Enabling Healthcare 4.0 for Pandemics. Группа авторов

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Enabling Healthcare 4.0 for Pandemics - Группа авторов


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      1 * Corresponding author: [email protected]; ORCID ID: 0000-0003-4601-7679

      2

      Healthcare System 4.0 Perspectives on COVID-19 Pandemic

       Rehab A. Rayan1*, Imran Zafar2 and Iryna B. Romash3

       1Department of Epidemiology, High Institute of Public Health, Alexandria


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