Locating irregularly shaped clusters of infection intensity

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Locating irregularly shaped clusters of infection intensity. / Yiannakoulias, Niko; Wilson, Shona; Kariuki, H. Curtis; Mwatha, Joseph K.; Ouma, John H.; Muchiri, Eric; Kimani, Gachuhi; Vennervald, Birgitte J; Dunne, David W.

I: Geospatial Health, Bind 4, Nr. 2, 2010, s. 191-200.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Yiannakoulias, N, Wilson, S, Kariuki, HC, Mwatha, JK, Ouma, JH, Muchiri, E, Kimani, G, Vennervald, BJ & Dunne, DW 2010, 'Locating irregularly shaped clusters of infection intensity', Geospatial Health, bind 4, nr. 2, s. 191-200.

APA

Yiannakoulias, N., Wilson, S., Kariuki, H. C., Mwatha, J. K., Ouma, J. H., Muchiri, E., Kimani, G., Vennervald, B. J., & Dunne, D. W. (2010). Locating irregularly shaped clusters of infection intensity. Geospatial Health, 4(2), 191-200.

Vancouver

Yiannakoulias N, Wilson S, Kariuki HC, Mwatha JK, Ouma JH, Muchiri E o.a. Locating irregularly shaped clusters of infection intensity. Geospatial Health. 2010;4(2):191-200.

Author

Yiannakoulias, Niko ; Wilson, Shona ; Kariuki, H. Curtis ; Mwatha, Joseph K. ; Ouma, John H. ; Muchiri, Eric ; Kimani, Gachuhi ; Vennervald, Birgitte J ; Dunne, David W. / Locating irregularly shaped clusters of infection intensity. I: Geospatial Health. 2010 ; Bind 4, Nr. 2. s. 191-200.

Bibtex

@article{44e943416bda47109ffddcfc976d9cf1,
title = "Locating irregularly shaped clusters of infection intensity",
abstract = "Patterns of disease may take on irregular geographic shapes, especially when features of the physical environment influence risk. Identifying these patterns can be important for planning, and also identifying new environmental or social factors associated with high or low risk of illness. Until recently, cluster detection methods were limited in their ability to detect irregular spatial patterns, and limited to finding clusters that were roughly circular in shape. This approach has less power to detect irregularly-shaped, yet important spatial anomalies, particularly at high spatial resolutions. We employ a new method of finding irregularly-shaped spatial clusters at micro-geographical scales using both simulated and real data on Schistosoma mansoni and hookworm infection intensities. This method, which we refer to as the {"}greedy growth scan{"}, is a modification of the spatial scan method for cluster detection. Real data are based on samples of hookworm and S. mansoni from Kitengei, Makueni district, Kenya. Our analysis of simulated data shows how methods able to find irregular shapes are more likely to identify clusters along rivers than methods constrained to fixed geometries. Our analysis of infection intensity identifies two small areas within the study region in which infection intensity is elevated, possibly due to local features of the physical or social environment. Collectively, our results show that the {"}greedy growth scan{"} is a suitable method for exploratory geographical analysis of infection intensity data when irregular shapes are suspected, especially at micro-geographical scales.",
keywords = "Former LIFE faculty, Disease clusters, Schistosomiasis, hookworm, Spatial scan, Kenya",
author = "Niko Yiannakoulias and Shona Wilson and Kariuki, {H. Curtis} and Mwatha, {Joseph K.} and Ouma, {John H.} and Eric Muchiri and Gachuhi Kimani and Vennervald, {Birgitte J} and Dunne, {David W.}",
year = "2010",
language = "English",
volume = "4",
pages = "191--200",
journal = "Geospatial health",
issn = "1827-1987",
publisher = "Pagepress",
number = "2",

}

RIS

TY - JOUR

T1 - Locating irregularly shaped clusters of infection intensity

AU - Yiannakoulias, Niko

AU - Wilson, Shona

AU - Kariuki, H. Curtis

AU - Mwatha, Joseph K.

AU - Ouma, John H.

AU - Muchiri, Eric

AU - Kimani, Gachuhi

AU - Vennervald, Birgitte J

AU - Dunne, David W.

PY - 2010

Y1 - 2010

N2 - Patterns of disease may take on irregular geographic shapes, especially when features of the physical environment influence risk. Identifying these patterns can be important for planning, and also identifying new environmental or social factors associated with high or low risk of illness. Until recently, cluster detection methods were limited in their ability to detect irregular spatial patterns, and limited to finding clusters that were roughly circular in shape. This approach has less power to detect irregularly-shaped, yet important spatial anomalies, particularly at high spatial resolutions. We employ a new method of finding irregularly-shaped spatial clusters at micro-geographical scales using both simulated and real data on Schistosoma mansoni and hookworm infection intensities. This method, which we refer to as the "greedy growth scan", is a modification of the spatial scan method for cluster detection. Real data are based on samples of hookworm and S. mansoni from Kitengei, Makueni district, Kenya. Our analysis of simulated data shows how methods able to find irregular shapes are more likely to identify clusters along rivers than methods constrained to fixed geometries. Our analysis of infection intensity identifies two small areas within the study region in which infection intensity is elevated, possibly due to local features of the physical or social environment. Collectively, our results show that the "greedy growth scan" is a suitable method for exploratory geographical analysis of infection intensity data when irregular shapes are suspected, especially at micro-geographical scales.

AB - Patterns of disease may take on irregular geographic shapes, especially when features of the physical environment influence risk. Identifying these patterns can be important for planning, and also identifying new environmental or social factors associated with high or low risk of illness. Until recently, cluster detection methods were limited in their ability to detect irregular spatial patterns, and limited to finding clusters that were roughly circular in shape. This approach has less power to detect irregularly-shaped, yet important spatial anomalies, particularly at high spatial resolutions. We employ a new method of finding irregularly-shaped spatial clusters at micro-geographical scales using both simulated and real data on Schistosoma mansoni and hookworm infection intensities. This method, which we refer to as the "greedy growth scan", is a modification of the spatial scan method for cluster detection. Real data are based on samples of hookworm and S. mansoni from Kitengei, Makueni district, Kenya. Our analysis of simulated data shows how methods able to find irregular shapes are more likely to identify clusters along rivers than methods constrained to fixed geometries. Our analysis of infection intensity identifies two small areas within the study region in which infection intensity is elevated, possibly due to local features of the physical or social environment. Collectively, our results show that the "greedy growth scan" is a suitable method for exploratory geographical analysis of infection intensity data when irregular shapes are suspected, especially at micro-geographical scales.

KW - Former LIFE faculty

KW - Disease clusters

KW - Schistosomiasis

KW - hookworm

KW - Spatial scan

KW - Kenya

M3 - Journal article

C2 - 20503188

VL - 4

SP - 191

EP - 200

JO - Geospatial health

JF - Geospatial health

SN - 1827-1987

IS - 2

ER -

ID: 32192781