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Hao Wang Person1 #679791 Professor in the Department of Mathematical and Statistical Sciences at the University of Alberta. | - The Interdisciplinary Lab for Mathematical Ecology & Epidemiology (ILMEE), led by Prof. Hao Wang, works on several areas of mathematical biology as diverse as modeling stoichiometry-based ecological interactions, microbiology, infectious diseases, habitat destruction and biodiversity, risk assessment of oil sands pollution, spatial memory and cognition. Mathematical and statistical approaches include differential equations, data science, and machine learning.
Tags: Hao Wang (Howard) |
+Verweise (3) - VerweiseHinzufĂŒgenList by: CiterankMapLink[2] Vaccine hesitancy promotes emergence of new SARS-CoV-2 variants
Zitieren: Shuanglin Jing, Russell Milne, Hao Wang, Ling Xue Publication date: 26 May 2023 Publication info: Journal of Theoretical Biology, Volume 570, 2023, 111522, ISSN 0022-5193, 7 August 2023 Zitiert von: David Price 7:25 PM 24 November 2023 GMT Citerank: (3) 701037MfPH â Publications144B5ACA0, 704041Vaccination859FDEF6, 704045Covid-19859FDEF6 URL: DOI: https://doi.org/10.1016/j.jtbi.2023.111522
| Auszug - [Journal of Theoretical Biology, 26 May 2023]
The successive emergence of SARS-CoV-2 mutations has led to an unprecedented increase in COVID-19 incidence worldwide. Currently, vaccination is considered to be the best available solution to control the ongoing COVID-19 pandemic. However, public opposition to vaccination persists in many countries, which can lead to increased COVID-19 caseloads and hence greater opportunities for vaccine-evasive mutant strains to arise. To determine the extent that public opinion regarding vaccination can induce or hamper the emergence of new variants, we develop a model that couples a compartmental disease transmission framework featuring two strains of SARS-CoV-2 with game theoretical dynamics on whether or not to vaccinate. We combine semi-stochastic and deterministic simulations to explore the effect of mutation probability, perceived cost of receiving vaccines, and perceived risks of infection on the emergence and spread of mutant SARS-CoV-2 strains. We find that decreasing the perceived costs of being vaccinated and increasing the perceived risks of infection (that is, decreasing vaccine hesitation) will decrease the possibility of vaccine-resistant mutant strains becoming established by about fourfold for intermediate mutation rates. Conversely, we find increasing vaccine hesitation to cause both higher probability of mutant strains emerging and more wild-type cases after the mutant strain has appeared. We also find that once a new variant has emerged, perceived risk of being infected by the original variant plays a much larger role than perceptions of the new variant in determining future outbreak characteristics. Furthermore, we find that rapid vaccination under non-pharmaceutical interventions is a highly effective strategy for preventing new variant emergence, due to interaction effects between non-pharmaceutical interventions and public support for vaccination. Our findings indicate that policies that combine combating vaccine-related misinformation with non-pharmaceutical interventions (such as reducing social contact) will be the most effective for avoiding the establishment of harmful new variants. |
Link[3] Modeling the second outbreak of COVID-19 with isolation and contact tracing
Zitieren: Haitao Song, Fang Liu, Feng Li, Xiaochun Cao, Hao Wang, Zhongwei Jia, Huaiping Zhu, Michael Y. Li, Wei Lin, Hong Yang, Jianghong Hu, Zhen Jin Publication date: 1 October 2022 Publication info: Discrete & Continuous Dynamical Systems - B, 2022, Volume 27, Issue 10: 5757-5777. Zitiert von: David Price 12:24 PM 1 December 2023 GMT Citerank: (5) 679797Huaiping ZhuProfessor of mathematics at the Department of Mathematics and Statistics at York University, a York Research Chair (YRC Tier I) in Applied Mathematics, the Director of the Laboratory of Mathematical Parallel Systems at the York University (LAMPS), the Director of the Canadian Centre for Diseases Modelling (CCDM) and the Director of the One Health Modelling Network for Emerging Infections (OMNI-RĂUNIS). 10019D3ABAB, 685387Michael Y LiProfessor of Mathematics in the Department of Mathematical and Statistical Sciences at the University of Alberta, and Director of the Information Research Lab (IRL).10019D3ABAB, 701037MfPH â Publications144B5ACA0, 704045Covid-19859FDEF6, 715294Contact tracing859FDEF6 URL: DOI: https://doi.org/10.3934/dcdsb.2021294
| Auszug - [Discrete & Continuous Dynamical Systems - B, October 2022]
The first case of Corona Virus Disease 2019 (COVID-19) was reported in Wuhan, China in December 2019. Since then, COVID-19 has quickly spread out to all provinces in China and over 150 countries or territories in the world. With the first level response to public health emergencies (FLRPHE) launched over the country, the outbreak of COVID-19 in China is achieving under control in China. We develop a mathematical model based on the epidemiology of COVID-19, incorporating the isolation of healthy people, confirmed cases and contact tracing measures. We calculate the basic reproduction numbers 2.5 in China (excluding Hubei province) and 2.9 in Hubei province with the initial time on January 30 which shows the severe infectivity of COVID-19, and verify that the current isolation method effectively contains the transmission of COVID-19. Under the isolation of healthy people, confirmed cases and contact tracing measures, we find a noteworthy phenomenon that is the second epidemic of COVID-19 and estimate the peak time and value and the cumulative number of cases. Simulations show that the contact tracing measures can efficiently contain the transmission of the second epidemic of COVID-19. With the isolation of all susceptible people or all infectious people or both, there is no second epidemic of COVID-19. Furthermore, resumption of work and study can increase the transmission risk of the second epidemic of COVID-19. |
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