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      KCI등재 SCOPUS SCIE

      Local-level spatiotemporal dynamics of COVID-19 transmission in the Greater Seoul Area, Korea: a view from a Bayesian perspective

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      https://www.riss.kr/link?id=A108167824

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      다국어 초록 (Multilingual Abstract)

      OBJECTIVES: The purpose of this study was to enhance the understanding of the local-level spatiotemporal dynamics of COVID-19 transmission in the Greater Seoul Area (GSA), Korea, after its initial outbreak in January 2020. METHODS: Using the weekly ag...

      OBJECTIVES: The purpose of this study was to enhance the understanding of the local-level spatiotemporal dynamics of COVID-19 transmission in the Greater Seoul Area (GSA), Korea, after its initial outbreak in January 2020.
      METHODS: Using the weekly aggregates of coronavirus disease 2019 (COVID-19) cases of 77 municipalities in the GSA, we examined the relative risks of COVID-19 infection across local districts over 50 consecutive weeks in 2020. To this end, we employed a spatiotemporal generalized linear mixed model under the hierarchical Bayesian framework. This allowed us to empirically examine the random effects of spatial alignments, temporal autocorrelation, and spatiotemporal interaction, along with fixed effects. Specifically, we utilized the conditional autoregressive and the weakly informative penalized complexity priors for hyperparameters of the random effects.
      RESULTS: Spatiotemporal interaction dominated the overall variability of random influences, followed by spatial correlation, whereas the temporal correlation appeared to be small. Considering these findings, we present dynamic changes in the spread of COVID-19 across local municipalities in the GSA as well as regions at elevated risk for further policy intervention.
      CONCLUSIONS: The outcomes of this study can contribute to advancing our understanding of the local-level COVID-19 spread dynamics within densely populated regions in Korea throughout 2020 from a different perspective, and will contribute to the development of regional safety planning against infectious diseases.

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      참고문헌 (Reference)

      1 이진희 ; 박민숙 ; 이상원, "코로나바이러스감염증-19의 시공간적 확산 패턴 및 지역 간 감염 네트워크 분석" 국토연구원 110 : 43-62, 2021

      2 World Health Organization, "WHO coronavirus (COVID-19) dashboard; 2021"

      3 Briz-Redón Á, "The impact of modelling choices on modelling outcomes : a spatio-temporal study of the association between COVID-19 spread and environmental conditions in Catalonia(Spain)" 35 : 1701-1713, 2021

      4 Lee T, "The effect of control measures on COVID-19 transmission in South Korea" 16 : e0249262-, 2021

      5 Park IN, "Stepwise strategy of social distancing in Korea" 35 : e264-, 2020

      6 Cressie NA, "Statistics for spatial data" John Wiley & Sons 402-410, 2015

      7 Kim S, "Spatiotemporal pattern of COVID-19 and government response in South Korea(as of May 31, 2020)" 98 : 328-333, 2020

      8 Shim E, "Spatial variability in reproduction number and doubling time across two waves of the COVID-19 pandemic in South Korea, February to July, 2020" 102 : 1-9, 2021

      9 Kang D, "Spatial epidemic dynamics of the COVID-19 outbreak in China" 94 : 96-102, 2020

      10 Blangiardo M, "Spatial and spatio-temporal Bayesian models with R-INLA" John Wiley & Sons 238-246, 2015

      1 이진희 ; 박민숙 ; 이상원, "코로나바이러스감염증-19의 시공간적 확산 패턴 및 지역 간 감염 네트워크 분석" 국토연구원 110 : 43-62, 2021

      2 World Health Organization, "WHO coronavirus (COVID-19) dashboard; 2021"

      3 Briz-Redón Á, "The impact of modelling choices on modelling outcomes : a spatio-temporal study of the association between COVID-19 spread and environmental conditions in Catalonia(Spain)" 35 : 1701-1713, 2021

      4 Lee T, "The effect of control measures on COVID-19 transmission in South Korea" 16 : e0249262-, 2021

      5 Park IN, "Stepwise strategy of social distancing in Korea" 35 : e264-, 2020

      6 Cressie NA, "Statistics for spatial data" John Wiley & Sons 402-410, 2015

      7 Kim S, "Spatiotemporal pattern of COVID-19 and government response in South Korea(as of May 31, 2020)" 98 : 328-333, 2020

      8 Shim E, "Spatial variability in reproduction number and doubling time across two waves of the COVID-19 pandemic in South Korea, February to July, 2020" 102 : 1-9, 2021

