Predictive modeling of COVID-19 case growth highlights evolving racial and ethnic risk factors in Tennessee and Georgia

Introduction The SARS-CoV-2 (COVID-19) pandemic has exposed the need to understand the risk drivers that contribute to uneven morbidity and mortality in US communities. Addressing the community-specific social determinants of health (SDOH) that correlate with spread of SARS-CoV-2 provides an opportu...

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Published in:BMJ Health & Care Informatics
Main Authors: Jamieson D Gray, Coleman R Harris, Lukasz S Wylezinski, Charles F Spurlock, III
Format: Article
Language:English
Published: BMJ Publishing Group 2021-03-01
Online Access:https://informatics.bmj.com/content/28/1/e100349.full
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author Jamieson D Gray
Coleman R Harris
Lukasz S Wylezinski
Charles F Spurlock, III
author_facet Jamieson D Gray
Coleman R Harris
Lukasz S Wylezinski
Charles F Spurlock, III
author_sort Jamieson D Gray
collection DOAJ
container_title BMJ Health & Care Informatics
description Introduction The SARS-CoV-2 (COVID-19) pandemic has exposed the need to understand the risk drivers that contribute to uneven morbidity and mortality in US communities. Addressing the community-specific social determinants of health (SDOH) that correlate with spread of SARS-CoV-2 provides an opportunity for targeted public health intervention to promote greater resilience to viral respiratory infections.Methods Our work combined publicly available COVID-19 statistics with county-level SDOH information. Machine learning models were trained to predict COVID-19 case growth and understand the social, physical and environmental risk factors associated with higher rates of SARS-CoV-2 infection in Tennessee and Georgia counties. Model accuracy was assessed comparing predicted case counts to actual positive case counts in each county.Results The predictive models achieved a mean R2 of 0.998 in both states with accuracy above 90% for all time points examined. Using these models, we tracked the importance of SDOH data features over time to uncover the specific racial demographic characteristics strongly associated with COVID-19 incidence in Tennessee and Georgia counties. Our results point to dynamic racial trends in both states over time and varying, localized patterns of risk among counties within the same state. For example, we find that African American and Asian racial demographics present comparable, and contrasting, patterns of risk depending on locality.Conclusion The dichotomy of demographic trends presented here emphasizes the importance of understanding the unique factors that influence COVID-19 incidence. Identifying these specific risk factors tied to COVID-19 case growth can help stakeholders target regional interventions to mitigate the burden of future outbreaks.
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spelling doaj-art-e46cd406cf684df0ba8478bfa7007fa82025-08-20T00:54:13ZengBMJ Publishing GroupBMJ Health & Care Informatics2632-10092021-03-0128110.1136/bmjhci-2021-100349Predictive modeling of COVID-19 case growth highlights evolving racial and ethnic risk factors in Tennessee and GeorgiaJamieson D Gray0Coleman R Harris1Lukasz S Wylezinski2Charles F Spurlock, III3Decode Health, Inc. and IQuity Labs, Inc, Nashville, Tennessee, USADecode Health, Inc. and IQuity Labs, Inc, Nashville, Tennessee, USADecode Health, Inc. and IQuity Labs, Inc, Nashville, Tennessee, USADecode Health, Inc. and IQuity Labs, Inc, Nashville, Tennessee, USAIntroduction The SARS-CoV-2 (COVID-19) pandemic has exposed the need to understand the risk drivers that contribute to uneven morbidity and mortality in US communities. Addressing the community-specific social determinants of health (SDOH) that correlate with spread of SARS-CoV-2 provides an opportunity for targeted public health intervention to promote greater resilience to viral respiratory infections.Methods Our work combined publicly available COVID-19 statistics with county-level SDOH information. Machine learning models were trained to predict COVID-19 case growth and understand the social, physical and environmental risk factors associated with higher rates of SARS-CoV-2 infection in Tennessee and Georgia counties. Model accuracy was assessed comparing predicted case counts to actual positive case counts in each county.Results The predictive models achieved a mean R2 of 0.998 in both states with accuracy above 90% for all time points examined. Using these models, we tracked the importance of SDOH data features over time to uncover the specific racial demographic characteristics strongly associated with COVID-19 incidence in Tennessee and Georgia counties. Our results point to dynamic racial trends in both states over time and varying, localized patterns of risk among counties within the same state. For example, we find that African American and Asian racial demographics present comparable, and contrasting, patterns of risk depending on locality.Conclusion The dichotomy of demographic trends presented here emphasizes the importance of understanding the unique factors that influence COVID-19 incidence. Identifying these specific risk factors tied to COVID-19 case growth can help stakeholders target regional interventions to mitigate the burden of future outbreaks.https://informatics.bmj.com/content/28/1/e100349.full
spellingShingle Jamieson D Gray
Coleman R Harris
Lukasz S Wylezinski
Charles F Spurlock, III
Predictive modeling of COVID-19 case growth highlights evolving racial and ethnic risk factors in Tennessee and Georgia
title Predictive modeling of COVID-19 case growth highlights evolving racial and ethnic risk factors in Tennessee and Georgia
title_full Predictive modeling of COVID-19 case growth highlights evolving racial and ethnic risk factors in Tennessee and Georgia
title_fullStr Predictive modeling of COVID-19 case growth highlights evolving racial and ethnic risk factors in Tennessee and Georgia
title_full_unstemmed Predictive modeling of COVID-19 case growth highlights evolving racial and ethnic risk factors in Tennessee and Georgia
title_short Predictive modeling of COVID-19 case growth highlights evolving racial and ethnic risk factors in Tennessee and Georgia
title_sort predictive modeling of covid 19 case growth highlights evolving racial and ethnic risk factors in tennessee and georgia
url https://informatics.bmj.com/content/28/1/e100349.full
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