학술논문

Epidemic Spread Modeling for COVID-19 Using Cross-Fertilization of Mobility Data
Document Type
Periodical
Source
IEEE Transactions on Big Data IEEE Trans. Big Data Big Data, IEEE Transactions on. 9(5):1260-1275 Oct, 2023
Subject
Computing and Processing
COVID-19
Diseases
Data models
Predictive models
Data mining
Analytical models
Urban areas
Data analysis
simulation models
individual-centric models
disease spread modeling
cross-fertilization
Language
ISSN
2332-7790
2372-2096
Abstract
We present an individual-centric model for COVID-19 spread in an urban setting. We first analyze patient and route data of infected patients from January 20, 2020, to May 31, 2020, collected by the Korean Center for Disease Control & Prevention (KCDC) and discover how infection clusters develop as a function of time. This analysis offers a statistical characterization of mobility habits and patterns of individuals at the beginning of the pandemic. While the KCDC data offer a wealth of information, they are also by their nature limited. To compensate for their limitations, we use detailed mobility data from Berlin, Germany after observing that mobility of individuals is surprisingly similar in both Berlin and Seoul. Using information from the Berlin mobility data, we cross-fertilize the KCDC Seoul data set and use it to parameterize an agent-based simulation that models the spread of the disease in an urban environment. After validating the simulation predictions with ground truth infection spread in Seoul, we study the importance of each input parameter on the prediction accuracy, compare the performance of our model to state-of-the-art approaches, and show how to use the proposed model to evaluate different what-if counter-measure scenarios.