What are the underlying transmission patterns of COVID-19 outbreak? An age-specific social contact characterization

Background: COVID-19 has spread to 6 continents. Now is opportune to gain a deeper understanding of what may have happened. The findings can help inform mitigation strategies in the disease-affected countries. Methods: In this work, we examine an essential factor that characterizes the disease trans...

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Main Authors: Yang Liu, Zhonglei Gu, Shang Xia, Benyun Shi, Xiao-Nong Zhou, Yong Shi, Jiming Liu
Format: Article
Language:English
Published: Elsevier 2020-05-01
Series:EClinicalMedicine
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2589537020300985
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record_format Article
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language English
format Article
sources DOAJ
author Yang Liu
Zhonglei Gu
Shang Xia
Benyun Shi
Xiao-Nong Zhou
Yong Shi
Jiming Liu
spellingShingle Yang Liu
Zhonglei Gu
Shang Xia
Benyun Shi
Xiao-Nong Zhou
Yong Shi
Jiming Liu
What are the underlying transmission patterns of COVID-19 outbreak? An age-specific social contact characterization
EClinicalMedicine
COVID-19
Underlying transmission patterns
Age-specific social contact patterns
Retrospective and prospective analysis
author_facet Yang Liu
Zhonglei Gu
Shang Xia
Benyun Shi
Xiao-Nong Zhou
Yong Shi
Jiming Liu
author_sort Yang Liu
title What are the underlying transmission patterns of COVID-19 outbreak? An age-specific social contact characterization
title_short What are the underlying transmission patterns of COVID-19 outbreak? An age-specific social contact characterization
title_full What are the underlying transmission patterns of COVID-19 outbreak? An age-specific social contact characterization
title_fullStr What are the underlying transmission patterns of COVID-19 outbreak? An age-specific social contact characterization
title_full_unstemmed What are the underlying transmission patterns of COVID-19 outbreak? An age-specific social contact characterization
title_sort what are the underlying transmission patterns of covid-19 outbreak? an age-specific social contact characterization
publisher Elsevier
series EClinicalMedicine
issn 2589-5370
publishDate 2020-05-01
description Background: COVID-19 has spread to 6 continents. Now is opportune to gain a deeper understanding of what may have happened. The findings can help inform mitigation strategies in the disease-affected countries. Methods: In this work, we examine an essential factor that characterizes the disease transmission patterns: the interactions among people. We develop a computational model to reveal the interactions in terms of the social contact patterns among the population of different age-groups. We divide a city's population into seven age-groups: 0–6 years old (children); 7–14 (primary and junior high school students); 15–17 (high school students); 18–22 (university students); 23–44 (young/middle-aged people); 45–64 years old (middle-aged/elderly people); and 65 or above (elderly people). We consider four representative settings of social contacts that may cause the disease spread: (1) individual households; (2) schools, including primary/high schools as well as colleges and universities; (3) various physical workplaces; and (4) public places and communities where people can gather, such as stadiums, markets, squares, and organized tours. A contact matrix is computed to describe the contact intensity between different age-groups in each of the four settings. By integrating the four contact matrices with the next-generation matrix, we quantitatively characterize the underlying transmission patterns of COVID-19 among different populations. Findings: We focus our study on 6 representative cities in China: Wuhan, the epicenter of COVID-19 in China, together with Beijing, Tianjin, Hangzhou, Suzhou, and Shenzhen, which are five major cities from three key economic zones. The results show that the social contact-based analysis can readily explain the underlying disease transmission patterns as well as the associated risks (including both confirmed and unconfirmed cases). In Wuhan, the age-groups involving relatively intensive contacts in households and public/communities are dispersedly distributed. This can explain why the transmission of COVID-19 in the early stage mainly took place in public places and families in Wuhan. We estimate that Feb. 11, 2020 was the date with the highest transmission risk in Wuhan, which is consistent with the actual peak period of the reported case number (Feb. 4–14). Moreover, the surge in the number of new cases reported on Feb. 12 and 13 in Wuhan can readily be captured using our model, showing its ability in forecasting the potential/unconfirmed cases. We further estimate the disease transmission risks associated with different work resumption plans in these cities after the outbreak. The estimation results are consistent with the actual situations in the cities with relatively lenient policies, such as Beijing, and those with strict policies, such as Shenzhen. Interpretation: With an in-depth characterization of age-specific social contact-based transmission, the retrospective and prospective situations of the disease outbreak, including the past and future transmission risks, the effectiveness of different interventions, and the disease transmission risks of restoring normal social activities, are computationally analyzed and reasonably explained. The conclusions drawn from the study not only provide a comprehensive explanation of the underlying COVID-19 transmission patterns in China, but more importantly, offer the social contact-based risk analysis methods that can readily be applied to guide intervention planning and operational responses in other countries, so that the impact of COVID-19 pandemic can be strategically mitigated. Funding: General Research Fund of the Hong Kong Research Grants Council; Key Project Grants of the National Natural Science Foundation of China.
