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Modeling latent infection transmissions through biosocial stochastic dynamics
2020-08-01
epidemiology
Title + abstract only
View on medRxiv
Show abstract
The events of the recent SARS-CoV-02 epidemics have shown the importance of social factors, especially given the large number of asymptomatic cases that effectively spread the virus, which can cause a medical emergency to very susceptible individuals. Besides, the SARS-CoV-02 virus survives for several hours on different surfaces, where a new host can contract it with a delay. These passive modes of infection transmission remain an unexplored area for traditional mean-field epidemic models. Here...
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