Leonenko V.N.1,2, Korzin A.I.1, Danilenko D.M.2
Application of Mathematical Models of the Dynamics of the Epidemic Acute Respiratory Viral Infections to Increase the Efficiency of Epidemiological Surveillance
Mathematical Biology & Bioinformatics. 2023;18(2):517-542.
doi: 10.17537/2023.18.517.
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