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Transcriptomic signatures of tumors undergoing T cell attack

Authors :
Aishwarya Gokuldass
Zoltan Szallasi
Göran Jönsson
Katja Harbst
Krisztián Papp
Marie Christine Wulff Westergaard
Marco Donia
István Csabai
Christopher Aled Chamberlain
Martin Lauss
Morten Nielsen
Zsofia Sztupinszki
Arianna Draghi
Aimilia Schina
Inge Marie Svane
Source :
Cancer immunology, immunotherapy : CII. 71(3)
Publication Year :
2021

Abstract

Studying tumor cell–T cell interactions in the tumor microenvironment (TME) can elucidate tumor immune escape mechanisms and help predict responses to cancer immunotherapy. We selected 14 pairs of highly tumor-reactive tumor-infiltrating lymphocytes (TILs) and autologous short-term cultured cell lines, covering four distinct tumor types, and co-cultured TILs and tumors at sub-lethal ratios in vitro to mimic the interactions occurring in the TME. We extracted gene signatures associated with a tumor-directed T cell attack based on transcriptomic data of tumor cells. An autologous T cell attack induced pronounced transcriptomic changes in the attacked tumor cells, partially independent of IFN-γ signaling. Transcriptomic changes were mostly independent of the tumor histological type and allowed identifying common gene expression changes, including a shared gene set of 55 transcripts influenced by T cell recognition (Tumors undergoing T cell attack, or TuTack, focused gene set). TuTack scores, calculated from tumor biopsies, predicted the clinical outcome after anti-PD-1/anti-PD-L1 therapy in multiple tumor histologies. Notably, the TuTack scores did not correlate to the tumor mutational burden, indicating that these two biomarkers measure distinct biological phenomena. The TuTack scores measure the effects on tumor cells of an anti-tumor immune response and represent a comprehensive method to identify immunologically responsive tumors. Our findings suggest that TuTack may allow patient selection in immunotherapy clinical trials and warrant its application in multimodal biomarker strategies.

Details

ISSN :
14320851
Volume :
71
Issue :
3
Database :
OpenAIRE
Journal :
Cancer immunology, immunotherapy : CII
Accession number :
edsair.doi.dedup.....3c43f379ee1545745b5cddce8ceaf198