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In Clinical microbiology reviews ; h5-index 72.0

Preventing and controlling influenza virus infection remains a global public health challenge, as it causes seasonal epidemics to unexpected pandemics. These infections are responsible for high morbidity, mortality, and substantial economic impact. Vaccines are the prophylaxis mainstay in the fight against influenza. However, vaccination fails to confer complete protection due to inadequate vaccination coverages, vaccine shortages, and mismatches with circulating strains. Antivirals represent an important prophylactic and therapeutic measure to reduce influenza-associated morbidity and mortality, particularly in high-risk populations. Here, we review current FDA-approved influenza antivirals with their mechanisms of action, and different viral- and host-directed influenza antiviral approaches, including immunomodulatory interventions in clinical development. Furthermore, we also illustrate the potential utility of machine learning in developing next-generation antivirals against influenza.

Kumari Rashmi, Sharma Suresh D, Kumar Amrita, Ende Zachary, Mishina Margarita, Wang Yuanyuan, Falls Zackary, Samudrala Ram, Pohl Jan, Knight Paul R, Sambhara Suryaprakash

2023-Jan-16

antiviral agents, drug resistance mechanisms, influenza, machine learning, monoclonal antibodies