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The Spatial Dynamics of Dengue Virus in Kamphaeng Phet, Thailand
Author(s) -
Piraya Bhoomiboonchoo,
Robert V. Gibbons,
Angkana T. Huang,
In-Kyu Yoon,
Darunee Buddhari,
Ananda Nisalak,
Natkamol Chansatiporn,
Mathuros Thipayamongkolgul,
Siripen Kalanarooj,
Timothy P. Endy,
Alan L. Rothman,
A Srikiatkhachorn,
Sharone Green,
Mammen P. Mammen,
Derek A. T. Cummings,
Henrik Salje
Publication year - 2014
Publication title -
plos neglected tropical diseases
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.99
H-Index - 135
eISSN - 1935-2735
pISSN - 1935-2727
DOI - 10.1371/journal.pntd.0003138
Subject(s) - dengue fever , geography , dengue virus , spatial epidemiology , demography , cluster analysis , spatial ecology , spatial distribution , spatial analysis , cartography , biological dispersal , confidence interval , statistics , environmental health , epidemiology , medicine , biology , virology , population , ecology , remote sensing , mathematics , sociology
Background Dengue is endemic to the rural province of Kamphaeng Phet, Northern Thailand. A decade of prospective cohort studies has provided important insights into the dengue viruses and their generated disease. However, as elsewhere, spatial dynamics of the pathogen remain poorly understood. In particular, the spatial scale of transmission and the scale of clustering are poorly characterized. This information is critical for effective deployment of spatially targeted interventions and for understanding the mechanisms that drive the dispersal of the virus. Methodology/Principal Findings We geocoded the home locations of 4,768 confirmed dengue cases admitted to the main hospital in Kamphaeng Phet province between 1994 and 2008. We used the phi clustering statistic to characterize short-term spatial dependence between cases. Further, to see if clustering of cases led to similar temporal patterns of disease across villages, we calculated the correlation in the long-term epidemic curves between communities. We found that cases were 2.9 times (95% confidence interval 2.7–3.2) more likely to live in the same village and be infected within the same month than expected given the underlying spatial and temporal distribution of cases. This fell to 1.4 times (1.2–1.7) for individuals living in villages 1 km apart. Significant clustering was observed up to 5 km. We found a steadily decreasing trend in the correlation in epidemics curves by distance: communities separated by up to 5 km had a mean correlation of 0.28 falling to 0.16 for communities separated between 20 km and 25 km. A potential explanation for these patterns is a role for human movement in spreading the pathogen between communities. Gravity style models, which attempt to capture population movement, outperformed competing models in describing the observed correlations. Conclusions There exists significant short-term clustering of cases within individual villages. Effective spatially and temporally targeted interventions deployed within villages may target ongoing transmission and reduce infection risk.

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