      9 Kang D, "Spatial epidemic dynamics of the COVID-19 outbreak in China" 94 : 96-102, 2020

      10 Blangiardo M, "Spatial and spatio-temporal Bayesian models with R-INLA" John Wiley & Sons 238-246, 2015

      11 Raymundo CE, "Spatial analysis of COVID-19 incidence and the sociodemographic context in Brazil" 16 : e0247794-, 2021

      12 Lai CC, "Severe acute respiratory syndrome coronavirus 2(SARS-CoV-2)and coronavirus disease-2019(COVID-19) : the epidemic and the challenges" 55 : 105924-, 2020

      13 Marquès M, "Positive association between outdoor air pollution and the incidence and severity of COVID-19. A review of the recent scientific evidences" 203 : 111930-, 2022

      14 Simpson D, "Penalising model component complexity : a principled, practical approach to constructing priors" 32 : 1-28, 2017

      15 Organisation for Economic Cooperation and Development (OECD), "OECD regional outlook 2021: addressing COVID-19 and moving to net zero greenhouse gas emissions; 2021"

      16 Anand U, "Novel coronavirus disease 2019(COVID-19)pandemic : from transmission to control with an interdisciplinary vision" 197 : 111126-, 2021

      17 Lee SE, "New social distancing system will have 5 tiers"

      18 National Spatial Data Infrastructure Portal, "Introduction to spatial information portal"

      19 Moraga P, "Geospatial health data: modeling and visualization with R-INLA and shiny" CRC Press 53-58, 2020

      20 Lym Y, "Exploring the effects of PM2. 5 and temperature on COVID-19 transmission in Seoul, South Korea" 203 : 111810-, 2022

      21 Valente F, "Estimating spatiotemporal patterns of deaths by COVID-19 outbreak on a global scale" 11 : e047002-, 2021

      22 Martínez-Beneito MA, "Disease mapping: from foundations to multidimensional modeling" Chapman and Hall/CRC 115-118, 2019

      23 World Health Organization, "Coronavirus disease (COVID-19)"

      24 "Coronavirus (COVID-19), Republic of Korea. Press release: updates on COVID-19 in Republic of Korea (as of 9 March)"

      25 "Coronavirus (COVID-19), Republic of Korea, Cases in Korea"

      26 Fuglstad GA, "Constructing priors that penalize the complexity of Gaussian random fields" 114 : 445-452, 2018

      27 Lee W, "COVID-19 in South Korea : epidemiological and spatiotemporal patterns of the spread and the role of aggressive diagnostic tests in the early phase" 49 : 1106-1116, 2020

      28 Wang X, "Bayesian regression modeling with INLA" Chapman and Hall/CRC 49-54, 2020

      29 Knorr-Held L, "Bayesian modelling of inseparable space-time variation in disease risk" 19 : 2555-2567, 2000

      30 Spiegelhalter DJ, "Bayesian measures of model complexity and fit" 64 : 583-639, 2002

      31 Congdon P, "Bayesian hierarchical models : with applications using R" Chapman & Hall/CRC 221-229, 2021

      32 Lawson A, "Bayesian disease mapping : hierarchical modeling in spatial epidemiology" Chapman & Hall/CRC 84-97, 2021

      33 Rue H, "Approximate Bayesian inference for latent Gaussian models by using integrated nested Laplace approximations" 71 : 319-392, 2009

      34 Riebler A, "An intuitive Bayesian spatial model for disease mapping that accounts for scaling" 25 : 1145-1165, 2016

      35 Ministry of Foreign Affairs, Republic of Korea, "All about Korea’s response to COVID-19; 2020"

      36 Briz-Redón Á, "A spatio-temporal analysis for exploring the effect of temperature on COVID-19 early evolution in Spain" 728 : 138811-, 2020

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      학술지 이력

      학술지 이력
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      2024 평가예정 해외DB학술지평가 신청대상 (해외등재 학술지 평가)
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      2020-12-01 평가 등재 탈락 (해외등재 학술지 평가)
      2018-08-07 학술지명변경 외국어명 : Korean Journal of Epidemiology -> Epidemiology and Health KCI등재
      2017-12-01 평가 SCOPUS 등재 (기타) KCI등재
      2013-12-01 평가 등재후보 탈락 (등재후보2차)
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      2010-01-01 평가 등재후보학술지 선정 (신규평가) KCI등재후보
      2009-10-12 학술지명변경 한글명 : 한국역학회지 -> Epidemiology and Health
      외국어명 : Korean Journal of Epidemiology -> 미등록
      2006-07-21 학회명변경 영문명 : Korean Epidemiological Society -> Korean Society of Epidemiology
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