Cost-effective proactive testing strategies during COVID-19 mass vaccination: A modelling study
Summary: Background: As SARS-CoV-2 vaccines are administered worldwide, the COVID-19 pandemic continues to exact significant human and economic costs. Mass testing of unvaccinated individuals followed by isolation of positive cases can substantially mitigate risks and be tailored to local epidemiolo...
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Main Authors: | Zhanwei Du (Author), Lin Wang (Author), Yuan Bai (Author), Xutong Wang (Author), Abhishek Pandey (Author), Meagan C. Fitzpatrick (Author), Matteo Chinazzi (Author), Ana Pastore y Piontti (Author), Nathaniel Hupert (Author), Michael Lachmann (Author), Alessandro Vespignani (Author), Alison P. Galvani (Author), Benjamin J. Cowling (Author), Lauren Ancel Meyers (Author) |
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Format: | Book |
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Elsevier,
2022-04-01T00:00:00Z.
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