topic COVID-19
Underlying transmission patterns
Age-specific social contact patterns
Retrospective and prospective analysis
url http://www.sciencedirect.com/science/article/pii/S2589537020300985
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spelling doaj-95df2c75b21846edb5461a4c66e779272020-11-25T03:18:09ZengElsevierEClinicalMedicine2589-53702020-05-0122What are the underlying transmission patterns of COVID-19 outbreak? An age-specific social contact characterizationYang Liu0Zhonglei Gu1Shang Xia2Benyun Shi3Xiao-Nong Zhou4Yong Shi5Jiming Liu6Department of Computer Science, Hong Kong Baptist University, Hong Kong, China; HKBU-CSD & NIPD Joint Research Laboratory for Intelligent Disease Surveillance and Control, Hong Kong, ChinaDepartment of Computer Science, Hong Kong Baptist University, Hong Kong, China; HKBU-CSD & NIPD Joint Research Laboratory for Intelligent Disease Surveillance and Control, Hong Kong, ChinaHKBU-CSD & NIPD Joint Research Laboratory for Intelligent Disease Surveillance and Control, Hong Kong, China; National Institute of Parasitic Diseases, Chinese Center for Disease Control and Prevention (Chinese Center for Tropical Diseases Research), Shanghai, China; Key Laboratory of Parasite and Vector Biology, National Health and Commission of the People's Republic of China, Shanghai, China; WHO Collaborating Center for Tropical Diseases, Shanghai, ChinaHKBU-CSD & NIPD Joint Research Laboratory for Intelligent Disease Surveillance and Control, Hong Kong, China; School of Computer Science and Technology, Nanjing Tech University, Nanjing, ChinaHKBU-CSD & NIPD Joint Research Laboratory for Intelligent Disease Surveillance and Control, Hong Kong, China; National Institute of Parasitic Diseases, Chinese Center for Disease Control and Prevention (Chinese Center for Tropical Diseases Research), Shanghai, China; Key Laboratory of Parasite and Vector Biology, National Health and Commission of the People's Republic of China, Shanghai, China; WHO Collaborating Center for Tropical Diseases, Shanghai, ChinaSchool of Economics and Management, University of Chinese Academy of Sciences, Beijing, China; Key Laboratory of Big Data Mining and Knowledge Management, Chinese Academy of Sciences, Beijing, ChinaDepartment of Computer Science, Hong Kong Baptist University, Hong Kong, China; HKBU-CSD & NIPD Joint Research Laboratory for Intelligent Disease Surveillance and Control, Hong Kong, China; Corresponding author at: Department of Computer Science, Hong Kong Baptist University, Hong Kong, China.Background: COVID-19 has spread to 6 continents. Now is opportune to gain a deeper understanding of what may have happened. The findings can help inform mitigation strategies in the disease-affected countries. Methods: In this work, we examine an essential factor that characterizes the disease transmission patterns: the interactions among people. We develop a computational model to reveal the interactions in terms of the social contact patterns among the population of different age-groups. We divide a city's population into seven age-groups: 0–6 years old (children); 7–14 (primary and junior high school students); 15–17 (high school students); 18–22 (university students); 23–44 (young/middle-aged people); 45–64 years old (middle-aged/elderly people); and 65 or above (elderly people). We consider four representative settings of social contacts that may cause the disease spread: (1) individual households; (2) schools, including primary/high schools as well as colleges and universities; (3) various physical workplaces; and (4) public places and communities where people can gather, such as stadiums, markets, squares, and organized tours. A contact matrix is computed to describe the contact intensity between different age-groups in each of the four settings. By integrating the four contact matrices with the next-generation matrix, we quantitatively characterize the underlying transmission patterns of COVID-19 among different populations. Findings: We focus our study on 6 representative cities in China: Wuhan, the epicenter of COVID-19 in China, together with Beijing, Tianjin, Hangzhou, Suzhou, and Shenzhen, which are five major cities from three key economic zones. The results show that the social contact-based analysis can readily explain the underlying disease transmission patterns as well as the associated risks (including both confirmed and unconfirmed cases). In Wuhan, the age-groups involving relatively intensive contacts in households and public/communities are dispersedly distributed. This can explain why the transmission of COVID-19 in the early stage mainly took place in public places and families in Wuhan. We estimate that Feb. 11, 2020 was the date with the highest transmission risk in Wuhan, which is consistent with the actual peak period of the reported case number (Feb. 4–14). Moreover, the surge in the number of new cases reported on Feb. 12 and 13 in Wuhan can readily be captured using our model, showing its ability in forecasting the potential/unconfirmed cases. We further estimate the disease transmission risks associated with different work resumption plans in these cities after the outbreak. The estimation results are consistent with the actual situations in the cities with relatively lenient policies, such as Beijing, and those with strict policies, such as Shenzhen. Interpretation: With an in-depth characterization of age-specific social contact-based transmission, the retrospective and prospective situations of the disease outbreak, including the past and future transmission risks, the effectiveness of different interventions, and the disease transmission risks of restoring normal social activities, are computationally analyzed and reasonably explained. The conclusions drawn from the study not only provide a comprehensive explanation of the underlying COVID-19 transmission patterns in China, but more importantly, offer the social contact-based risk analysis methods that can readily be applied to guide intervention planning and operational responses in other countries, so that the impact of COVID-19 pandemic can be strategically mitigated. Funding: General Research Fund of the Hong Kong Research Grants Council; Key Project Grants of the National Natural Science Foundation of China.http://www.sciencedirect.com/science/article/pii/S2589537020300985COVID-19Underlying transmission patternsAge-specific social contact patternsRetrospective and prospective analysis