Your browser doesn't support javascript.
loading
COPEWELL: A Conceptual Framework and System Dynamics Model for Predicting Community Functioning and Resilience After Disasters.
Links, Jonathan M; Schwartz, Brian S; Lin, Sen; Kanarek, Norma; Mitrani-Reiser, Judith; Sell, Tara Kirk; Watson, Crystal R; Ward, Doug; Slemp, Cathy; Burhans, Robert; Gill, Kimberly; Igusa, Tak; Zhao, Xilei; Aguirre, Benigno; Trainor, Joseph; Nigg, Joanne; Inglesby, Thomas; Carbone, Eric; Kendra, James M.
Afiliação
  • Links JM; 1Department of Environmental Health and Engineering,Johns Hopkins Bloomberg School of Public Health,Baltimore,Maryland.
  • Schwartz BS; 1Department of Environmental Health and Engineering,Johns Hopkins Bloomberg School of Public Health,Baltimore,Maryland.
  • Lin S; 3Department of Civil Engineering,Johns Hopkins Whiting School of Engineering,Baltimore,Maryland.
  • Kanarek N; 1Department of Environmental Health and Engineering,Johns Hopkins Bloomberg School of Public Health,Baltimore,Maryland.
  • Mitrani-Reiser J; 3Department of Civil Engineering,Johns Hopkins Whiting School of Engineering,Baltimore,Maryland.
  • Sell TK; 1Department of Environmental Health and Engineering,Johns Hopkins Bloomberg School of Public Health,Baltimore,Maryland.
  • Watson CR; 1Department of Environmental Health and Engineering,Johns Hopkins Bloomberg School of Public Health,Baltimore,Maryland.
  • Ward D; 4Division of Public Safety Leadership,Johns Hopkins School of Education,Baltimore,Maryland.
  • Slemp C; 9Independent Consultants.
  • Burhans R; 9Independent Consultants.
  • Gill K; 6Disaster Research Center,University of Delaware,Newark,Delaware.
  • Igusa T; 3Department of Civil Engineering,Johns Hopkins Whiting School of Engineering,Baltimore,Maryland.
  • Zhao X; 3Department of Civil Engineering,Johns Hopkins Whiting School of Engineering,Baltimore,Maryland.
  • Aguirre B; 6Disaster Research Center,University of Delaware,Newark,Delaware.
  • Trainor J; 6Disaster Research Center,University of Delaware,Newark,Delaware.
  • Nigg J; 6Disaster Research Center,University of Delaware,Newark,Delaware.
  • Inglesby T; 1Department of Environmental Health and Engineering,Johns Hopkins Bloomberg School of Public Health,Baltimore,Maryland.
  • Carbone E; 7Office of Public Health Preparedness and Response,Centers for Disease Control and Prevention,Atlanta,Georgia.
  • Kendra JM; 6Disaster Research Center,University of Delaware,Newark,Delaware.
Disaster Med Public Health Prep ; 12(1): 127-137, 2018 Feb.
Article em En | MEDLINE | ID: mdl-28633681
OBJECTIVE: Policy-makers and practitioners have a need to assess community resilience in disasters. Prior efforts conflated resilience with community functioning, combined resistance and recovery (the components of resilience), and relied on a static model for what is inherently a dynamic process. We sought to develop linked conceptual and computational models of community functioning and resilience after a disaster. METHODS: We developed a system dynamics computational model that predicts community functioning after a disaster. The computational model outputted the time course of community functioning before, during, and after a disaster, which was used to calculate resistance, recovery, and resilience for all US counties. RESULTS: The conceptual model explicitly separated resilience from community functioning and identified all key components for each, which were translated into a system dynamics computational model with connections and feedbacks. The components were represented by publicly available measures at the county level. Baseline community functioning, resistance, recovery, and resilience evidenced a range of values and geographic clustering, consistent with hypotheses based on the disaster literature. CONCLUSIONS: The work is transparent, motivates ongoing refinements, and identifies areas for improved measurements. After validation, such a model can be used to identify effective investments to enhance community resilience. (Disaster Med Public Health Preparedness. 2018;12:127-137).
Assuntos
Palavras-chave

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Adaptação Psicológica / Características de Residência / Vítimas de Desastres / Planejamento em Desastres / Modelos Teóricos Tipo de estudo: Prognostic_studies / Risk_factors_studies Limite: Humans Idioma: En Ano de publicação: 2018 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Adaptação Psicológica / Características de Residência / Vítimas de Desastres / Planejamento em Desastres / Modelos Teóricos Tipo de estudo: Prognostic_studies / Risk_factors_studies Limite: Humans Idioma: En Ano de publicação: 2018 Tipo de documento: Article