Wenxiu Chen, Wei An, Chen Wang, Qun Gao, Chunzhen Wang, Lan Zhang, Xiao Zhang, Song Tang, Jianxin Zhang, Lixin Yu, Peng Wang, Dan Gao, Zhe Wang, Wenhui Gao, Zhe Tian, Yu Zhang, Wai-Yin Ng, Tong Zhang, Ho-Kwong Chui, Jianying Hu, Min Yang
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The results demonstrated that the Su-SEIQR model accurately reflected trends in susceptible populations and confirmed cases during the COVID-19 pandemic, highlighting the role of spontaneous collective avoidance behaviours in generating periodic fluctuations. These fluctuations helped reduce infection peaks, thereby alleviating pressure on healthcare systems. However, the effect of these spontaneous behaviours on mitigating healthcare overload was limited. Consequently, we incorporated healthcare capacity constraints into the model, adjusting parameters to further guide population behaviours during the pandemic, aiming to keep the outbreak within manageable limits and reduce strain on healthcare resources. This study provides robust support for the development of environmental and public health policies during pandemics by constructing an innovative transmission model, which effectively prevents healthcare overload. Additionally, this approach can be applied to managing future outbreaks of unknown viruses or \"Disease X\".</p>","PeriodicalId":11602,"journal":{"name":"Emerging Microbes & Infections","volume":" ","pages":"2437240"},"PeriodicalIF":8.4000,"publicationDate":"2025-12-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11749008/pdf/","citationCount":"0","resultStr":"{\"title\":\"Utilizing wastewater surveillance to model behavioural responses and prevent healthcare overload during \\\"Disease X\\\" outbreaks.\",\"authors\":\"Wenxiu Chen, Wei An, Chen Wang, Qun Gao, Chunzhen Wang, Lan Zhang, Xiao Zhang, Song Tang, Jianxin Zhang, Lixin Yu, Peng Wang, Dan Gao, Zhe Wang, Wenhui Gao, Zhe Tian, Yu Zhang, Wai-Yin Ng, Tong Zhang, Ho-Kwong Chui, Jianying Hu, Min Yang\",\"doi\":\"10.1080/22221751.2024.2437240\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>During the COVID-19 pandemic, healthcare systems worldwide faced severe strain. 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Utilizing wastewater surveillance to model behavioural responses and prevent healthcare overload during "Disease X" outbreaks.
During the COVID-19 pandemic, healthcare systems worldwide faced severe strain. This study, utilizing wastewater virus surveillance, identified that periodic spontaneous avoidance behaviours significantly impacted infectious disease transmission during rapid and intense outbreaks. To incorporate these behaviours into disease transmission analysis, we introduced the Su-SEIQR model and validated it using COVID-19 wastewater data from Beijing and Hong Kong. The results demonstrated that the Su-SEIQR model accurately reflected trends in susceptible populations and confirmed cases during the COVID-19 pandemic, highlighting the role of spontaneous collective avoidance behaviours in generating periodic fluctuations. These fluctuations helped reduce infection peaks, thereby alleviating pressure on healthcare systems. However, the effect of these spontaneous behaviours on mitigating healthcare overload was limited. Consequently, we incorporated healthcare capacity constraints into the model, adjusting parameters to further guide population behaviours during the pandemic, aiming to keep the outbreak within manageable limits and reduce strain on healthcare resources. This study provides robust support for the development of environmental and public health policies during pandemics by constructing an innovative transmission model, which effectively prevents healthcare overload. Additionally, this approach can be applied to managing future outbreaks of unknown viruses or "Disease X".
期刊介绍:
Emerging Microbes & Infections is a peer-reviewed, open-access journal dedicated to publishing research at the intersection of emerging immunology and microbiology viruses.
The journal's mission is to share information on microbes and infections, particularly those gaining significance in both biological and clinical realms due to increased pathogenic frequency. Emerging Microbes & Infections is committed to bridging the scientific gap between developed and developing countries.
This journal addresses topics of critical biological and clinical importance, including but not limited to:
- Epidemic surveillance
- Clinical manifestations
- Diagnosis and management
- Cellular and molecular pathogenesis
- Innate and acquired immune responses between emerging microbes and their hosts
- Drug discovery
- Vaccine development research
Emerging Microbes & Infections invites submissions of original research articles, review articles, letters, and commentaries, fostering a platform for the dissemination of impactful research in the field.