Spatial modelling of soil-transmitted helminth infections in Kenya: a disease control planning tool.

Implementation of control of parasitic diseases requires accurate, contemporary maps that provide intervention recommendations at policy-relevant spatial scales. To guide control of soil transmitted helminths (STHs), maps are required of the combined prevalence of infection, indicating where this pr...

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Main Authors: Rachel L Pullan, Peter W Gething, Jennifer L Smith, Charles S Mwandawiro, Hugh J W Sturrock, Caroline W Gitonga, Simon I Hay, Simon Brooker
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-02-01
Series:PLoS Neglected Tropical Diseases
Online Access:http://europepmc.org/articles/PMC3035671?pdf=render
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spelling doaj-de8e54c4113d4969bd8bd2069c4cc8c12020-11-25T02:33:24ZengPublic Library of Science (PLoS)PLoS Neglected Tropical Diseases1935-27271935-27352011-02-0152e95810.1371/journal.pntd.0000958Spatial modelling of soil-transmitted helminth infections in Kenya: a disease control planning tool.Rachel L PullanPeter W GethingJennifer L SmithCharles S MwandawiroHugh J W SturrockCaroline W GitongaSimon I HaySimon BrookerImplementation of control of parasitic diseases requires accurate, contemporary maps that provide intervention recommendations at policy-relevant spatial scales. To guide control of soil transmitted helminths (STHs), maps are required of the combined prevalence of infection, indicating where this prevalence exceeds an intervention threshold of 20%. Here we present a new approach for mapping the observed prevalence of STHs, using the example of Kenya in 2009.Observed prevalence data for hookworm, Ascaris lumbricoides and Trichuris trichiura were assembled for 106,370 individuals from 945 cross-sectional surveys undertaken between 1974 and 2009. Ecological and climatic covariates were extracted from high-resolution satellite data and matched to survey locations. Bayesian space-time geostatistical models were developed for each species, and were used to interpolate the probability that infection prevalence exceeded the 20% threshold across the country for both 1989 and 2009. Maps for each species were integrated to estimate combined STH prevalence using the law of total probability and incorporating a correction factor to adjust for associations between species. Population census data were combined with risk models and projected to estimate the population at risk and requiring treatment in 2009. In most areas for 2009, there was high certainty that endemicity was below the 20% threshold, with areas of endemicity ≥ 20% located around the shores of Lake Victoria and on the coast. Comparison of the predicted distributions for 1989 and 2009 show how observed STH prevalence has gradually decreased over time. The model estimated that a total of 2.8 million school-age children live in districts which warrant mass treatment.Bayesian space-time geostatistical models can be used to reliably estimate the combined observed prevalence of STH and suggest that a quarter of Kenya's school-aged children live in areas of high prevalence and warrant mass treatment. As control is successful in reducing infection levels, updated models can be used to refine decision making in helminth control.http://europepmc.org/articles/PMC3035671?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Rachel L Pullan
Peter W Gething
Jennifer L Smith
Charles S Mwandawiro
Hugh J W Sturrock
Caroline W Gitonga
Simon I Hay
Simon Brooker
spellingShingle Rachel L Pullan
Peter W Gething
Jennifer L Smith
Charles S Mwandawiro
Hugh J W Sturrock
Caroline W Gitonga
Simon I Hay
Simon Brooker
Spatial modelling of soil-transmitted helminth infections in Kenya: a disease control planning tool.
PLoS Neglected Tropical Diseases
author_facet Rachel L Pullan
Peter W Gething
Jennifer L Smith
Charles S Mwandawiro
Hugh J W Sturrock
Caroline W Gitonga
Simon I Hay
Simon Brooker
author_sort Rachel L Pullan
title Spatial modelling of soil-transmitted helminth infections in Kenya: a disease control planning tool.
title_short Spatial modelling of soil-transmitted helminth infections in Kenya: a disease control planning tool.
title_full Spatial modelling of soil-transmitted helminth infections in Kenya: a disease control planning tool.
title_fullStr Spatial modelling of soil-transmitted helminth infections in Kenya: a disease control planning tool.
title_full_unstemmed Spatial modelling of soil-transmitted helminth infections in Kenya: a disease control planning tool.
title_sort spatial modelling of soil-transmitted helminth infections in kenya: a disease control planning tool.
publisher Public Library of Science (PLoS)
series PLoS Neglected Tropical Diseases
issn 1935-2727
1935-2735
publishDate 2011-02-01
description Implementation of control of parasitic diseases requires accurate, contemporary maps that provide intervention recommendations at policy-relevant spatial scales. To guide control of soil transmitted helminths (STHs), maps are required of the combined prevalence of infection, indicating where this prevalence exceeds an intervention threshold of 20%. Here we present a new approach for mapping the observed prevalence of STHs, using the example of Kenya in 2009.Observed prevalence data for hookworm, Ascaris lumbricoides and Trichuris trichiura were assembled for 106,370 individuals from 945 cross-sectional surveys undertaken between 1974 and 2009. Ecological and climatic covariates were extracted from high-resolution satellite data and matched to survey locations. Bayesian space-time geostatistical models were developed for each species, and were used to interpolate the probability that infection prevalence exceeded the 20% threshold across the country for both 1989 and 2009. Maps for each species were integrated to estimate combined STH prevalence using the law of total probability and incorporating a correction factor to adjust for associations between species. Population census data were combined with risk models and projected to estimate the population at risk and requiring treatment in 2009. In most areas for 2009, there was high certainty that endemicity was below the 20% threshold, with areas of endemicity ≥ 20% located around the shores of Lake Victoria and on the coast. Comparison of the predicted distributions for 1989 and 2009 show how observed STH prevalence has gradually decreased over time. The model estimated that a total of 2.8 million school-age children live in districts which warrant mass treatment.Bayesian space-time geostatistical models can be used to reliably estimate the combined observed prevalence of STH and suggest that a quarter of Kenya's school-aged children live in areas of high prevalence and warrant mass treatment. As control is successful in reducing infection levels, updated models can be used to refine decision making in helminth control.
url http://europepmc.org/articles/PMC3035671?pdf=render
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