Nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.

Quantifying the distributions of disease risk in space and time jointly is a key element for understanding spatio-temporal phenomena while also having the potential to enhance our understanding of epidemiologic trajectories. However, most studies to date have neglected time dimension and focus inste...

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Main Authors: Zhijie Zhang, Dongmei Chen, Wenbao Liu, Jeffrey S Racine, SengHuat Ong, Yue Chen, Genming Zhao, Qingwu Jiang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2011-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3057986?pdf=render
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spelling doaj-43c6aa1cfcbe43f08dc6e60e4bd749a72020-11-25T02:05:18ZengPublic Library of Science (PLoS)PLoS ONE1932-62032011-01-0163e1738110.1371/journal.pone.0017381Nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.Zhijie ZhangDongmei ChenWenbao LiuJeffrey S RacineSengHuat OngYue ChenGenming ZhaoQingwu JiangQuantifying the distributions of disease risk in space and time jointly is a key element for understanding spatio-temporal phenomena while also having the potential to enhance our understanding of epidemiologic trajectories. However, most studies to date have neglected time dimension and focus instead on the "average" spatial pattern of disease risk, thereby masking time trajectories of disease risk. In this study we propose a new idea titled "spatio-temporal kernel density estimation (stKDE)" that employs hybrid kernel (i.e., weight) functions to evaluate the spatio-temporal disease risks. This approach not only can make full use of sample data but also "borrows" information in a particular manner from neighboring points both in space and time via appropriate choice of kernel functions. Monte Carlo simulations show that the proposed method performs substantially better than the traditional (i.e., frequency-based) kernel density estimation (trKDE) which has been used in applied settings while two illustrative examples demonstrate that the proposed approach can yield superior results compared to the popular trKDE approach. In addition, there exist various possibilities for improving and extending this method.http://europepmc.org/articles/PMC3057986?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Zhijie Zhang
Dongmei Chen
Wenbao Liu
Jeffrey S Racine
SengHuat Ong
Yue Chen
Genming Zhao
Qingwu Jiang
spellingShingle Zhijie Zhang
Dongmei Chen
Wenbao Liu
Jeffrey S Racine
SengHuat Ong
Yue Chen
Genming Zhao
Qingwu Jiang
Nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.
PLoS ONE
author_facet Zhijie Zhang
Dongmei Chen
Wenbao Liu
Jeffrey S Racine
SengHuat Ong
Yue Chen
Genming Zhao
Qingwu Jiang
author_sort Zhijie Zhang
title Nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.
title_short Nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.
title_full Nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.
title_fullStr Nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.
title_full_unstemmed Nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.
title_sort nonparametric evaluation of dynamic disease risk: a spatio-temporal kernel approach.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2011-01-01
description Quantifying the distributions of disease risk in space and time jointly is a key element for understanding spatio-temporal phenomena while also having the potential to enhance our understanding of epidemiologic trajectories. However, most studies to date have neglected time dimension and focus instead on the "average" spatial pattern of disease risk, thereby masking time trajectories of disease risk. In this study we propose a new idea titled "spatio-temporal kernel density estimation (stKDE)" that employs hybrid kernel (i.e., weight) functions to evaluate the spatio-temporal disease risks. This approach not only can make full use of sample data but also "borrows" information in a particular manner from neighboring points both in space and time via appropriate choice of kernel functions. Monte Carlo simulations show that the proposed method performs substantially better than the traditional (i.e., frequency-based) kernel density estimation (trKDE) which has been used in applied settings while two illustrative examples demonstrate that the proposed approach can yield superior results compared to the popular trKDE approach. In addition, there exist various possibilities for improving and extending this method.
url http://europepmc.org/articles/PMC3057986?pdf=render
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