some of the world’s most prevalent neglected tropical diseases. Infection by more than one parasite (co-infection) is common and can contribute to clinical morbidity in children. Geostatistical analyses of parasite infection data are key for developing mass drug administration strategies, yet most methods ignore co-infections when estimating risk. Infection status for multiple parasites can act as a useful proxy for data-poor individual-level or environmental risk factors while avoiding regression dilution bias. Conditional random fields (CRF) is a multivariate graphical network method that opens new doors in parasite risk mapping by (i) predicting co-infections with high accuracy; (ii) isolating associations among parasites; and (iii) quantifying how these associations change across landscapes. METHODS: We built a spatial CRF to estimate infection risks for Ascaris lumbricoides, Trichuris trichiura, hookworms (Ancylostoma duodenale and Necator americanus) and Schistosoma mansoni using data from a national survey of Rwandan schoolchildren. We used an ensemble learning approach to generate spatial predictions by simulating from the CRF’s posterior distribution with a multivariate boosted regression tree that captured non-linear relationships between predictors and covariance in infection risks. This CRF ensemble was compared against single parasite gradient boosted machines to assess each model’s performance and prediction uncertainty. RESULTS: Parasite co-infections were common, with 19.57% of children infected with at least two parasites. The CRF ensemble achieved higher predictive power than single-parasite models by improving estimates of co-infection prevalence at the individual level and classifying schools into World Health Organization treatment categories with greater accuracy. The CRF uncovered important environmental and demographic predictors of parasite infection probabilities. Yet even after capturing demographic and environmental risk factors, the presences or absences of other parasites were strong predictors of individual-level infection risk. Spatial predictions delineated high-risk regions in need of anthelminthic treatment interventions, including areas with higher than expected co-infection prevalence. CONCLUSIONS: Monitoring studies routinely screen for multiple parasites, yet statistical models generally ignore this multivariate data when assessing risk factors and designing treatment guidelines. Multivariate approaches can be instrumental in the global effort to reduce and eventually eliminate neglected helminth infections in developing countries. [Image: see text] BioMed Central 2020-03-16 /pmc/articles/PMC7077138/ /pubmed/32178706 http://dx.doi.org/10.1186/s13071-020-04016-2 Text en © The Author(s) 2020 Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.
spellingShingle Research
Clark, Nicholas J.
Owada, Kei
Ruberanziza, Eugene
Ortu, Giuseppina
Umulisa, Irenee
Bayisenge, Ursin
Mbonigaba, Jean Bosco
Mucaca, Jean Bosco
Lancaster, Warren
Fenwick, Alan
Soares Magalhães, Ricardo J.
Mbituyumuremyi, Aimable
Parasite associations predict infection risk: incorporating co-infections in predictive models for neglected tropical diseases
title Parasite associations predict infection risk: incorporating co-infections in predictive models for neglected tropical diseases
title_full Parasite associations predict infection risk: incorporating co-infections in predictive models for neglected tropical diseases
title_fullStr Parasite associations predict infection risk: incorporating co-infections in predictive models for neglected tropical diseases
title_full_unstemmed Parasite associations predict infection risk: incorporating co-infections in predictive models for neglected tropical diseases
title_short Parasite associations predict infection risk: incorporating co-infections in predictive models for neglected tropical diseases
title_sort parasite associations predict infection risk: incorporating co-infections in predictive models for neglected tropical diseases
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7077138/
https://www.ncbi.nlm.nih.gov/pubmed/32178706
http://dx.doi.org/10.1186/s13071-020-04016-2
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