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Community predictors of COVID‐19 cases and deaths in Massachusetts: Evaluating changes over time using geospatially refined data

BACKGROUND: The COVID‐19 pandemic has highlighted the need for targeted local interventions given substantial heterogeneity within cities and counties. Publicly available case data are typically aggregated to the city or county level to protect patient privacy, but more granular data are necessary t...

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Autores principales: Spangler, Keith R., Patil, Prasad, Peng, Xiaojing, Levy, Jonathan I., Lane, Kevin J., Tieskens, Koen F., Carnes, Fei, Klevens, R. Monina, Erdman, Elizabeth A., Troppy, T. Scott, Fabian, M. Patricia, Leibler, Jessica H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8652977/
https://www.ncbi.nlm.nih.gov/pubmed/34761531
http://dx.doi.org/10.1111/irv.12926
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author Spangler, Keith R.
Patil, Prasad
Peng, Xiaojing
Levy, Jonathan I.
Lane, Kevin J.
Tieskens, Koen F.
Carnes, Fei
Klevens, R. Monina
Erdman, Elizabeth A.
Troppy, T. Scott
Fabian, M. Patricia
Leibler, Jessica H.
author_facet Spangler, Keith R.
Patil, Prasad
Peng, Xiaojing
Levy, Jonathan I.
Lane, Kevin J.
Tieskens, Koen F.
Carnes, Fei
Klevens, R. Monina
Erdman, Elizabeth A.
Troppy, T. Scott
Fabian, M. Patricia
Leibler, Jessica H.
author_sort Spangler, Keith R.
collection PubMed
description BACKGROUND: The COVID‐19 pandemic has highlighted the need for targeted local interventions given substantial heterogeneity within cities and counties. Publicly available case data are typically aggregated to the city or county level to protect patient privacy, but more granular data are necessary to identify and act upon community‐level risk factors that can change over time. METHODS: Individual COVID‐19 case and mortality data from Massachusetts were geocoded to residential addresses and aggregated into two time periods: “Phase 1” (March–June 2020) and “Phase 2” (September 2020 to February 2021). Institutional cases associated with long‐term care facilities, prisons, or homeless shelters were identified using address data and modeled separately. Census tract sociodemographic and occupational predictors were drawn from the 2015–2019 American Community Survey. We used mixed‐effects negative binomial regression to estimate incidence rate ratios (IRRs), accounting for town‐level spatial autocorrelation. RESULTS: Case incidence was elevated in census tracts with higher proportions of Black and Latinx residents, with larger associations in Phase 1 than Phase 2. Case incidence associated with proportion of essential workers was similarly elevated in both Phases. Mortality IRRs had differing patterns from case IRRs, decreasing less substantially between Phases for Black and Latinx populations and increasing between Phases for proportion of essential workers. Mortality models excluding institutional cases yielded stronger associations for age, race/ethnicity, and essential worker status. CONCLUSIONS: Geocoded home address data can allow for nuanced analyses of community disease patterns, identification of high‐risk subgroups, and exclusion of institutional cases to comprehensively reflect community risk.
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spelling pubmed-86529772021-12-08 Community predictors of COVID‐19 cases and deaths in Massachusetts: Evaluating changes over time using geospatially refined data Spangler, Keith R. Patil, Prasad Peng, Xiaojing Levy, Jonathan I. Lane, Kevin J. Tieskens, Koen F. Carnes, Fei Klevens, R. Monina Erdman, Elizabeth A. Troppy, T. Scott Fabian, M. Patricia Leibler, Jessica H. Influenza Other Respir Viruses Original Articles BACKGROUND: The COVID‐19 pandemic has highlighted the need for targeted local interventions given substantial heterogeneity within cities and counties. Publicly available case data are typically aggregated to the city or county level to protect patient privacy, but more granular data are necessary to identify and act upon community‐level risk factors that can change over time. METHODS: Individual COVID‐19 case and mortality data from Massachusetts were geocoded to residential addresses and aggregated into two time periods: “Phase 1” (March–June 2020) and “Phase 2” (September 2020 to February 2021). Institutional cases associated with long‐term care facilities, prisons, or homeless shelters were identified using address data and modeled separately. Census tract sociodemographic and occupational predictors were drawn from the 2015–2019 American Community Survey. We used mixed‐effects negative binomial regression to estimate incidence rate ratios (IRRs), accounting for town‐level spatial autocorrelation. RESULTS: Case incidence was elevated in census tracts with higher proportions of Black and Latinx residents, with larger associations in Phase 1 than Phase 2. Case incidence associated with proportion of essential workers was similarly elevated in both Phases. Mortality IRRs had differing patterns from case IRRs, decreasing less substantially between Phases for Black and Latinx populations and increasing between Phases for proportion of essential workers. Mortality models excluding institutional cases yielded stronger associations for age, race/ethnicity, and essential worker status. CONCLUSIONS: Geocoded home address data can allow for nuanced analyses of community disease patterns, identification of high‐risk subgroups, and exclusion of institutional cases to comprehensively reflect community risk. John Wiley and Sons Inc. 2021-11-10 2022-03 /pmc/articles/PMC8652977/ /pubmed/34761531 http://dx.doi.org/10.1111/irv.12926 Text en © 2021 The Authors. Influenza and Other Respiratory Viruses published by John Wiley & Sons Ltd. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Articles
Spangler, Keith R.
Patil, Prasad
Peng, Xiaojing
Levy, Jonathan I.
Lane, Kevin J.
Tieskens, Koen F.
Carnes, Fei
Klevens, R. Monina
Erdman, Elizabeth A.
Troppy, T. Scott
Fabian, M. Patricia
Leibler, Jessica H.
Community predictors of COVID‐19 cases and deaths in Massachusetts: Evaluating changes over time using geospatially refined data
title Community predictors of COVID‐19 cases and deaths in Massachusetts: Evaluating changes over time using geospatially refined data
title_full Community predictors of COVID‐19 cases and deaths in Massachusetts: Evaluating changes over time using geospatially refined data
title_fullStr Community predictors of COVID‐19 cases and deaths in Massachusetts: Evaluating changes over time using geospatially refined data
title_full_unstemmed Community predictors of COVID‐19 cases and deaths in Massachusetts: Evaluating changes over time using geospatially refined data
title_short Community predictors of COVID‐19 cases and deaths in Massachusetts: Evaluating changes over time using geospatially refined data
title_sort community predictors of covid‐19 cases and deaths in massachusetts: evaluating changes over time using geospatially refined data
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8652977/
https://www.ncbi.nlm.nih.gov/pubmed/34761531
http://dx.doi.org/10.1111/irv.12926
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