Differential predictive value of resident memory CD8+T cell subpopulations in non-small-cell lung cancer patients treated by immunotherapy

Lea Paolini,Thi Tran,Stephanie Corgnac, Jean-Philippe VILLEMIN,Marie Wislez,Jennifer Arrondeau, Ludger Johannes, Jonathan Ulmer, Louis-Victorien Vieillard, Josephine Pineau,Alain Gey,Valentin Quiniou,Pierre Barennes,Hang Phuong Pham,nadege Gruel, Milena Hasan, Valentina Libri, Sebastien Mella, Sixtine de Percin,Pascaline Boudou-Rouquette,Isabelle Cremer,helene Blons,Karen Leroy,Pierre Laurent-Puig, Hortense De Saint Basile,Laure Gibault, Ravel Patrice,Fathia Mami-Chouaib,Francois Goldwasser,Elizabeth Fabre,Diane Damotte,Eric TARTOUR

biorxiv(2024)

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摘要
A high density of resident memory T cells (TRM) in tumors correlates with improved clinical outcomes in immunotherapy-treated patients. However, in preclinical models, only some subpopulations of TRM are associated with cancer vaccine efficacy. We identified two main TRM subpopulations in tumor-infiltrating lymphocytes derived from non-small cell lung cancer (NSCLC) patients: one co-expressing CD103 and CD49a (DP), and the other expressing only CD49a (MP); both exhibiting additional TRM surface markers like CD69. DP TRM exhibited greater functionality compared to MP TRM. Analysis of T-cell receptor (TCR) repertoire and of the stemness marker TCF-1 revealed shared TCRs between populations, with the MP subset appearing more progenitor-like phenotype. In two NSCLC patient cohorts, only DP TRM predicted PD-1 blockade response. Multivariate analysis, including various biomarkers (CD8, TCF1+CD8+T cells, and PD-L1) associated with responses to anti-PD(L)1, showed that only intra-tumoral infiltration by DP TRM remained significant. This study highlights the non-equivalence of TRM populations and emphasizes the importance of distinguishing between them to better define their role in antitumor immunity and as a biomarker of response to immunotherapy. ### Competing Interest Statement The authors have declared no competing interest.
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