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COVID-19 severity determinants inferred through ecological and epidemiological modeling

Understanding variations in the severity of infectious diseases is essential for planning proper mitigation strategies. Determinants of COVID-19 clinical severity are commonly assessed by transverse or longitudinal studies of the fatality counts. However, the fatality counts depend both on disease c...

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Autores principales: Markovic, Sofija, Rodic, Andjela, Salom, Igor, Milicevic, Ognjen, Djordjevic, Magdalena, Djordjevic, Marko
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8626896/
https://www.ncbi.nlm.nih.gov/pubmed/34869819
http://dx.doi.org/10.1016/j.onehlt.2021.100355
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author Markovic, Sofija
Rodic, Andjela
Salom, Igor
Milicevic, Ognjen
Djordjevic, Magdalena
Djordjevic, Marko
author_facet Markovic, Sofija
Rodic, Andjela
Salom, Igor
Milicevic, Ognjen
Djordjevic, Magdalena
Djordjevic, Marko
author_sort Markovic, Sofija
collection PubMed
description Understanding variations in the severity of infectious diseases is essential for planning proper mitigation strategies. Determinants of COVID-19 clinical severity are commonly assessed by transverse or longitudinal studies of the fatality counts. However, the fatality counts depend both on disease clinical severity and transmissibility, as more infected also lead to more deaths. Instead, we use epidemiological modeling to propose a disease severity measure that accounts for the underlying disease dynamics. The measure corresponds to the ratio of population-averaged mortality and recovery rates (m/r), is independent of the disease transmission dynamics (i.e., the basic reproduction number), and has a direct mechanistic interpretation. We use this measure to assess demographic, medical, meteorological, and environmental factors associated with the disease severity. For this, we employ an ecological regression study design and analyze different US states during the first disease outbreak. Principal Component Analysis, followed by univariate, and multivariate analyses based on machine learning techniques, is used for selecting important predictors. The usefulness of the introduced severity measure and the validity of the approach are confirmed by the fact that, without using prior knowledge from clinical studies, we recover the main significant predictors known to influence disease severity, in particular age, chronic diseases, and racial factors. Additionally, we identify long-term pollution exposure and population density as not widely recognized (though for the pollution previously hypothesized) significant predictors. The proposed measure is applicable for inferring severity determinants not only of COVID-19 but also of other infectious diseases, and the obtained results may aid a better understanding of the present and future epidemics. Our holistic, systematic investigation of disease severity at the human-environment intersection by epidemiological dynamical modeling and machine learning ecological regressions is aligned with the One Health approach. The obtained results emphasize a syndemic nature of COVID-19 risks.
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spelling pubmed-86268962021-11-29 COVID-19 severity determinants inferred through ecological and epidemiological modeling Markovic, Sofija Rodic, Andjela Salom, Igor Milicevic, Ognjen Djordjevic, Magdalena Djordjevic, Marko One Health Research Paper Understanding variations in the severity of infectious diseases is essential for planning proper mitigation strategies. Determinants of COVID-19 clinical severity are commonly assessed by transverse or longitudinal studies of the fatality counts. However, the fatality counts depend both on disease clinical severity and transmissibility, as more infected also lead to more deaths. Instead, we use epidemiological modeling to propose a disease severity measure that accounts for the underlying disease dynamics. The measure corresponds to the ratio of population-averaged mortality and recovery rates (m/r), is independent of the disease transmission dynamics (i.e., the basic reproduction number), and has a direct mechanistic interpretation. We use this measure to assess demographic, medical, meteorological, and environmental factors associated with the disease severity. For this, we employ an ecological regression study design and analyze different US states during the first disease outbreak. Principal Component Analysis, followed by univariate, and multivariate analyses based on machine learning techniques, is used for selecting important predictors. The usefulness of the introduced severity measure and the validity of the approach are confirmed by the fact that, without using prior knowledge from clinical studies, we recover the main significant predictors known to influence disease severity, in particular age, chronic diseases, and racial factors. Additionally, we identify long-term pollution exposure and population density as not widely recognized (though for the pollution previously hypothesized) significant predictors. The proposed measure is applicable for inferring severity determinants not only of COVID-19 but also of other infectious diseases, and the obtained results may aid a better understanding of the present and future epidemics. Our holistic, systematic investigation of disease severity at the human-environment intersection by epidemiological dynamical modeling and machine learning ecological regressions is aligned with the One Health approach. The obtained results emphasize a syndemic nature of COVID-19 risks. Elsevier 2021-11-27 /pmc/articles/PMC8626896/ /pubmed/34869819 http://dx.doi.org/10.1016/j.onehlt.2021.100355 Text en © 2021 The Authors https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Research Paper
Markovic, Sofija
Rodic, Andjela
Salom, Igor
Milicevic, Ognjen
Djordjevic, Magdalena
Djordjevic, Marko
COVID-19 severity determinants inferred through ecological and epidemiological modeling
title COVID-19 severity determinants inferred through ecological and epidemiological modeling
title_full COVID-19 severity determinants inferred through ecological and epidemiological modeling
title_fullStr COVID-19 severity determinants inferred through ecological and epidemiological modeling
title_full_unstemmed COVID-19 severity determinants inferred through ecological and epidemiological modeling
title_short COVID-19 severity determinants inferred through ecological and epidemiological modeling
title_sort covid-19 severity determinants inferred through ecological and epidemiological modeling
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8626896/
https://www.ncbi.nlm.nih.gov/pubmed/34869819
http://dx.doi.org/10.1016/j.onehlt.2021.100355
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