Literature DB >> 33784239

Spatial-Temporal Relationship Between Population Mobility and COVID-19 Outbreaks in South Carolina: Time Series Forecasting Analysis.

Chengbo Zeng1,2,3, Jiajia Zhang1,3,4, Zhenlong Li1,3,5, Xiaowen Sun1,3,4, Bankole Olatosi1,3,6, Sharon Weissman1,3,7, Xiaoming Li1,2,3.   

Abstract

BACKGROUND: Population mobility is closely associated with COVID-19 transmission, and it could be used as a proximal indicator to predict future outbreaks, which could inform proactive nonpharmaceutical interventions for disease control. South Carolina is one of the US states that reopened early, following which it experienced a sharp increase in COVID-19 cases.
OBJECTIVE: The aims of this study are to examine the spatial-temporal relationship between population mobility and COVID-19 outbreaks and use population mobility data to predict daily new cases at both the state and county level in South Carolina.
METHODS: This longitudinal study used disease surveillance data and Twitter-based population mobility data from March 6 to November 11, 2020, in South Carolina and its five counties with the largest number of cumulative confirmed COVID-19 cases. Population mobility was assessed based on the number of Twitter users with a travel distance greater than 0.5 miles. A Poisson count time series model was employed for COVID-19 forecasting.
RESULTS: Population mobility was positively associated with state-level daily COVID-19 incidence as well as incidence in the top five counties (ie, Charleston, Greenville, Horry, Spartanburg, and Richland). At the state level, the final model with a time window within the last 7 days had the smallest prediction error, and the prediction accuracy was as high as 98.7%, 90.9%, and 81.6% for the next 3, 7, and 14 days, respectively. Among Charleston, Greenville, Horry, Spartanburg, and Richland counties, the best predictive models were established based on their observations in the last 9, 14, 28, 20, and 9 days, respectively. The 14-day prediction accuracy ranged from 60.3%-74.5%.
CONCLUSIONS: Using Twitter-based population mobility data could provide acceptable predictions of COVID-19 daily new cases at both the state and county level in South Carolina. Population mobility measured via social media data could inform proactive measures and resource relocations to curb disease outbreaks and their negative influences. ©Chengbo Zeng, Jiajia Zhang, Zhenlong Li, Xiaowen Sun, Bankole Olatosi, Sharon Weissman, Xiaoming Li. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 13.04.2021.

Entities:  

Keywords:  COVID-19; South Carolina; incidence; mobility

Mesh:

Year:  2021        PMID: 33784239     DOI: 10.2196/27045

Source DB:  PubMed          Journal:  J Med Internet Res        ISSN: 1438-8871            Impact factor:   5.428


  5 in total

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Authors:  Jiao Zhou; Xinran Liu; Yu Feng; Juan Li; Xiangquan Qin; Yixuan Huang; Huanzuo Yang; Mengxue Qiu; Yang Liu; Hongsheng Ma; Qing Lv; Zhenggui Du
Journal:  Gland Surg       Date:  2021-08

2.  Population Mobility and Aging Accelerate the Transmission of Coronavirus Disease 2019 in the Deep South: A County-Level Longitudinal Analysis.

Authors:  Chengbo Zeng; Jiajia Zhang; Zhenlong Li; Xiaowen Sun; Xueying Yang; Bankole Olatosi; Sharon Weissman; Xiaoming Li
Journal:  Clin Infect Dis       Date:  2022-05-15       Impact factor: 20.999

3.  A data-driven hybrid ensemble AI model for COVID-19 infection forecast using multiple neural networks and reinforced learning.

Authors:  Weiqiu Jin; Shuqing Dong; Chengqing Yu; Qingquan Luo
Journal:  Comput Biol Med       Date:  2022-04-27       Impact factor: 6.698

4.  Social media mining under the COVID-19 context: Progress, challenges, and opportunities.

Authors:  Xiao Huang; Siqin Wang; Mengxi Zhang; Tao Hu; Alexander Hohl; Bing She; Xi Gong; Jianxin Li; Xiao Liu; Oliver Gruebner; Regina Liu; Xiao Li; Zhewei Liu; Xinyue Ye; Zhenlong Li
Journal:  Int J Appl Earth Obs Geoinf       Date:  2022-08-19

5.  Revealing geographic transmission pattern of COVID-19 using neighborhood-level simulation with human mobility data and SEIR model: A Case Study of South Carolina.

Authors:  Huan Ning; Zhenlong Li; Shan Qiao; Chengbo Zeng; Jiajia Zhang; Bankole Olatosi; Xiaoming Li
Journal:  medRxiv       Date:  2022-08-17
  5 in total

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