Multi-dimensional epidemiology and informatics data on COVID-19 wave at the end of zero COVID policy in China

Background: China exited strict Zero-COVID policy with a surge in Omicron variant infections in December 2022. Given China’s pandemic policy and population immunity, employing Baidu Index (BDI) to analyze the evolving disease landscape and estimate the nationwide pneumonia hospitalizations in the po...

Full description

Saved in:
Bibliographic Details
Main Authors: Yu, Xin-Sheng, Tan, Shaoying, Tang, Wanting, Zhao, Fang-Fang, Ji, Jie, Lin, Jianwei, He, Han-Jie, Gu, Youxin, Liang, Jia-Jian, Wang, Meng, Chen, Yequn, Yang, Jiancheng, Xie, Longxu, Wang, Qian, Liu, Mengyu, He, Yang, Chen, Lan, Wang, Ya Xing, Wu, Zhaoxiong, Zhao, Gang, Liu, Yi, Wang, Yun, Hao, Dongning, Cen, Jingyun, Yao, Shi-Qi, Zhang, Dan, Liu, Lifang, Lye, David C., Hao, Zhifeng, Wong, Tien Yin, Cen, Ling-Ping
Other Authors: Lee Kong Chian School of Medicine (LKCMedicine)
Format: Article
Language:English
Published: 2024
Subjects:
Online Access:https://hdl.handle.net/10356/181781
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-181781
record_format dspace
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Medicine, Health and Life Sciences
Zero-COVID policy
Baidu search index
spellingShingle Medicine, Health and Life Sciences
Zero-COVID policy
Baidu search index
Yu, Xin-Sheng
Tan, Shaoying
Tang, Wanting
Zhao, Fang-Fang
Ji, Jie
Lin, Jianwei
He, Han-Jie
Gu, Youxin
Liang, Jia-Jian
Wang, Meng
Chen, Yequn
Yang, Jiancheng
Xie, Longxu
Wang, Qian
Liu, Mengyu
He, Yang
Chen, Lan
Wang, Ya Xing
Wu, Zhaoxiong
Zhao, Gang
Liu, Yi
Wang, Yun
Hao, Dongning
Cen, Jingyun
Yao, Shi-Qi
Zhang, Dan
Liu, Lifang
Lye, David C.
Hao, Zhifeng
Wong, Tien Yin
Cen, Ling-Ping
Multi-dimensional epidemiology and informatics data on COVID-19 wave at the end of zero COVID policy in China
description Background: China exited strict Zero-COVID policy with a surge in Omicron variant infections in December 2022. Given China’s pandemic policy and population immunity, employing Baidu Index (BDI) to analyze the evolving disease landscape and estimate the nationwide pneumonia hospitalizations in the post Zero COVID period, validated by hospital data, holds informative potential for future outbreaks. Methods: Retrospective observational analyses were conducted at the conclusion of the Zero-COVID policy, integrating internet search data alongside offline records. Methodologies employed were multidimensional, encompassing lagged Spearman correlation analysis, growth rate assessments, independent sample T-tests, Granger causality examinations, and Bayesian structural time series (BSTS) models for comprehensive data scrutiny. Results: Various diseases exhibited a notable upsurge in the BDI after the policy change, consistent with the broader trajectory of the COVID-19 pandemic. Robust connections emerged between COVID-19 and diverse health conditions, predominantly impacting the respiratory, circulatory, ophthalmological, and neurological domains. Notably, 34 diseases displayed a relatively high correlation (r > 0.5) with COVID-19. Among these, 12 exhibited a growth rate exceeding 50% post-policy transition, with myocarditis escalating by 1,708% and pneumonia by 1,332%. In these 34 diseases, causal relationships have been confirmed for 23 of them, while 28 garnered validation from hospital-based evidence. Notably, 19 diseases obtained concurrent validation from both Granger causality and hospital-based data. Finally, the BSTS models approximated approximately 4,332,655 inpatients diagnosed with pneumonia nationwide during the 2 months subsequent to the policy relaxation. Conclusion: This investigation elucidated substantial associations between COVID-19 and respiratory, circulatory, ophthalmological, and neurological disorders. The outcomes from comprehensive multi-dimensional cross-over studies notably augmented the robustness of our comprehension of COVID-19’s disease spectrum, advocating for the prospective utility of internet-derived data. Our research highlights the potential of Internet behavior in predicting pandemic-related syndromes, emphasizing its importance for public health strategies, resource allocation, and preparedness for future outbreaks.
author2 Lee Kong Chian School of Medicine (LKCMedicine)
author_facet Lee Kong Chian School of Medicine (LKCMedicine)
Yu, Xin-Sheng
Tan, Shaoying
Tang, Wanting
Zhao, Fang-Fang
Ji, Jie
Lin, Jianwei
He, Han-Jie
Gu, Youxin
Liang, Jia-Jian
Wang, Meng
Chen, Yequn
Yang, Jiancheng
Xie, Longxu
Wang, Qian
Liu, Mengyu
He, Yang
Chen, Lan
Wang, Ya Xing
Wu, Zhaoxiong
Zhao, Gang
Liu, Yi
Wang, Yun
Hao, Dongning
Cen, Jingyun
Yao, Shi-Qi
Zhang, Dan
Liu, Lifang
Lye, David C.
Hao, Zhifeng
Wong, Tien Yin
Cen, Ling-Ping
format Article
author Yu, Xin-Sheng
Tan, Shaoying
Tang, Wanting
Zhao, Fang-Fang
Ji, Jie
Lin, Jianwei
He, Han-Jie
Gu, Youxin
Liang, Jia-Jian
Wang, Meng
Chen, Yequn
Yang, Jiancheng
Xie, Longxu
Wang, Qian
Liu, Mengyu
He, Yang
Chen, Lan
Wang, Ya Xing
Wu, Zhaoxiong
Zhao, Gang
Liu, Yi
Wang, Yun
Hao, Dongning
Cen, Jingyun
Yao, Shi-Qi
Zhang, Dan
Liu, Lifang
Lye, David C.
Hao, Zhifeng
