Abstract LB-225: RNA molecular signatures as predictive biomarkers of response to monotherapy pembrolizumab in patients with metastatic triple-negative breast cancer: KEYNOTE-086

2019 
Background: Response to anti-programmed death 1/programmed death ligand 1 (PD-L1) therapy is associated with tumor expression of PD-L1 and an 18-gene T-cell-inflamed gene expression profile (GEP) across several tumor types. The association and utility of the GEP, as calculated using baseline RNA-seq data as a predictor of pembrolizumab response, was evaluated in patients with triple-negative breast cancer (TNBC) enrolled in the KEYNOTE-086 trial (NCT02447003). Additionally, a 37-gene tissue -resident memory (TRM) T-cell signature was evaluated and compared with the GEP. Methods: In the phase II KEYNOTE-086 study, patients with previously treated, metastatic TNBC (independent of PD-L1 status; cohort A, n=170) and treatment-naive, PD-L1-positive (combined positive score ≥1) TNBC (cohort B, n=84) were treated with pembrolizumab monotherapy. Using RNA-seq data, the GEP and TRM signature scores were calculated prospectively, merged with clinical outcome data, evaluated for their level of correlation with each other, and tested for their association with pembrolizumab response (best overall response [BOR], progression-free survival [PFS], and overall survival [OS]) in cohorts A and B after adjusting for Eastern Cooperative Oncology Group performance status. The independent predictive value of the TRM was also assessed after adjusting for the explanatory value of the GEP. Results: RNA-seq data from both baseline tumor specimens and clinical data were available for 154/254 pembrolizumab-treated patients in KEYNOTE-086 (12 [7.8%] were considered responders). The GEP and TRM signature scores were highly correlated (Spearman correlation, 0.89; Kendall’s tau, 0.72), suggesting that they measure linked immune phenomena in the tumor microenvironment (TME). The GEP showed a statistically significant association with clinical outcome (BOR AUROC, 0.76 [95% CI, 0.65-0.86], P=0.004; PFS, P Conclusions: Using RNA-seq-based data, we confirmed that inflammatory state signatures measuring the TME are associated with response to pembrolizumab in TNBC. Both signatures evaluated (GEP and TRM) were significantly associated with clinical outcome but were highly correlated with each other and did not show independent explanatory value. Results confirmed that there may be multiple ways to measure the inflammatory state of the TME, but understanding their relative clinical utility and potential use in conjunction with PD-L1 via immunohistochemistry will require larger, randomized studies. Citation Format: Sherene Loi, Peter Schmid, Javier Cortes, David W. Cescon, Eric P. Winer, Deborah Toppmeyer, Hope S. Rugo, Michelino De Laurentiis, Rita Nanda, Hiroji Iwata, Ahmad Awada, Antoinette Tan, Chunsheng Zhang, Andrey Loboda, Andrew Albright, Razvan Cristescu, Maureen Lane, Anran Wang, Jared Lunceford, Gursel Aktan, Vassiliki Karantza, Sylvia Adams. RNA molecular signatures as predictive biomarkers of response to monotherapy pembrolizumab in patients with metastatic triple-negative breast cancer: KEYNOTE-086 [abstract]. In: Proceedings of the American Association for Cancer Research Annual Meeting 2019; 2019 Mar 29-Apr 3; Atlanta, GA. Philadelphia (PA): AACR; Cancer Res 2019;79(13 Suppl):Abstract nr LB-225.
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