A census-weighted, spatially-stratified household sampling strategy for urban malaria epidemiology

<p>Abstract</p> <p>Background</p> <p>Urban malaria is likely to become increasingly important as a consequence of the growing proportion of Africans living in cities. A novel sampling strategy was developed for urban areas to generate a sample simultaneously representat...

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Main Authors: Slutsker Laurence, Vulule John M, Onyango Bernard, Rosen Daniel H, Lindblade Kim A, Siri Jose G, Wilson Mark L
Format: Article
Language:English
Published: BMC 2008-02-01
Series:Malaria Journal
Online Access:http://www.malariajournal.com/content/7/1/39
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spelling doaj-d415292d6cde4c01ba24fa8cdd02aaee2020-11-24T21:33:53ZengBMCMalaria Journal1475-28752008-02-01713910.1186/1475-2875-7-39A census-weighted, spatially-stratified household sampling strategy for urban malaria epidemiologySlutsker LaurenceVulule John MOnyango BernardRosen Daniel HLindblade Kim ASiri Jose GWilson Mark L<p>Abstract</p> <p>Background</p> <p>Urban malaria is likely to become increasingly important as a consequence of the growing proportion of Africans living in cities. A novel sampling strategy was developed for urban areas to generate a sample simultaneously representative of population and inhabited environments. Such a strategy should facilitate analysis of important epidemiological relationships in this ecological context.</p> <p>Methods</p> <p>Census maps and summary data for Kisumu, Kenya, were used to create a pseudo-sampling frame using the geographic coordinates of census-sampled structures. For every enumeration area (EA) designated as urban by the census (n = 535), a sample of structures equal to one-tenth the number of households was selected. In EAs designated as rural (n = 32), a geographically random sample totalling one-tenth the number of households was selected from a grid of points at 100 m intervals. The selected samples were cross-referenced to a geographic information system, and coordinates transferred to handheld global positioning units. Interviewers found the closest eligible household to the sampling point and interviewed the caregiver of a child aged < 10 years. The demographics of the selected sample were compared with results from the Kenya Demographic and Health Survey to assess sample validity. Results were also compared among urban and rural EAs.</p> <p>Results</p> <p>4,336 interviews were completed in 473 of the 567 study area EAs from June 2002 through February 2003. EAs without completed interviews were randomly distributed, and non-response was approximately 2%. Mean distance from the assigned sampling point to the completed interview was 74.6 m, and was significantly less in urban than rural EAs, even when controlling for number of households. The selected sample had significantly more children and females of childbearing age than the general population, and fewer older individuals.</p> <p>Conclusion</p> <p>This method selected a sample that was simultaneously population-representative and inclusive of important environmental variation. The use of a pseudo-sampling frame and pre-programmed handheld GPS units is more efficient and may yield a more complete sample than traditional methods, and is less expensive than complete population enumeration.</p> http://www.malariajournal.com/content/7/1/39
collection DOAJ
language English
format Article
sources DOAJ
author Slutsker Laurence
Vulule John M
Onyango Bernard
Rosen Daniel H
Lindblade Kim A
Siri Jose G
Wilson Mark L
spellingShingle Slutsker Laurence
Vulule John M
Onyango Bernard
Rosen Daniel H
Lindblade Kim A
Siri Jose G
Wilson Mark L
A census-weighted, spatially-stratified household sampling strategy for urban malaria epidemiology
Malaria Journal
author_facet Slutsker Laurence
Vulule John M
Onyango Bernard
Rosen Daniel H
Lindblade Kim A
Siri Jose G
Wilson Mark L
author_sort Slutsker Laurence
title A census-weighted, spatially-stratified household sampling strategy for urban malaria epidemiology
title_short A census-weighted, spatially-stratified household sampling strategy for urban malaria epidemiology
title_full A census-weighted, spatially-stratified household sampling strategy for urban malaria epidemiology
title_fullStr A census-weighted, spatially-stratified household sampling strategy for urban malaria epidemiology
title_full_unstemmed A census-weighted, spatially-stratified household sampling strategy for urban malaria epidemiology
title_sort census-weighted, spatially-stratified household sampling strategy for urban malaria epidemiology
publisher BMC
series Malaria Journal
issn 1475-2875
publishDate 2008-02-01
description <p>Abstract</p> <p>Background</p> <p>Urban malaria is likely to become increasingly important as a consequence of the growing proportion of Africans living in cities. A novel sampling strategy was developed for urban areas to generate a sample simultaneously representative of population and inhabited environments. Such a strategy should facilitate analysis of important epidemiological relationships in this ecological context.</p> <p>Methods</p> <p>Census maps and summary data for Kisumu, Kenya, were used to create a pseudo-sampling frame using the geographic coordinates of census-sampled structures. For every enumeration area (EA) designated as urban by the census (n = 535), a sample of structures equal to one-tenth the number of households was selected. In EAs designated as rural (n = 32), a geographically random sample totalling one-tenth the number of households was selected from a grid of points at 100 m intervals. The selected samples were cross-referenced to a geographic information system, and coordinates transferred to handheld global positioning units. Interviewers found the closest eligible household to the sampling point and interviewed the caregiver of a child aged < 10 years. The demographics of the selected sample were compared with results from the Kenya Demographic and Health Survey to assess sample validity. Results were also compared among urban and rural EAs.</p> <p>Results</p> <p>4,336 interviews were completed in 473 of the 567 study area EAs from June 2002 through February 2003. EAs without completed interviews were randomly distributed, and non-response was approximately 2%. Mean distance from the assigned sampling point to the completed interview was 74.6 m, and was significantly less in urban than rural EAs, even when controlling for number of households. The selected sample had significantly more children and females of childbearing age than the general population, and fewer older individuals.</p> <p>Conclusion</p> <p>This method selected a sample that was simultaneously population-representative and inclusive of important environmental variation. The use of a pseudo-sampling frame and pre-programmed handheld GPS units is more efficient and may yield a more complete sample than traditional methods, and is less expensive than complete population enumeration.</p>
url http://www.malariajournal.com/content/7/1/39
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