Wong, Tien Yin
Cen, Ling-Ping
author_sort Yu, Xin-Sheng
title Multi-dimensional epidemiology and informatics data on COVID-19 wave at the end of zero COVID policy in China
title_short Multi-dimensional epidemiology and informatics data on COVID-19 wave at the end of zero COVID policy in China
title_full Multi-dimensional epidemiology and informatics data on COVID-19 wave at the end of zero COVID policy in China
title_fullStr Multi-dimensional epidemiology and informatics data on COVID-19 wave at the end of zero COVID policy in China
title_full_unstemmed Multi-dimensional epidemiology and informatics data on COVID-19 wave at the end of zero COVID policy in China
title_sort multi-dimensional epidemiology and informatics data on covid-19 wave at the end of zero covid policy in china
publishDate 2024
url https://hdl.handle.net/10356/181781
_version_ 1820027780706861056
spelling sg-ntu-dr.10356-1817812024-12-22T15:39:53Z Multi-dimensional epidemiology and informatics data on COVID-19 wave at the end of zero COVID policy in China Yu, Xin-Sheng Tan, Shaoying Tang, Wanting Zhao, Fang-Fang Ji, Jie Lin, Jianwei He, Han-Jie Gu, Youxin Liang, Jia-Jian Wang, Meng Chen, Yequn Yang, Jiancheng Xie, Longxu Wang, Qian Liu, Mengyu He, Yang Chen, Lan Wang, Ya Xing Wu, Zhaoxiong Zhao, Gang Liu, Yi Wang, Yun Hao, Dongning Cen, Jingyun Yao, Shi-Qi Zhang, Dan Liu, Lifang Lye, David C. Hao, Zhifeng Wong, Tien Yin Cen, Ling-Ping Lee Kong Chian School of Medicine (LKCMedicine) National Centre for Infectious Diseases, Singapore Tan Tock Seng Hospital Yong Loo Lin School of Medicine, NUS Medicine, Health and Life Sciences Zero-COVID policy Baidu search index Background: China exited strict Zero-COVID policy with a surge in Omicron variant infections in December 2022. Given China’s pandemic policy and population immunity, employing Baidu Index (BDI) to analyze the evolving disease landscape and estimate the nationwide pneumonia hospitalizations in the post Zero COVID period, validated by hospital data, holds informative potential for future outbreaks. Methods: Retrospective observational analyses were conducted at the conclusion of the Zero-COVID policy, integrating internet search data alongside offline records. Methodologies employed were multidimensional, encompassing lagged Spearman correlation analysis, growth rate assessments, independent sample T-tests, Granger causality examinations, and Bayesian structural time series (BSTS) models for comprehensive data scrutiny. Results: Various diseases exhibited a notable upsurge in the BDI after the policy change, consistent with the broader trajectory of the COVID-19 pandemic. Robust connections emerged between COVID-19 and diverse health conditions, predominantly impacting the respiratory, circulatory, ophthalmological, and neurological domains. Notably, 34 diseases displayed a relatively high correlation (r > 0.5) with COVID-19. Among these, 12 exhibited a growth rate exceeding 50% post-policy transition, with myocarditis escalating by 1,708% and pneumonia by 1,332%. In these 34 diseases, causal relationships have been confirmed for 23 of them, while 28 garnered validation from hospital-based evidence. Notably, 19 diseases obtained concurrent validation from both Granger causality and hospital-based data. Finally, the BSTS models approximated approximately 4,332,655 inpatients diagnosed with pneumonia nationwide during the 2 months subsequent to the policy relaxation. Conclusion: This investigation elucidated substantial associations between COVID-19 and respiratory, circulatory, ophthalmological, and neurological disorders. The outcomes from comprehensive multi-dimensional cross-over studies notably augmented the robustness of our comprehension of COVID-19’s disease spectrum, advocating for the prospective utility of internet-derived data. Our research highlights the potential of Internet behavior in predicting pandemic-related syndromes, emphasizing its importance for public health strategies, resource allocation, and preparedness for future outbreaks. Published version The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This study was supported by the National Natural Science Foundation of China (81570849), and the Natural Science Foundation of Guangdong Province, China (2020A1515011413). 2024-12-17T06:39:10Z 2024-12-17T06:39:10Z 2024 Journal Article Yu, X., Tan, S., Tang, W., Zhao, F., Ji, J., Lin, J., He, H., Gu, Y., Liang, J., Wang, M., Chen, Y., Yang, J., Xie, L., Wang, Q., Liu, M., He, Y., Chen, L., Wang, Y. X., Wu, Z., ...Cen, L. (2024). Multi-dimensional epidemiology and informatics data on COVID-19 wave at the end of zero COVID policy in China. Frontiers in Public Health, 12, 1442728-. https://dx.doi.org/10.3389/fpubh.2024.1442728 2296-2565 https://hdl.handle.net/10356/181781 10.3389/fpubh.2024.1442728 39224554 2-s2.0-85202946587 12 1442728 en Frontiers in Public Health © 2024 Yu, Tan, Tang, Zhao, Ji, Lin, He, Gu, Liang, Wang, Chen, Yang, Xie, Wang, Liu, He, Chen, Wang, Wu, Zhao, Liu, Wang, Hao, Cen, Yao, Zhang, Liu, Lye, Hao, Wong and Cen. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. application/pdf