In silico assessment of biomedical products: The conundrum of rare but not so rare events in two case studies
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Marco Viceconti | Claudio Cobelli | Boris Kovatchev | Tarek Haddad | Adam Himes | C. Cobelli | M. Viceconti | B. Kovatchev | Tarek Haddad | Adam Himes | Mark Palmer | Mark Palmer
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