Spatially explicit Schistosoma infection risk in eastern Africa using Bayesian geostatistical modelling

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Standard

Spatially explicit Schistosoma infection risk in eastern Africa using Bayesian geostatistical modelling. / Schur, Nadine; Hürlimann, Eveline; Stensgaard, Anna-Sofie; Chimfwembe, Kingford; Mushinge, Gabriel; Simoonga, Christopher; Kabatereine, Narcis B; Kristensen, Thomas K.; Utzinger, Jürg; Vounatsou, Penelope.

I: Acta Tropica, Bind 128, Nr. 2, 2013, s. 365-377.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Schur, N, Hürlimann, E, Stensgaard, A-S, Chimfwembe, K, Mushinge, G, Simoonga, C, Kabatereine, NB, Kristensen, TK, Utzinger, J & Vounatsou, P 2013, 'Spatially explicit Schistosoma infection risk in eastern Africa using Bayesian geostatistical modelling', Acta Tropica, bind 128, nr. 2, s. 365-377. https://doi.org/10.1016/j.actatropica.2011.10.006

APA

Schur, N., Hürlimann, E., Stensgaard, A-S., Chimfwembe, K., Mushinge, G., Simoonga, C., Kabatereine, N. B., Kristensen, T. K., Utzinger, J., & Vounatsou, P. (2013). Spatially explicit Schistosoma infection risk in eastern Africa using Bayesian geostatistical modelling. Acta Tropica, 128(2), 365-377. https://doi.org/10.1016/j.actatropica.2011.10.006

Vancouver

Schur N, Hürlimann E, Stensgaard A-S, Chimfwembe K, Mushinge G, Simoonga C o.a. Spatially explicit Schistosoma infection risk in eastern Africa using Bayesian geostatistical modelling. Acta Tropica. 2013;128(2):365-377. https://doi.org/10.1016/j.actatropica.2011.10.006

Author

Schur, Nadine ; Hürlimann, Eveline ; Stensgaard, Anna-Sofie ; Chimfwembe, Kingford ; Mushinge, Gabriel ; Simoonga, Christopher ; Kabatereine, Narcis B ; Kristensen, Thomas K. ; Utzinger, Jürg ; Vounatsou, Penelope. / Spatially explicit Schistosoma infection risk in eastern Africa using Bayesian geostatistical modelling. I: Acta Tropica. 2013 ; Bind 128, Nr. 2. s. 365-377.

Bibtex

@article{de2b16a7e04a469ebf31bccc86ad8320,
title = "Spatially explicit Schistosoma infection risk in eastern Africa using Bayesian geostatistical modelling",
abstract = "Schistosomiasis remains one of the most prevalent parasitic diseases in the tropics and subtropics, but current statistics are outdated due to demographic and ecological transformations and ongoing control efforts. Reliable risk estimates are important to plan and evaluate interventions in a spatially explicit and cost-effective manner. We analysed a large ensemble of georeferenced survey data derived from an open-access neglected tropical diseases database to create smooth empirical prevalence maps for Schistosoma mansoni and Schistosoma haematobium for a total of 13 countries of eastern Africa. Bayesian geostatistical models based on climatic and other environmental data were used to account for potential spatial clustering in spatially structured exposures. Geostatistical variable selection was employed to reduce the set of covariates. Alignment factors were implemented to combine surveys on different age-groups and to acquire separate estimates for individuals aged ≤20 years and entire communities. Prevalence estimates were combined with population statistics to obtain country-specific numbers of Schistosoma infections. We estimate that 122 million individuals in eastern Africa are currently infected with either S. mansoni, or S. haematobium, or both species concurrently. Country-specific population-adjusted prevalence estimates range between 12.9% (Uganda) and 34.5% (Mozambique) for S. mansoni and between 11.9% (Djibouti) and 40.9% (Mozambique) for S. haematobium. Our models revealed that infection risk in Burundi, Eritrea, Ethiopia, Kenya, Rwanda, Somalia and Sudan might be considerably higher than previously reported, while in Mozambique and Tanzania, the risk might be lower than current estimates suggest. Our empirical, large-scale, high-resolution infection risk estimates for S. mansoni and S. haematobium in eastern Africa can guide future control interventions and provide a benchmark for subsequent monitoring and evaluation activities.",
author = "Nadine Schur and Eveline H{\"u}rlimann and Anna-Sofie Stensgaard and Kingford Chimfwembe and Gabriel Mushinge and Christopher Simoonga and Kabatereine, {Narcis B} and Kristensen, {Thomas K.} and J{\"u}rg Utzinger and Penelope Vounatsou",
note = "Copyright {\textcopyright} 2011 Elsevier B.V. All rights reserved.",
year = "2013",
doi = "10.1016/j.actatropica.2011.10.006",
language = "English",
volume = "128",
pages = "365--377",
journal = "Acta Tropica",
issn = "0001-706X",
publisher = "Elsevier",
number = "2",

