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Adaptive Gaussian Markov random field spatiotemporal models for infectious disease mapping and forecasting

Recent disease mapping literature presents adaptively parameterized spatiotemporal (ST) autoregressive (AR) or conditional autoregressive (CAR) models for Bayesian prediction of COVID-19 infection risks. These models were motivated to capture complex spatiotemporal dynamics and heterogeneities of in...

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Autor principal: MacNab, Ying C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier B.V. 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9859649/
https://www.ncbi.nlm.nih.gov/pubmed/36713268
http://dx.doi.org/10.1016/j.spasta.2023.100726
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author MacNab, Ying C.
author_facet MacNab, Ying C.
author_sort MacNab, Ying C.
collection PubMed
description Recent disease mapping literature presents adaptively parameterized spatiotemporal (ST) autoregressive (AR) or conditional autoregressive (CAR) models for Bayesian prediction of COVID-19 infection risks. These models were motivated to capture complex spatiotemporal dynamics and heterogeneities of infection risks. In the present paper, we synthesize, generalize, and unify the ST AR and CAR model constructions for models augmented by adaptive Gaussian Markov random fields, with an emphasis on disease forecasting. A general convolution construction is presented, with illustrative models motivated to (i) characterize local risk dependencies and influences over both spatial and temporal dimensions, (ii) model risk heterogeneities and discontinuities, and (iii) predict and forecast areal-level disease risks and occurrences. The broadened constructions allow rich options of intuitive parameterization for disease mapping and spatial regression. Illustrative parameterizations are presented for Bayesian hierarchical models of Poisson, zero-inflated Poisson, and Bernoulli data models, respectively. They are also discussed in the context of quantifying time-varying or time-invariant effects of (omitted) covariates, with application to prediction and forecasting areal-level COVID-19 infection occurrences and probabilities of zero-infection. The model constructions presented herein have much wider scope in offering a flexible framework for modelling complex spatiotemporal data and for estimation, learning, and forecasting purposes.
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spelling pubmed-98596492023-01-23 Adaptive Gaussian Markov random field spatiotemporal models for infectious disease mapping and forecasting MacNab, Ying C. Spat Stat Article Recent disease mapping literature presents adaptively parameterized spatiotemporal (ST) autoregressive (AR) or conditional autoregressive (CAR) models for Bayesian prediction of COVID-19 infection risks. These models were motivated to capture complex spatiotemporal dynamics and heterogeneities of infection risks. In the present paper, we synthesize, generalize, and unify the ST AR and CAR model constructions for models augmented by adaptive Gaussian Markov random fields, with an emphasis on disease forecasting. A general convolution construction is presented, with illustrative models motivated to (i) characterize local risk dependencies and influences over both spatial and temporal dimensions, (ii) model risk heterogeneities and discontinuities, and (iii) predict and forecast areal-level disease risks and occurrences. The broadened constructions allow rich options of intuitive parameterization for disease mapping and spatial regression. Illustrative parameterizations are presented for Bayesian hierarchical models of Poisson, zero-inflated Poisson, and Bernoulli data models, respectively. They are also discussed in the context of quantifying time-varying or time-invariant effects of (omitted) covariates, with application to prediction and forecasting areal-level COVID-19 infection occurrences and probabilities of zero-infection. The model constructions presented herein have much wider scope in offering a flexible framework for modelling complex spatiotemporal data and for estimation, learning, and forecasting purposes. Elsevier B.V. 2023-03 2023-01-21 /pmc/articles/PMC9859649/ /pubmed/36713268 http://dx.doi.org/10.1016/j.spasta.2023.100726 Text en © 2023 Elsevier B.V. All rights reserved. Since January 2020 Elsevier has created a COVID-19 resource centre with free information in English and Mandarin on the novel coronavirus COVID-19. The COVID-19 resource centre is hosted on Elsevier Connect, the company's public news and information website. Elsevier hereby grants permission to make all its COVID-19-related research that is available on the COVID-19 resource centre - including this research content - immediately available in PubMed Central and other publicly funded repositories, such as the WHO COVID database with rights for unrestricted research re-use and analyses in any form or by any means with acknowledgement of the original source. These permissions are granted for free by Elsevier for as long as the COVID-19 resource centre remains active.
spellingShingle Article
MacNab, Ying C.
Adaptive Gaussian Markov random field spatiotemporal models for infectious disease mapping and forecasting
title Adaptive Gaussian Markov random field spatiotemporal models for infectious disease mapping and forecasting
title_full Adaptive Gaussian Markov random field spatiotemporal models for infectious disease mapping and forecasting
title_fullStr Adaptive Gaussian Markov random field spatiotemporal models for infectious disease mapping and forecasting
title_full_unstemmed Adaptive Gaussian Markov random field spatiotemporal models for infectious disease mapping and forecasting
title_short Adaptive Gaussian Markov random field spatiotemporal models for infectious disease mapping and forecasting
title_sort adaptive gaussian markov random field spatiotemporal models for infectious disease mapping and forecasting
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9859649/
https://www.ncbi.nlm.nih.gov/pubmed/36713268
http://dx.doi.org/10.1016/j.spasta.2023.100726
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