Literature DB >> 33301418

Monitoring the Spatial Spread of COVID-19 and Effectiveness of Control Measures Through Human Movement Data: Proposal for a Predictive Model Using Big Data Analytics.

Zhenlong Li1, Xiaoming Li2, Dwayne Porter3, Jiajia Zhang4, Yuqin Jiang1, Bankole Olatosi5, Sharon Weissman6.   

Abstract

BACKGROUND: Human movement is one of the forces that drive the spatial spread of infectious diseases. To date, reducing and tracking human movement during the COVID-19 pandemic has proven effective in limiting the spread of the virus. Existing methods for monitoring and modeling the spatial spread of infectious diseases rely on various data sources as proxies of human movement, such as airline travel data, mobile phone data, and banknote tracking. However, intrinsic limitations of these data sources prevent us from systematic monitoring and analyses of human movement on different spatial scales (from local to global).
OBJECTIVE: Big data from social media such as geotagged tweets have been widely used in human mobility studies, yet more research is needed to validate the capabilities and limitations of using such data for studying human movement at different geographic scales (eg, from local to global) in the context of global infectious disease transmission. This study aims to develop a novel data-driven public health approach using big data from Twitter coupled with other human mobility data sources and artificial intelligence to monitor and analyze human movement at different spatial scales (from global to regional to local).
METHODS: We will first develop a database with optimized spatiotemporal indexing to store and manage the multisource data sets collected in this project. This database will be connected to our in-house Hadoop computing cluster for efficient big data computing and analytics. We will then develop innovative data models, predictive models, and computing algorithms to effectively extract and analyze human movement patterns using geotagged big data from Twitter and other human mobility data sources, with the goal of enhancing situational awareness and risk prediction in public health emergency response and disease surveillance systems.
RESULTS: This project was funded as of May 2020. We have started the data collection, processing, and analysis for the project.
CONCLUSIONS: Research findings can help government officials, public health managers, emergency responders, and researchers answer critical questions during the pandemic regarding the current and future infectious risk of a state, county, or community and the effectiveness of social/physical distancing practices in curtailing the spread of the virus. INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): DERR1-10.2196/24432. ©Zhenlong Li, Xiaoming Li, Dwayne Porter, Jiajia Zhang, Yuqin Jiang, Bankole Olatosi, Sharon Weissman. Originally published in JMIR Research Protocols (http://www.researchprotocols.org), 18.12.2020.

Entities:  

Keywords:  COVID-19; artificial intelligence; big data; human movement; spatial computing

Year:  2020        PMID: 33301418     DOI: 10.2196/24432

Source DB:  PubMed          Journal:  JMIR Res Protoc        ISSN: 1929-0748


  5 in total

Review 1.  A review of GIS methodologies to analyze the dynamics of COVID-19 in the second half of 2020.

Authors:  Ivan Franch-Pardo; Michael R Desjardins; Isabel Barea-Navarro; Artemi Cerdà
Journal:  Trans GIS       Date:  2021-07-11

2.  Spatial-temporal relationship between population mobility and COVID-19 outbreaks in South Carolina: A time series forecasting analysis.

Authors:  Chengbo Zeng; Jiajia Zhang; Zhenlong Li; Xiaowen Sun; Bankole Olatosi; Sharon Weissman; Xiaoming Li
Journal:  medRxiv       Date:  2021-01-08

3.  A high-resolution temporal and geospatial content analysis of Twitter posts related to the COVID-19 pandemic.

Authors:  Charalampos Ntompras; George Drosatos; Eleni Kaldoudi
Journal:  J Comput Soc Sci       Date:  2021-10-20

4.  Identifying the Socioeconomic, Demographic, and Political Determinants of Social Mobility and Their Effects on COVID-19 Cases and Deaths: Evidence From US Counties.

Authors:  Niloofar Jalali; N Ken Tran; Anindya Sen; Plinio Pelegrini Morita
Journal:  JMIR Infodemiology       Date:  2022-03-03

5.  Measuring global multi-scale place connectivity using geotagged social media data.

Authors:  Zhenlong Li; Xiao Huang; Xinyue Ye; Yuqin Jiang; Yago Martin; Huan Ning; Michael E Hodgson; Xiaoming Li
Journal:  Sci Rep       Date:  2021-07-19       Impact factor: 4.379

  5 in total

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