Genotoxic Treatment Enhances Immune Response in a Genetic Model of Lung Cancer

Recent advances in immunotherapy have reshaped the clinical management of lung cancer, and immune checkpoint inhibitors (ICIs) are now first-line treatment for advanced lung cancer. However, the majority of patients do not respond to ICIs as single agents, and many develop resistance after initial r...

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Bibliographic Details
Main Authors: Pasquale Saggese, Cesar A. Martinez, Linh M. Tran, Raymond Lim, Camelia Dumitras, Tristan Grogan, David Elashoff, Ramin Salehi-Rad, Steven M. Dubinett, Bin Liu, Claudio Scafoglio
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Cancers
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Online Access:https://www.mdpi.com/2072-6694/13/14/3595
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Summary:Recent advances in immunotherapy have reshaped the clinical management of lung cancer, and immune checkpoint inhibitors (ICIs) are now first-line treatment for advanced lung cancer. However, the majority of patients do not respond to ICIs as single agents, and many develop resistance after initial responses. Therefore, there is urgent need to improve the current ICI strategies. Murine models currently available for pre-clinical studies have serious limitations for evaluating novel immunotherapies. GEMMs are reliable and predictable models driven by oncogenic mutations mirroring those found in cancer patients. However, they lack the mutational burden of human cancers and thus do not elicit proper immune surveillance. Carcinogen-induced models are characterized by mutational burden that more closely resembles human cancer, but they often require extremely long experimental times with inconsistent results. Here, we present a hybrid model in which genetically engineered mice are exposed to the carcinogen <i>N</i>-Methyl-<i>N</i>-Nitrosourea (MNU) to increase tumor mutational burden (TMB), induce early-stage immune responses, and enhance susceptibility to ICIs. We anticipate that this model will be useful for pre-clinical evaluation of novel immunotherapies.
ISSN:2072-6694