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Usage Information

Anti–PD-L1 and anti-CD73 combination therapy promotes T cell response to EGFR-mutated NSCLC
Eric Tu, Kelly McGlinchey, Jixin Wang, Philip Martin, Steven L.K. Ching, Nicolas Floc’h, James Kurasawa, Jacqueline H. Starrett, Yelena Lazdun, Leslie Wetzel, Barrett Nuttall, Felicia S.L. Ng, Karen T. Coffman, Paul D. Smith, Katerina Politi, Zachary A. Cooper, Katie Streicher
Eric Tu, Kelly McGlinchey, Jixin Wang, Philip Martin, Steven L.K. Ching, Nicolas Floc’h, James Kurasawa, Jacqueline H. Starrett, Yelena Lazdun, Leslie Wetzel, Barrett Nuttall, Felicia S.L. Ng, Karen T. Coffman, Paul D. Smith, Katerina Politi, Zachary A. Cooper, Katie Streicher
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Research Article Immunology Oncology

Anti–PD-L1 and anti-CD73 combination therapy promotes T cell response to EGFR-mutated NSCLC

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Abstract

Treatment with anti–PD-1 and anti-PD-L1 therapies has shown durable clinical benefit in non–small cell lung cancer (NSCLC). However, patients with NSCLC with epidermal growth factor receptor (EGFR) mutations do not respond as well to treatment as patients without an EGFR mutation. We show that EGFR-mutated NSCLC expressed higher levels of CD73 compared with EGFR WT tumors and that CD73 expression was regulated by EGFR signaling. EGFR-mutated cell lines were significantly more resistant to T cell killing compared with WT cell lines through suppression of T cell proliferation and function. In a xenograft mouse model of EGFR-mutated NSCLC, neither anti–PD-L1 nor anti-CD73 antibody alone inhibited tumor growth compared with the isotype control. In contrast, the combination of both antibodies significantly inhibited tumor growth, increased the number of tumor-infiltrating CD8+ T cells, and enhanced IFN-γ and TNF-α production of these T cells. Consistently, there were increases in gene expression that corresponded to inflammation and T cell function in tumors treated with the combination of anti–PD-L1 and anti-CD73. Together, these results further support the combination of anti-CD73 and anti–PD-L1 therapies in treating EGFR-mutated NSCLC, while suggesting that increased T cell activity may play a role in response to therapy.

Authors

Eric Tu, Kelly McGlinchey, Jixin Wang, Philip Martin, Steven L.K. Ching, Nicolas Floc’h, James Kurasawa, Jacqueline H. Starrett, Yelena Lazdun, Leslie Wetzel, Barrett Nuttall, Felicia S.L. Ng, Karen T. Coffman, Paul D. Smith, Katerina Politi, Zachary A. Cooper, Katie Streicher

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Usage data is cumulative from December 2024 through December 2025.

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