Bayesian risk maps for Schistosoma mansoni and hookworm mono-infections in a setting where both parasites co-exist

There is growing interest in the use of Bayesian geostatistical models for predicting the spatial distribution of parasitic infections, including hookworm, <em>Schistosoma mansoni</em> and co-infections with both parasites. The aim of this study was to predict the spatial distribution of...

Full description

Bibliographic Details
Main Authors: Giovanna Raso, Penelope Vounatsou, Donald P. McManus, Jürg Utzinger
Format: Article
Language:English
Published: PAGEPress Publications 2007-11-01
Series:Geospatial Health
Subjects:
Online Access:http://www.geospatialhealth.net/index.php/gh/article/view/257
id doaj-97328603916d4cfa82ee4d8f49e0a446
record_format Article
spelling doaj-97328603916d4cfa82ee4d8f49e0a4462020-11-25T03:35:49ZengPAGEPress PublicationsGeospatial Health1827-19871970-70962007-11-0121859610.4081/gh.2007.257257Bayesian risk maps for Schistosoma mansoni and hookworm mono-infections in a setting where both parasites co-existGiovanna Raso0Penelope Vounatsou1Donald P. McManus2Jürg Utzinger3Division of Epidemiology and Social Medicine, School of Population Health, The University of Queensland, Brisbane; Molecular Parasitology Laboratory, The Queensland Institute of Medical Research, BrisbaneDepartment of Public Health and Epidemiology, Swiss Tropical Institute, BaselMolecular Parasitology Laboratory, The Queensland Institute of Medical Research, BrisbaneDepartment of Public Health and Epidemiology, Swiss Tropical Institute, BaselThere is growing interest in the use of Bayesian geostatistical models for predicting the spatial distribution of parasitic infections, including hookworm, <em>Schistosoma mansoni</em> and co-infections with both parasites. The aim of this study was to predict the spatial distribution of mono-infections with either hookworm or <em>S. mansoni</em> in a setting where both parasites co-exist. School-based cross-sectional parasitological and questionnaire surveys were carried out in 57 rural schools in the Man region, western Côte d’Ivoire. A single stool specimen was obtained from each schoolchild attending grades 3-5. Stool specimens were processed by the Kato-Katz technique and an ether concentration method and examined for the presence of hookworm and <em>S. mansoni</em> eggs. The combined results from the two diagnostic approaches were considered for the infection status of each child. Demographic data (i.e. age and sex) were obtained from readily available school registries. Each child’s socio-economic status was estimated, using the questionnaire data following a household-based asset approach. Environmental data were extracted from satellite imagery. The different data sources were incorporated into a geographical information system. Finally, a Bayesian spatial multinomial regression model was constructed and the spatial patterns of <em>S. mansoni</em> and hookworm mono-infections were investigated using Bayesian kriging. Our approach facilitated the production of smooth risk maps for hookworm and <em>S. mansoni</em> mono-infections that can be utilized for targeting control interventions. We argue that in settings where <em>S. mansoni</em> and hookworm co-exist and control efforts are under way, there is a need for both mono- and co-infection risk maps to enhance the cost-effectiveness of control programmes.http://www.geospatialhealth.net/index.php/gh/article/view/257Hookworm, schistosomiasis, Schistosoma mansoni, geographical information system, risk mapping, coinfection, Bayesian geostatistics, Côte d’Ivoire.
collection DOAJ
language English
format Article
sources DOAJ
author Giovanna Raso
Penelope Vounatsou
Donald P. McManus
Jürg Utzinger
spellingShingle Giovanna Raso
Penelope Vounatsou
Donald P. McManus
Jürg Utzinger
Bayesian risk maps for Schistosoma mansoni and hookworm mono-infections in a setting where both parasites co-exist
Geospatial Health
Hookworm, schistosomiasis, Schistosoma mansoni, geographical information system, risk mapping, coinfection, Bayesian geostatistics, Côte d’Ivoire.
author_facet Giovanna Raso
Penelope Vounatsou
Donald P. McManus
Jürg Utzinger
author_sort Giovanna Raso
title Bayesian risk maps for Schistosoma mansoni and hookworm mono-infections in a setting where both parasites co-exist
title_short Bayesian risk maps for Schistosoma mansoni and hookworm mono-infections in a setting where both parasites co-exist
title_full Bayesian risk maps for Schistosoma mansoni and hookworm mono-infections in a setting where both parasites co-exist
title_fullStr Bayesian risk maps for Schistosoma mansoni and hookworm mono-infections in a setting where both parasites co-exist
title_full_unstemmed Bayesian risk maps for Schistosoma mansoni and hookworm mono-infections in a setting where both parasites co-exist
title_sort bayesian risk maps for schistosoma mansoni and hookworm mono-infections in a setting where both parasites co-exist
publisher PAGEPress Publications
series Geospatial Health
issn 1827-1987
1970-7096
publishDate 2007-11-01
description There is growing interest in the use of Bayesian geostatistical models for predicting the spatial distribution of parasitic infections, including hookworm, <em>Schistosoma mansoni</em> and co-infections with both parasites. The aim of this study was to predict the spatial distribution of mono-infections with either hookworm or <em>S. mansoni</em> in a setting where both parasites co-exist. School-based cross-sectional parasitological and questionnaire surveys were carried out in 57 rural schools in the Man region, western Côte d’Ivoire. A single stool specimen was obtained from each schoolchild attending grades 3-5. Stool specimens were processed by the Kato-Katz technique and an ether concentration method and examined for the presence of hookworm and <em>S. mansoni</em> eggs. The combined results from the two diagnostic approaches were considered for the infection status of each child. Demographic data (i.e. age and sex) were obtained from readily available school registries. Each child’s socio-economic status was estimated, using the questionnaire data following a household-based asset approach. Environmental data were extracted from satellite imagery. The different data sources were incorporated into a geographical information system. Finally, a Bayesian spatial multinomial regression model was constructed and the spatial patterns of <em>S. mansoni</em> and hookworm mono-infections were investigated using Bayesian kriging. Our approach facilitated the production of smooth risk maps for hookworm and <em>S. mansoni</em> mono-infections that can be utilized for targeting control interventions. We argue that in settings where <em>S. mansoni</em> and hookworm co-exist and control efforts are under way, there is a need for both mono- and co-infection risk maps to enhance the cost-effectiveness of control programmes.
topic Hookworm, schistosomiasis, Schistosoma mansoni, geographical information system, risk mapping, coinfection, Bayesian geostatistics, Côte d’Ivoire.
url http://www.geospatialhealth.net/index.php/gh/article/view/257
work_keys_str_mv AT giovannaraso bayesianriskmapsforschistosomamansoniandhookwormmonoinfectionsinasettingwherebothparasitescoexist
AT penelopevounatsou bayesianriskmapsforschistosomamansoniandhookwormmonoinfectionsinasettingwherebothparasitescoexist
AT donaldpmcmanus bayesianriskmapsforschistosomamansoniandhookwormmonoinfectionsinasettingwherebothparasitescoexist
AT jurgutzinger bayesianriskmapsforschistosomamansoniandhookwormmonoinfectionsinasettingwherebothparasitescoexist
_version_ 1724552986889289728