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Model-Based Geostatistical Methods Enable Efficient Design and Analysis of Prevalence Surveys for Soil-Transmitted Helminth Infection and Other Neglected Tropical Diseases

Maps of the geographical variation in prevalence play an important role in large-scale programs for the control of neglected tropical diseases. Precontrol mapping is needed to establish the appropriate control intervention in each area of the country in question. Mapping is also needed postintervent...

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Autores principales: Johnson, Olatunji, Fronterre, Claudio, Amoah, Benjamin, Montresor, Antonio, Giorgi, Emanuele, Midzi, Nicholas, Mutsaka-Makuvaza, Masceline Jenipher, Kargbo-Labor, Ibrahim, Hodges, Mary H, Zhang, Yaobi, Okoyo, Collins, Mwandawiro, Charles, Minnery, Mark, Diggle, Peter J
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8201574/
https://www.ncbi.nlm.nih.gov/pubmed/33905476
http://dx.doi.org/10.1093/cid/ciab192
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author Johnson, Olatunji
Fronterre, Claudio
Amoah, Benjamin
Montresor, Antonio
Giorgi, Emanuele
Midzi, Nicholas
Mutsaka-Makuvaza, Masceline Jenipher
Kargbo-Labor, Ibrahim
Hodges, Mary H
Zhang, Yaobi
Okoyo, Collins
Mwandawiro, Charles
Minnery, Mark
Diggle, Peter J
author_facet Johnson, Olatunji
Fronterre, Claudio
Amoah, Benjamin
Montresor, Antonio
Giorgi, Emanuele
Midzi, Nicholas
Mutsaka-Makuvaza, Masceline Jenipher
Kargbo-Labor, Ibrahim
Hodges, Mary H
Zhang, Yaobi
Okoyo, Collins
Mwandawiro, Charles
Minnery, Mark
Diggle, Peter J
author_sort Johnson, Olatunji
collection PubMed
description Maps of the geographical variation in prevalence play an important role in large-scale programs for the control of neglected tropical diseases. Precontrol mapping is needed to establish the appropriate control intervention in each area of the country in question. Mapping is also needed postintervention to measure the success of control efforts. In the absence of comprehensive disease registries, mapping efforts can be informed by 2 kinds of data: empirical estimates of local prevalence obtained by testing individuals from a sample of communities within the geographical region of interest, and digital images of environmental factors that are predictive of local prevalence. In this article, we focus on the design and analysis of impact surveys, that is, prevalence surveys that are conducted postintervention with the aim of informing decisions on what further intervention, if any, is needed to achieve elimination of the disease as a public health problem. We show that geospatial statistical methods enable prevalence surveys to be designed and analyzed as efficiently as possible so as to make best use of hard-won field data. We use 3 case studies based on data from soil-transmitted helminth impact surveys in Kenya, Sierra Leone, and Zimbabwe to compare the predictive performance of model-based geostatistics with methods described in current World Health Organization (WHO) guidelines. In all 3 cases, we find that model-based geostatistics substantially outperforms the current WHO guidelines, delivering improved precision for reduced field-sampling effort. We argue from experience that similar improvements will hold for prevalence mapping of other neglected tropical diseases.
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spelling pubmed-82015742021-06-15 Model-Based Geostatistical Methods Enable Efficient Design and Analysis of Prevalence Surveys for Soil-Transmitted Helminth Infection and Other Neglected Tropical Diseases Johnson, Olatunji Fronterre, Claudio Amoah, Benjamin Montresor, Antonio Giorgi, Emanuele Midzi, Nicholas Mutsaka-Makuvaza, Masceline Jenipher Kargbo-Labor, Ibrahim Hodges, Mary H Zhang, Yaobi Okoyo, Collins Mwandawiro, Charles Minnery, Mark Diggle, Peter J Clin Infect Dis Supplement Articles Maps of the geographical variation in prevalence play an important role in large-scale programs for the control of neglected tropical diseases. Precontrol mapping is needed to establish the appropriate control intervention in each area of the country in question. Mapping is also needed postintervention to measure the success of control efforts. In the absence of comprehensive disease registries, mapping efforts can be informed by 2 kinds of data: empirical estimates of local prevalence obtained by testing individuals from a sample of communities within the geographical region of interest, and digital images of environmental factors that are predictive of local prevalence. In this article, we focus on the design and analysis of impact surveys, that is, prevalence surveys that are conducted postintervention with the aim of informing decisions on what further intervention, if any, is needed to achieve elimination of the disease as a public health problem. We show that geospatial statistical methods enable prevalence surveys to be designed and analyzed as efficiently as possible so as to make best use of hard-won field data. We use 3 case studies based on data from soil-transmitted helminth impact surveys in Kenya, Sierra Leone, and Zimbabwe to compare the predictive performance of model-based geostatistics with methods described in current World Health Organization (WHO) guidelines. In all 3 cases, we find that model-based geostatistics substantially outperforms the current WHO guidelines, delivering improved precision for reduced field-sampling effort. We argue from experience that similar improvements will hold for prevalence mapping of other neglected tropical diseases. Oxford University Press 2021-06-14 /pmc/articles/PMC8201574/ /pubmed/33905476 http://dx.doi.org/10.1093/cid/ciab192 Text en © The Author(s) 2021. Published by Oxford University Press for the Infectious Diseases Society of America. https://creativecommons.org/licenses/by/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) ), which permits unrestricted reuse, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Supplement Articles
Johnson, Olatunji
Fronterre, Claudio
Amoah, Benjamin
Montresor, Antonio
Giorgi, Emanuele
Midzi, Nicholas
Mutsaka-Makuvaza, Masceline Jenipher
Kargbo-Labor, Ibrahim
Hodges, Mary H
Zhang, Yaobi
Okoyo, Collins
Mwandawiro, Charles
Minnery, Mark
Diggle, Peter J
Model-Based Geostatistical Methods Enable Efficient Design and Analysis of Prevalence Surveys for Soil-Transmitted Helminth Infection and Other Neglected Tropical Diseases
title Model-Based Geostatistical Methods Enable Efficient Design and Analysis of Prevalence Surveys for Soil-Transmitted Helminth Infection and Other Neglected Tropical Diseases
title_full Model-Based Geostatistical Methods Enable Efficient Design and Analysis of Prevalence Surveys for Soil-Transmitted Helminth Infection and Other Neglected Tropical Diseases
title_fullStr Model-Based Geostatistical Methods Enable Efficient Design and Analysis of Prevalence Surveys for Soil-Transmitted Helminth Infection and Other Neglected Tropical Diseases
title_full_unstemmed Model-Based Geostatistical Methods Enable Efficient Design and Analysis of Prevalence Surveys for Soil-Transmitted Helminth Infection and Other Neglected Tropical Diseases
title_short Model-Based Geostatistical Methods Enable Efficient Design and Analysis of Prevalence Surveys for Soil-Transmitted Helminth Infection and Other Neglected Tropical Diseases
title_sort model-based geostatistical methods enable efficient design and analysis of prevalence surveys for soil-transmitted helminth infection and other neglected tropical diseases
topic Supplement Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8201574/
https://www.ncbi.nlm.nih.gov/pubmed/33905476
http://dx.doi.org/10.1093/cid/ciab192
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