Prediction of COVID-19 Social Distancing Adherence (SoDA) on the United States county-level

Abstract Social distancing policies are currently the best method of mitigating the spread of the COVID-19 pandemic. However, adherence to these policies vary greatly on a county-by-county level. We used social distancing adherence (SoDA) estimated from mobile phone data and population-based demogra...

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Main Authors: Myles Ingram, Ashley Zahabian, Chin Hur
Format: Article
Language:English
Published: Springer Nature 2021-03-01
Series:Humanities & Social Sciences Communications
Online Access:https://doi.org/10.1057/s41599-021-00767-0
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spelling doaj-0263e28e4a084eb59d641e29909b98e82021-03-28T11:05:57ZengSpringer NatureHumanities & Social Sciences Communications2662-99922021-03-01811710.1057/s41599-021-00767-0Prediction of COVID-19 Social Distancing Adherence (SoDA) on the United States county-levelMyles Ingram0Ashley Zahabian1Chin Hur2Department of Medicine, Columbia University Irving Medical CenterDepartment of Psychology, Columbia UniversityDepartment of Medicine, Columbia University Irving Medical CenterAbstract Social distancing policies are currently the best method of mitigating the spread of the COVID-19 pandemic. However, adherence to these policies vary greatly on a county-by-county level. We used social distancing adherence (SoDA) estimated from mobile phone data and population-based demographics/statistics of 3054 counties in the United States to determine which demographics features correlate to adherence on a countywide level. SoDA scores per day were extracted from mobile phone data and aggregated from March 16, 2020 to April 14, 2020. 45 predictor features were evaluated using univariable regression to determine their level of correlation with SoDA. These 45 features were then used to form a SoDA prediction model. Persons who work from home prior to the COVID-19 pandemic (β = 0.259, p < 0.00001) and owner-occupied housing unit rate (β = −0.322, p < 0.00001) were the most positively correlated and negatively correlated features to SoDA, respectively. Counties with higher per capita income, older persons, and more suburban areas were positively associated with adherence while counties with higher African American population, high obesity rate, earlier first COVID-19 case/death, and more Republican-leaning residents were negatively correlated with adherence. The base model predicted county SoDA with 90.8% accuracy. The model using only COVID-19-related features predicted with 64% accuracy and the model using the top 25 most substantial features predicted with 89% accuracy. Our results indicate that economic features, health features, and a few other features, such as political affiliation, race, and the time since the first case/death, impact SoDA on a countywide level. These features, combined, can predict adherence with a high level of confidence. Our prediction model could be utilized to inform health policy planning and potential interventions in areas with lower adherence.https://doi.org/10.1057/s41599-021-00767-0
collection DOAJ
language English
format Article
sources DOAJ
author Myles Ingram
Ashley Zahabian
Chin Hur
spellingShingle Myles Ingram
Ashley Zahabian
Chin Hur
Prediction of COVID-19 Social Distancing Adherence (SoDA) on the United States county-level
Humanities & Social Sciences Communications
author_facet Myles Ingram
Ashley Zahabian
Chin Hur
author_sort Myles Ingram
title Prediction of COVID-19 Social Distancing Adherence (SoDA) on the United States county-level
title_short Prediction of COVID-19 Social Distancing Adherence (SoDA) on the United States county-level
title_full Prediction of COVID-19 Social Distancing Adherence (SoDA) on the United States county-level
title_fullStr Prediction of COVID-19 Social Distancing Adherence (SoDA) on the United States county-level
title_full_unstemmed Prediction of COVID-19 Social Distancing Adherence (SoDA) on the United States county-level
title_sort prediction of covid-19 social distancing adherence (soda) on the united states county-level
publisher Springer Nature
series Humanities & Social Sciences Communications
issn 2662-9992
publishDate 2021-03-01
description Abstract Social distancing policies are currently the best method of mitigating the spread of the COVID-19 pandemic. However, adherence to these policies vary greatly on a county-by-county level. We used social distancing adherence (SoDA) estimated from mobile phone data and population-based demographics/statistics of 3054 counties in the United States to determine which demographics features correlate to adherence on a countywide level. SoDA scores per day were extracted from mobile phone data and aggregated from March 16, 2020 to April 14, 2020. 45 predictor features were evaluated using univariable regression to determine their level of correlation with SoDA. These 45 features were then used to form a SoDA prediction model. Persons who work from home prior to the COVID-19 pandemic (β = 0.259, p < 0.00001) and owner-occupied housing unit rate (β = −0.322, p < 0.00001) were the most positively correlated and negatively correlated features to SoDA, respectively. Counties with higher per capita income, older persons, and more suburban areas were positively associated with adherence while counties with higher African American population, high obesity rate, earlier first COVID-19 case/death, and more Republican-leaning residents were negatively correlated with adherence. The base model predicted county SoDA with 90.8% accuracy. The model using only COVID-19-related features predicted with 64% accuracy and the model using the top 25 most substantial features predicted with 89% accuracy. Our results indicate that economic features, health features, and a few other features, such as political affiliation, race, and the time since the first case/death, impact SoDA on a countywide level. These features, combined, can predict adherence with a high level of confidence. Our prediction model could be utilized to inform health policy planning and potential interventions in areas with lower adherence.
url https://doi.org/10.1057/s41599-021-00767-0
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