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Deep single-cell RNA sequencing data for 12346 T cells from tumour, adjacent normal tissue and peripheral blood of treatment-naive NSCLC patients

Cancer immunotherapies have shown sustained clinical responses in treating non-small cell lung cancer (NSCLC), but efficacy varies between patients and is believed to depend in part on the amount and properties of tumor infiltrating lymphocytes (TILs). To comprehensively depict and dissect the baseline landscape of the composition, lineage and functional states of TILs in lung cancer, here we generated deep single-cell RNA sequencing data for 12,346 T cells from the primary tumour, adjacent normal tissues and peripheral blood of 14 treatment-naive NSCLC patients. Combined expression and TCR-based lineage tracking revealed a significant proportion of effector T cells with common origins and similar functional states across peripheral blood and tumours pointing towards a highly migratory nature of these T cells. We also observed tumour-infiltrating CD8+ T cells undergoing extensive clonal expansion and exhaustion, with two clusters of cells exhibiting states preceding exhaustion. Survival analysis on independent datasets suggested that high ratio of pre-exhausted to exhausted T cells is associated with better prognosis of lung adenocarcinoma (LUAD). In addition, we observed further heterogeneity within the tumour regulatory T cells (Tregs), characterized by the bimodal distribution of TNFRSF9, an activation marker for antigen-specific Tregs. The gene signature of this group of activated tumour Tregs, which included IL1R2, correlated with poor prognosis in LUAD. The T cell clusters revealed by our single cell analyses provide a new approach for patient stratification, and the accompanying compendium of data will help the research community to gain further insight into the functional states and dynamics of T cell responses in lung cancer.

Click on a Dataset ID in the table below to learn more, and to find out who to contact about access to these data

Dataset ID Description Technology Samples
EGAD00001003999 Illumina HiSeq 2500 Illumina HiSeq 4000 12346
Publications Citations
Global characterization of T cells in non-small-cell lung cancer by single-cell sequencing.
Nat Med 24: 2018 978-985
799
Lineage Tracing in Humans Enabled by Mitochondrial Mutations and Single-Cell Genomics.
Cell 176: 2019 1325-1339.e22
239
A dynamic CD2-rich compartment at the outer edge of the immunological synapse boosts and integrates signals.
Nat Immunol 21: 2020 1232-1243
57
Mapping the functional landscape of T cell receptor repertoires by single-T cell transcriptomics.
Nat Methods 18: 2021 92-99
43
Single-cell Long Non-coding RNA Landscape of T Cells in Human Cancer Immunity.
Genomics Proteomics Bioinformatics 19: 2021 377-393
12
CD161 expression and regulation defines rapidly responding effector CD4+ T cells associated with improved survival in HPV16-associated tumors.
J Immunother Cancer 10: 2022 e003995
18
High-resolution single-cell atlas reveals diversity and plasticity of tissue-resident neutrophils in non-small cell lung cancer.
Cancer Cell 40: 2022 1503-1520.e8
101