High-throughput human primary cell-based airway model for evaluating influenza, coronavirus, or other respiratory viruses in vitro

用于体外评估流感、冠状病毒或其他呼吸道病毒的高通量人类原代细胞气道模型

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作者:A L Gard, R J Luu, C R Miller, R Maloney, B P Cain, E E Marr, D M Burns, R Gaibler, T J Mulhern, C A Wong, J Alladina, J R Coppeta, P Liu, J P Wang, H Azizgolshani, R Fennell Fezzie, J L Balestrini, B C Isenberg, B D Medoff, R W Finberg, J T Borenstein

Abstract

Influenza and other respiratory viruses present a significant threat to public health, national security, and the world economy, and can lead to the emergence of global pandemics such as from COVID-19. A barrier to the development of effective therapeutics is the absence of a robust and predictive preclinical model, with most studies relying on a combination of in vitro screening with immortalized cell lines and low-throughput animal models. Here, we integrate human primary airway epithelial cells into a custom-engineered 96-device platform (PREDICT96-ALI) in which tissues are cultured in an array of microchannel-based culture chambers at an air-liquid interface, in a configuration compatible with high resolution in-situ imaging and real-time sensing. We apply this platform to influenza A virus and coronavirus infections, evaluating viral infection kinetics and antiviral agent dosing across multiple strains and donor populations of human primary cells. Human coronaviruses HCoV-NL63 and SARS-CoV-2 enter host cells via ACE2 and utilize the protease TMPRSS2 for spike protein priming, and we confirm their expression, demonstrate infection across a range of multiplicities of infection, and evaluate the efficacy of camostat mesylate, a known inhibitor of HCoV-NL63 infection. This new capability can be used to address a major gap in the rapid assessment of therapeutic efficacy of small molecules and antiviral agents against influenza and other respiratory viruses including coronaviruses.

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