Spatiotemporal high-resolution prediction and mapping: methodology and application to dengue disease

被引:12
作者
Jaya, I. Gede Nyoman Mindra [1 ,2 ]
Folmer, Henk [1 ,2 ]
机构
[1] Univ Groningen, Fac Spatial Sci, Groningen, Netherlands
[2] Padjadjaran State Univ, Stat Dept, Bandung, Indonesia
关键词
Dengue disease; Relative risk; Fusion area-cell generalized geoadditive-Gaussian Markov random field model; Bayesian statistics; Big n; Problem; Bottom-up approach; SPACE-TIME VARIATION; SPATIAL MISALIGNMENT; COVARIANCE FUNCTIONS; BAYESIAN-INFERENCE; GAUSSIAN MODELS; LEVEL; POINT; TRANSMISSION; IMPACT; FEVER;
D O I
10.1007/s10109-021-00368-0
中图分类号
P9 [自然地理学]; K9 [地理];
学科分类号
0705 ; 070501 ;
摘要
Dengue disease has become a major public health problem. Accurate and precise identification, prediction and mapping of high-risk areas are crucial elements of an effective and efficient early warning system in countering the spread of dengue disease. In this paper, we present the fusion area-cell spatiotemporal generalized geoadditive-Gaussian Markov random field (FGG-GMRF) framework for joint estimation of an area-cell model, involving temporally varying coefficients, spatially and temporally structured and unstructured random effects, and spatiotemporal interaction of the random effects. The spatiotemporal Gaussian field is applied to determine the unobserved relative risk at cell level. It is transformed to a Gaussian Markov random field using the finite element method and the linear stochastic partial differential equation approach to solve the "big n" problem. Sub-area relative risk estimates are obtained as block averages of the cell outcomes within each sub-area boundary. The FGG-GMRF model is estimated by applying Bayesian Integrated Nested Laplace Approximation. In the application to Bandung city, Indonesia, we combine low-resolution area level (district) spatiotemporal data on population at risk and incidence and high-resolution cell level data on weather variables to obtain predictions of relative risk at subdistrict level. The predicted dengue relative risk at subdistrict level suggests significant fine-scale heterogeneities which are not apparent when examining the area level. The relative risk varies considerably across subdistricts and time, with the latter showing an increase in the period January-July and a decrease in the period August-December.
引用
收藏
页码:527 / 581
页数:55
相关论文
共 50 条
  • [1] Spatiotemporal high-resolution prediction and mapping: methodology and application to dengue disease
    I. Gede Nyoman Mindra Jaya
    Henk Folmer
    Journal of Geographical Systems, 2022, 24 : 527 - 581
  • [2] Bayesian spatiotemporal mapping of relative dengue disease risk in Bandung, Indonesia
    Jaya, I. Gede Nyoman Mindra
    Folmer, Henk
    JOURNAL OF GEOGRAPHICAL SYSTEMS, 2020, 22 (01) : 105 - 142
  • [3] Bayesian spatiotemporal mapping of relative dengue disease risk in Bandung, Indonesia
    I. Gede Nyoman Mindra Jaya
    Henk Folmer
    Journal of Geographical Systems, 2020, 22 : 105 - 142
  • [4] Mapping Entomological Dengue Risk Levels in Martinique Using High-Resolution Remote-Sensing Environmental Data
    Machault, Vanessa
    Yebakima, Andre
    Etienne, Manuel
    Vignolles, Cecile
    Palany, Philippe
    Tourre, Yves M.
    Guerecheau, Marine
    Lacaux, Jean-Pierre
    ISPRS INTERNATIONAL JOURNAL OF GEO-INFORMATION, 2014, 3 (04): : 1352 - 1371
  • [5] Identifying Spatiotemporal Clusters by Means of Agglomerative Hierarchical Clustering and Bayesian Regression Analysis with Spatiotemporally Varying Coefficients: Methodology and Application to Dengue Disease in Bandung, Indonesia
    Jaya, I. Gede Nyoman Mindra
    Folmer, Henk
    GEOGRAPHICAL ANALYSIS, 2021, 53 (04) : 767 - 817
  • [6] High-resolution urban air pollution mapping
    Apte, Joshua S.
    Manchanda, Chirag
    SCIENCE, 2024, 385 (6707) : 380 - 385
  • [7] High-Resolution Body Surface Potential Mapping in Exercise Assessment of Ischemic Heart Disease
    Kania, Michal
    Maniewski, Roman
    Zaczek, Rajmund
    Kobylecka, Malgorzata
    Zbiec, Anna
    Krolicki, Leszek
    Opolski, Grzegorz
    ANNALS OF BIOMEDICAL ENGINEERING, 2019, 47 (05) : 1300 - 1313
  • [8] A spatial regression model for the disaggregation of areal unit based data to high-resolution grids with application to vaccination coverage mapping
    Utazi, C. E.
    Thorley, J.
    Alegana, V. A.
    Ferrari, M. J.
    Nilsen, K.
    Takahashi, S.
    Metcalf, C. J. E.
    Lessler, J.
    Tatem, A. J.
    STATISTICAL METHODS IN MEDICAL RESEARCH, 2019, 28 (10-11) : 3226 - 3241
  • [9] Bayesian spatiotemporal modelling for disease mapping: an application to preeclampsia and gestational diabetes in Florida, United States
    Sun, Ning
    Bursac, Zoran
    Dryden, Ian
    Lucchini, Roberto
    Dabo-Niang, Sophie
    Ibrahimou, Boubakari
    ENVIRONMENTAL SCIENCE AND POLLUTION RESEARCH, 2023, 30 (50) : 109283 - 109298
  • [10] Developing a Vulnerability Mapping Methodology: Applying the Water-Associated Disease Index to Dengue in Malaysia
    Dickin, Sarah K.
    Schuster-Wallace, Corinne J.
    Elliott, Susan J.
    PLOS ONE, 2013, 8 (05):