Trends in risks of severe events and lengths of stay for COVID-19 hospitalisations in England over the pre-vaccination era: results from the Public Health England SARI-Watch surveillance scheme
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Daniela De Angelis | Brian D. M. Tom | Sema Mandal | Anne M. Presanis | Suzanne Elgohari | Peter D. Kirwan | Christopher H. Jackson | B. Tom | A. Presanis | D. Angelis | S. Elgohari | S. Mandal | P. Kirwan | Christopher H Jackson
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