npj Precision Oncology (Sep 2023)

Deciphering transcriptomic determinants of the divergent link between PD-L1 and immunotherapy efficacy

  • Anlin Li,
  • Linfeng Luo,
  • Wei Du,
  • Zhixin Yu,
  • Lina He,
  • Sha Fu,
  • Yuanyuan Wang,
  • Yixin Zhou,
  • Chunlong Yang,
  • Yunpeng Yang,
  • Wenfeng Fang,
  • Li Zhang,
  • Shaodong Hong

DOI
https://doi.org/10.1038/s41698-023-00443-3
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 13

Abstract

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Abstract Programmed cell death ligand 1 (PD-L1) expression remains the most widely used biomarker for predicting response to immune checkpoint inhibitors (ICI), but its predictiveness varies considerably. Identification of factors accounting for the varying PD-L1 performance is urgently needed. Here, using data from three independent trials comprising 1239 patients, we have identified subsets of cancer with distinct PD-L1 predictiveness based on tumor transcriptome. In the Predictiveness-High (PH) group, PD-L1+ tumors show better overall survival, progression-free survival, and objective response rate with ICI than PD-L1- tumors across three trials. However, the Predictiveness-Low (PL) group demonstrates an opposite trend towards better outcomes for PD-L1- tumors. PD-L1+ tumors from the PH group demonstrate the superiority of ICI over chemotherapy, whereas PD-L1+ tumors from the PL group show comparable efficacy between two treatments or exhibit an opposite trend favoring chemotherapy. This observation of context-dependent predictiveness remains strong regardless of immune subtype (Immune-Enriched or Non-Immune), PD-L1 regulation mechanism (adaptative or constitutive), tumor mutation burden, or neoantigen load. This work illuminates avenues for optimizing the use of PD-L1 expression in clinical decision-making and trial design, although this exploratory concept should be further confirmed in large trials.