Causal Analysis of Health Interventions and Environments for Influencing the Spread of COVID-19 in the United States of America
Given the lack of potential vaccines and effective medications, non-pharmaceutical interventions are the major option to curtail the spread of COVID-19. An accurate estimate of the potential impact of different non-pharmaceutical measures on containing, and identify risk factors influencing the spre...
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doaj-a438043fa01443359a03888751d5e5e92021-01-25T04:24:58ZengFrontiers Media S.A.Frontiers in Applied Mathematics and Statistics2297-46872021-01-01610.3389/fams.2020.611805611805Causal Analysis of Health Interventions and Environments for Influencing the Spread of COVID-19 in the United States of AmericaZhouxuan Li0Tao Xu1Kai Zhang2Hong-Wen Deng3Eric Boerwinkle4Momiao Xiong5School of Public Health, The University of Texas Health Science Center at Houston, Houston, TX, United StatesSchool of Public Health, The University of Texas Health Science Center at Houston, Houston, TX, United StatesSchool of Public Health, The University of Texas Health Science Center at Houston, Houston, TX, United StatesTulane Center of Biomedical Informatics and Genomics, Deming Department of Medicine, School of Medicine, Tulane University, New Orleans, LA, United StatesSchool of Public Health, The University of Texas Health Science Center at Houston, Houston, TX, United StatesSchool of Public Health, The University of Texas Health Science Center at Houston, Houston, TX, United StatesGiven the lack of potential vaccines and effective medications, non-pharmaceutical interventions are the major option to curtail the spread of COVID-19. An accurate estimate of the potential impact of different non-pharmaceutical measures on containing, and identify risk factors influencing the spread of COVID-19 is crucial for planning the most effective interventions to curb the spread of COVID-19 and to reduce the deaths. Additive model-based bivariate causal discovery for scalar factors and multivariate Granger causality tests for time series factors are applied to the surveillance data of lab-confirmed Covid-19 cases in the US, University of Maryland Data (UMD) data, and Google mobility data from March 5, 2020 to August 25, 2020 in order to evaluate the contributions of social-biological factors, economics, the Google mobility indexes, and the rate of the virus test to the number of the new cases and number of deaths from COVID-19. We found that active cases/1,000 people, workplaces, tests done/1,000 people, imported COVID-19 cases, unemployment rate and unemployment claims/1,000 people, mobility trends for places of residence (residential), retail and test capacity were the popular significant risk factor for the new cases of COVID-19, and that active cases/1,000 people, workplaces, residential, unemployment rate, imported COVID cases, unemployment claims/1,000 people, transit stations, mobility trends (transit), tests done/1,000 people, grocery, testing capacity, retail, percentage of change in consumption, percentage of working from home were the popular significant risk factor for the deaths of COVID-19. We observed that no metrics showed significant evidence in mitigating the COVID-19 epidemic in FL and only a few metrics showed evidence in reducing the number of new cases of COVID-19 in AZ, NY and TX. Our results showed that the majority of non-pharmaceutical interventions had a large effect on slowing the transmission and reducing deaths, and that health interventions were still needed to contain COVID-19.https://www.frontiersin.org/articles/10.3389/fams.2020.611805/fullCOVID-19causal inferencetime seriescontrol of the spreadtransmission dynamicspublic health interventions |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhouxuan Li Tao Xu Kai Zhang Hong-Wen Deng Eric Boerwinkle Momiao Xiong |
spellingShingle |
Zhouxuan Li Tao Xu Kai Zhang Hong-Wen Deng Eric Boerwinkle Momiao Xiong Causal Analysis of Health Interventions and Environments for Influencing the Spread of COVID-19 in the United States of America Frontiers in Applied Mathematics and Statistics COVID-19 causal inference time series control of the spread transmission dynamics public health interventions |
author_facet |
Zhouxuan Li Tao Xu Kai Zhang Hong-Wen Deng Eric Boerwinkle Momiao Xiong |
author_sort |
Zhouxuan Li |
title |
Causal Analysis of Health Interventions and Environments for Influencing the Spread of COVID-19 in the United States of America |
title_short |
Causal Analysis of Health Interventions and Environments for Influencing the Spread of COVID-19 in the United States of America |
title_full |
Causal Analysis of Health Interventions and Environments for Influencing the Spread of COVID-19 in the United States of America |
title_fullStr |
Causal Analysis of Health Interventions and Environments for Influencing the Spread of COVID-19 in the United States of America |
title_full_unstemmed |
Causal Analysis of Health Interventions and Environments for Influencing the Spread of COVID-19 in the United States of America |
title_sort |
causal analysis of health interventions and environments for influencing the spread of covid-19 in the united states of america |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Applied Mathematics and Statistics |
issn |
2297-4687 |
publishDate |
2021-01-01 |
description |
Given the lack of potential vaccines and effective medications, non-pharmaceutical interventions are the major option to curtail the spread of COVID-19. An accurate estimate of the potential impact of different non-pharmaceutical measures on containing, and identify risk factors influencing the spread of COVID-19 is crucial for planning the most effective interventions to curb the spread of COVID-19 and to reduce the deaths. Additive model-based bivariate causal discovery for scalar factors and multivariate Granger causality tests for time series factors are applied to the surveillance data of lab-confirmed Covid-19 cases in the US, University of Maryland Data (UMD) data, and Google mobility data from March 5, 2020 to August 25, 2020 in order to evaluate the contributions of social-biological factors, economics, the Google mobility indexes, and the rate of the virus test to the number of the new cases and number of deaths from COVID-19. We found that active cases/1,000 people, workplaces, tests done/1,000 people, imported COVID-19 cases, unemployment rate and unemployment claims/1,000 people, mobility trends for places of residence (residential), retail and test capacity were the popular significant risk factor for the new cases of COVID-19, and that active cases/1,000 people, workplaces, residential, unemployment rate, imported COVID cases, unemployment claims/1,000 people, transit stations, mobility trends (transit), tests done/1,000 people, grocery, testing capacity, retail, percentage of change in consumption, percentage of working from home were the popular significant risk factor for the deaths of COVID-19. We observed that no metrics showed significant evidence in mitigating the COVID-19 epidemic in FL and only a few metrics showed evidence in reducing the number of new cases of COVID-19 in AZ, NY and TX. Our results showed that the majority of non-pharmaceutical interventions had a large effect on slowing the transmission and reducing deaths, and that health interventions were still needed to contain COVID-19. |
topic |
COVID-19 causal inference time series control of the spread transmission dynamics public health interventions |
url |
https://www.frontiersin.org/articles/10.3389/fams.2020.611805/full |
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