}

RIS

TY - JOUR

T1 - Spatially explicit Schistosoma infection risk in eastern Africa using Bayesian geostatistical modelling

AU - Schur, Nadine

AU - Hürlimann, Eveline

AU - Stensgaard, Anna-Sofie

AU - Chimfwembe, Kingford

AU - Mushinge, Gabriel

AU - Simoonga, Christopher

AU - Kabatereine, Narcis B

AU - Kristensen, Thomas K.

AU - Utzinger, Jürg

AU - Vounatsou, Penelope

N1 - Copyright © 2011 Elsevier B.V. All rights reserved.

PY - 2013

Y1 - 2013

N2 - Schistosomiasis remains one of the most prevalent parasitic diseases in the tropics and subtropics, but current statistics are outdated due to demographic and ecological transformations and ongoing control efforts. Reliable risk estimates are important to plan and evaluate interventions in a spatially explicit and cost-effective manner. We analysed a large ensemble of georeferenced survey data derived from an open-access neglected tropical diseases database to create smooth empirical prevalence maps for Schistosoma mansoni and Schistosoma haematobium for a total of 13 countries of eastern Africa. Bayesian geostatistical models based on climatic and other environmental data were used to account for potential spatial clustering in spatially structured exposures. Geostatistical variable selection was employed to reduce the set of covariates. Alignment factors were implemented to combine surveys on different age-groups and to acquire separate estimates for individuals aged ≤20 years and entire communities. Prevalence estimates were combined with population statistics to obtain country-specific numbers of Schistosoma infections. We estimate that 122 million individuals in eastern Africa are currently infected with either S. mansoni, or S. haematobium, or both species concurrently. Country-specific population-adjusted prevalence estimates range between 12.9% (Uganda) and 34.5% (Mozambique) for S. mansoni and between 11.9% (Djibouti) and 40.9% (Mozambique) for S. haematobium. Our models revealed that infection risk in Burundi, Eritrea, Ethiopia, Kenya, Rwanda, Somalia and Sudan might be considerably higher than previously reported, while in Mozambique and Tanzania, the risk might be lower than current estimates suggest. Our empirical, large-scale, high-resolution infection risk estimates for S. mansoni and S. haematobium in eastern Africa can guide future control interventions and provide a benchmark for subsequent monitoring and evaluation activities.

AB - Schistosomiasis remains one of the most prevalent parasitic diseases in the tropics and subtropics, but current statistics are outdated due to demographic and ecological transformations and ongoing control efforts. Reliable risk estimates are important to plan and evaluate interventions in a spatially explicit and cost-effective manner. We analysed a large ensemble of georeferenced survey data derived from an open-access neglected tropical diseases database to create smooth empirical prevalence maps for Schistosoma mansoni and Schistosoma haematobium for a total of 13 countries of eastern Africa. Bayesian geostatistical models based on climatic and other environmental data were used to account for potential spatial clustering in spatially structured exposures. Geostatistical variable selection was employed to reduce the set of covariates. Alignment factors were implemented to combine surveys on different age-groups and to acquire separate estimates for individuals aged ≤20 years and entire communities. Prevalence estimates were combined with population statistics to obtain country-specific numbers of Schistosoma infections. We estimate that 122 million individuals in eastern Africa are currently infected with either S. mansoni, or S. haematobium, or both species concurrently. Country-specific population-adjusted prevalence estimates range between 12.9% (Uganda) and 34.5% (Mozambique) for S. mansoni and between 11.9% (Djibouti) and 40.9% (Mozambique) for S. haematobium. Our models revealed that infection risk in Burundi, Eritrea, Ethiopia, Kenya, Rwanda, Somalia and Sudan might be considerably higher than previously reported, while in Mozambique and Tanzania, the risk might be lower than current estimates suggest. Our empirical, large-scale, high-resolution infection risk estimates for S. mansoni and S. haematobium in eastern Africa can guide future control interventions and provide a benchmark for subsequent monitoring and evaluation activities.

U2 - 10.1016/j.actatropica.2011.10.006

DO - 10.1016/j.actatropica.2011.10.006

M3 - Journal article

C2 - 22019933

VL - 128

SP - 365

EP - 377

JO - Acta Tropica

JF - Acta Tropica

SN - 0001-706X

IS - 2

ER -

ID: 72103953