A probabilistic spatial dengue fever risk assessment by a threshold-based-quantile regression method.

Understanding the spatial characteristics of dengue fever (DF) incidences is crucial for governmental agencies to implement effective disease control strategies. We investigated the associations between environmental and socioeconomic factors and DF geographic distribution, are proposed a probabilis...

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Main Authors: Chuan-Hung Chiu, Tzai-Hung Wen, Lung-Chang Chien, Hwa-Lung Yu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2014-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4193740?pdf=render
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spelling doaj-d58d4fa9f89d474badded7032821a0ca2020-11-24T21:42:52ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-01910e10633410.1371/journal.pone.0106334A probabilistic spatial dengue fever risk assessment by a threshold-based-quantile regression method.Chuan-Hung ChiuTzai-Hung WenLung-Chang ChienHwa-Lung YuUnderstanding the spatial characteristics of dengue fever (DF) incidences is crucial for governmental agencies to implement effective disease control strategies. We investigated the associations between environmental and socioeconomic factors and DF geographic distribution, are proposed a probabilistic risk assessment approach that uses threshold-based quantile regression to identify the significant risk factors for DF transmission and estimate the spatial distribution of DF risk regarding full probability distributions. To interpret risk, return period was also included to characterize the frequency pattern of DF geographic occurrences. The study area included old Kaohsiung City and Fongshan District, two areas in Taiwan that have been affected by severe DF infections in recent decades. Results indicated that water-related facilities, including canals and ditches, and various types of residential area, as well as the interactions between them, were significant factors that elevated DF risk. By contrast, the increase of per capita income and its associated interactions with residential areas mitigated the DF risk in the study area. Nonlinear associations between these factors and DF risk were present in various quantiles, implying that water-related factors characterized the underlying spatial patterns of DF, and high-density residential areas indicated the potential for high DF incidence (e.g., clustered infections). The spatial distributions of DF risks were assessed in terms of three distinct map presentations: expected incidence rates, incidence rates in various return periods, and return periods at distinct incidence rates. These probability-based spatial risk maps exhibited distinct DF risks associated with environmental factors, expressed as various DF magnitudes and occurrence probabilities across Kaohsiung, and can serve as a reference for local governmental agencies.http://europepmc.org/articles/PMC4193740?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Chuan-Hung Chiu
Tzai-Hung Wen
Lung-Chang Chien
Hwa-Lung Yu
spellingShingle Chuan-Hung Chiu
Tzai-Hung Wen
Lung-Chang Chien
Hwa-Lung Yu
A probabilistic spatial dengue fever risk assessment by a threshold-based-quantile regression method.
PLoS ONE
author_facet Chuan-Hung Chiu
Tzai-Hung Wen
Lung-Chang Chien
Hwa-Lung Yu
author_sort Chuan-Hung Chiu
title A probabilistic spatial dengue fever risk assessment by a threshold-based-quantile regression method.
title_short A probabilistic spatial dengue fever risk assessment by a threshold-based-quantile regression method.
title_full A probabilistic spatial dengue fever risk assessment by a threshold-based-quantile regression method.
title_fullStr A probabilistic spatial dengue fever risk assessment by a threshold-based-quantile regression method.
title_full_unstemmed A probabilistic spatial dengue fever risk assessment by a threshold-based-quantile regression method.
title_sort probabilistic spatial dengue fever risk assessment by a threshold-based-quantile regression method.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2014-01-01
description Understanding the spatial characteristics of dengue fever (DF) incidences is crucial for governmental agencies to implement effective disease control strategies. We investigated the associations between environmental and socioeconomic factors and DF geographic distribution, are proposed a probabilistic risk assessment approach that uses threshold-based quantile regression to identify the significant risk factors for DF transmission and estimate the spatial distribution of DF risk regarding full probability distributions. To interpret risk, return period was also included to characterize the frequency pattern of DF geographic occurrences. The study area included old Kaohsiung City and Fongshan District, two areas in Taiwan that have been affected by severe DF infections in recent decades. Results indicated that water-related facilities, including canals and ditches, and various types of residential area, as well as the interactions between them, were significant factors that elevated DF risk. By contrast, the increase of per capita income and its associated interactions with residential areas mitigated the DF risk in the study area. Nonlinear associations between these factors and DF risk were present in various quantiles, implying that water-related factors characterized the underlying spatial patterns of DF, and high-density residential areas indicated the potential for high DF incidence (e.g., clustered infections). The spatial distributions of DF risks were assessed in terms of three distinct map presentations: expected incidence rates, incidence rates in various return periods, and return periods at distinct incidence rates. These probability-based spatial risk maps exhibited distinct DF risks associated with environmental factors, expressed as various DF magnitudes and occurrence probabilities across Kaohsiung, and can serve as a reference for local governmental agencies.
url http://europepmc.org/articles/PMC4193740?pdf=render
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