Neighborhood clustering of non-communicable diseases: results from a community-based study in Northern Tanzania

Abstract Background In order to begin to address the burden of non-communicable diseases (NCDs) in sub-Saharan Africa, high quality community-based epidemiological studies from the region are urgently needed. Cluster-designed sampling methods may be most efficient, but designing such studies require...

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Main Authors: John W. Stanifer, Joseph R Egger, Elizabeth L. Turner, Nathan Thielman, Uptal D. Patel, for the Comprehensive Kidney Disease Assessment for Risk factors, epidemiology, Knowledge, and Attitudes (CKD AFRiKA) Study
Format: Article
Language:English
Published: BMC 2016-03-01
Series:BMC Public Health
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12889-016-2912-5
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spelling doaj-47a5f3b7c41442ad8c2ee0f2bc6e0c932020-11-24T21:12:48ZengBMCBMC Public Health1471-24582016-03-0116111010.1186/s12889-016-2912-5Neighborhood clustering of non-communicable diseases: results from a community-based study in Northern TanzaniaJohn W. Stanifer0Joseph R Egger1Elizabeth L. Turner2Nathan Thielman3Uptal D. Patel4for the Comprehensive Kidney Disease Assessment for Risk factors, epidemiology, Knowledge, and Attitudes (CKD AFRiKA) StudyDepartment of Medicine, Duke UniversityDuke Global Health Institute, Duke UniversityDuke Global Health Institute, Duke UniversityDepartment of Medicine, Duke UniversityDepartment of Medicine, Duke UniversityAbstract Background In order to begin to address the burden of non-communicable diseases (NCDs) in sub-Saharan Africa, high quality community-based epidemiological studies from the region are urgently needed. Cluster-designed sampling methods may be most efficient, but designing such studies requires assumptions about the clustering of the outcomes of interest. Currently, few studies from Sub-Saharan Africa have been published that describe the clustering of NCDs. Therefore, we report the neighborhood clustering of several NCDs from a community-based study in Northern Tanzania. Methods We conducted a cluster-designed cross-sectional household survey between January and June 2014. We used a three-stage cluster probability sampling method to select thirty-seven sampling areas from twenty-nine neighborhood clusters, stratified by urban and rural. Households were then randomly selected from each of the sampling areas, and eligible participants were tested for chronic kidney disease (CKD), glucose impairment including diabetes, hypertension, and obesity as part of the CKD-AFRiKA study. We used linear mixed models to explore clustering across each of the samplings units, and we estimated absolute-agreement intra-cluster correlation (ICC) coefficients (ρ) for the neighborhood clusters. Results We enrolled 481 participants from 346 urban and rural households. Neighborhood cluster sizes ranged from 6 to 49 participants (median: 13.0; 25th–75th percentiles: 9–21). Clustering varied across neighborhoods and differed by urban or rural setting. Among NCDs, hypertension (ρ = 0.075) exhibited the strongest clustering within neighborhoods followed by CKD (ρ = 0.440), obesity (ρ = 0.040), and glucose impairment (ρ = 0.039). Conclusion The neighborhood clustering was substantial enough to contribute to a design effect for NCD outcomes including hypertension, CKD, obesity, and glucose impairment, and it may also highlight NCD risk factors that vary by setting. These results may help inform the design of future community-based studies or randomized controlled trials examining NCDs in the region particularly those that use cluster-sampling methods.http://link.springer.com/article/10.1186/s12889-016-2912-5Chronic kidney diseaseCluster designDesign effectEpidemiologyIntra-cluster correlationNon-communicable disease
collection DOAJ
language English
format Article
sources DOAJ
author John W. Stanifer
Joseph R Egger
Elizabeth L. Turner
Nathan Thielman
Uptal D. Patel
for the Comprehensive Kidney Disease Assessment for Risk factors, epidemiology, Knowledge, and Attitudes (CKD AFRiKA) Study
spellingShingle John W. Stanifer
Joseph R Egger
Elizabeth L. Turner
Nathan Thielman
Uptal D. Patel
for the Comprehensive Kidney Disease Assessment for Risk factors, epidemiology, Knowledge, and Attitudes (CKD AFRiKA) Study
Neighborhood clustering of non-communicable diseases: results from a community-based study in Northern Tanzania
BMC Public Health
Chronic kidney disease
Cluster design
Design effect
Epidemiology
Intra-cluster correlation
Non-communicable disease
author_facet John W. Stanifer
Joseph R Egger
Elizabeth L. Turner
Nathan Thielman
Uptal D. Patel
for the Comprehensive Kidney Disease Assessment for Risk factors, epidemiology, Knowledge, and Attitudes (CKD AFRiKA) Study
author_sort John W. Stanifer
title Neighborhood clustering of non-communicable diseases: results from a community-based study in Northern Tanzania
title_short Neighborhood clustering of non-communicable diseases: results from a community-based study in Northern Tanzania
title_full Neighborhood clustering of non-communicable diseases: results from a community-based study in Northern Tanzania
title_fullStr Neighborhood clustering of non-communicable diseases: results from a community-based study in Northern Tanzania
title_full_unstemmed Neighborhood clustering of non-communicable diseases: results from a community-based study in Northern Tanzania
title_sort neighborhood clustering of non-communicable diseases: results from a community-based study in northern tanzania
publisher BMC
series BMC Public Health
issn 1471-2458
publishDate 2016-03-01
description Abstract Background In order to begin to address the burden of non-communicable diseases (NCDs) in sub-Saharan Africa, high quality community-based epidemiological studies from the region are urgently needed. Cluster-designed sampling methods may be most efficient, but designing such studies requires assumptions about the clustering of the outcomes of interest. Currently, few studies from Sub-Saharan Africa have been published that describe the clustering of NCDs. Therefore, we report the neighborhood clustering of several NCDs from a community-based study in Northern Tanzania. Methods We conducted a cluster-designed cross-sectional household survey between January and June 2014. We used a three-stage cluster probability sampling method to select thirty-seven sampling areas from twenty-nine neighborhood clusters, stratified by urban and rural. Households were then randomly selected from each of the sampling areas, and eligible participants were tested for chronic kidney disease (CKD), glucose impairment including diabetes, hypertension, and obesity as part of the CKD-AFRiKA study. We used linear mixed models to explore clustering across each of the samplings units, and we estimated absolute-agreement intra-cluster correlation (ICC) coefficients (ρ) for the neighborhood clusters. Results We enrolled 481 participants from 346 urban and rural households. Neighborhood cluster sizes ranged from 6 to 49 participants (median: 13.0; 25th–75th percentiles: 9–21). Clustering varied across neighborhoods and differed by urban or rural setting. Among NCDs, hypertension (ρ = 0.075) exhibited the strongest clustering within neighborhoods followed by CKD (ρ = 0.440), obesity (ρ = 0.040), and glucose impairment (ρ = 0.039). Conclusion The neighborhood clustering was substantial enough to contribute to a design effect for NCD outcomes including hypertension, CKD, obesity, and glucose impairment, and it may also highlight NCD risk factors that vary by setting. These results may help inform the design of future community-based studies or randomized controlled trials examining NCDs in the region particularly those that use cluster-sampling methods.
topic Chronic kidney disease
Cluster design
Design effect
Epidemiology
Intra-cluster correlation
Non-communicable disease
url http://link.springer.com/article/10.1186/s12889-016-2912-5
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