TY - JOUR
T1 - Investigation of antigen-specific T-cell receptor clusters in human cancers
AU - Zhang, Hongyi
AU - Liu, Longchao
AU - Zhang, Jian
AU - Chen, Jiahui
AU - Ye, Jianfeng
AU - Shukla, Sachet
AU - Qiao, Jian
AU - Zhan, Xiaowei
AU - Chen, Hao
AU - Wu, Catherine J.
AU - Fu, Yang Xin
AU - Li, Bo
N1 - Funding Information:
This work is supported by CPRIT grant RR170079 (to B. Li), Circle of Friends Cancer Center Grant 2018 (to B. Li), and CPRIT grants RR150072 (to Y.-X. Fu). The authors thank Dr. James Brugarolas for helpful discussions during manuscript preparation. The authors acknowledge the TCGA research network for providing publicly available cancer genomics data that enabled this analysis.
Publisher Copyright:
© 2019 American Association for Cancer Research.
PY - 2020/3/15
Y1 - 2020/3/15
N2 - Purpose: Cancer antigen-specific T cells are key components in antitumor immune response, yet their identification in the tumor microenvironment remains challenging, as most cancer antigens are unknown. Recent advance in immunology suggests that similar T-cell receptor (TCR) sequences can be clustered to infer shared antigen specificity. This study aims to identify antigen-specific TCRs from the tumor genomics sequencing data. Experimental Design: We used the TRUST (Tcr Repertoire Utilities for Solid Tissue) algorithm to assemble the TCR hypervariable CDR3 regions from 9,700 bulk tumor RNA-sequencing (RNA-seq) samples, and developed a computational method, iSMART, to group similar TCRs into antigen-specific clusters. Integrative analysis on the TCR clusters with multi-omics datasets was performed to profile cancer-associated T cells and to uncover novel cancer antigens. Results: Clustered TCRs are associated with signatures of T-cell activation after antigen encounter. We further elucidated the phenotypes of clustered T cells using single-cell RNA-seq data, which revealed a novel subset of tissue-resident memory T-cell population with elevated metabolic status. An exciting application of the TCR clusters is to identify novel cancer antigens, exemplified by our identification of a candidate cancer/testis gene, HSFX1, through integrated analysis of HLA alleles and genomics data. The target was further validated using vaccination of humanized HLA-A*02:01 mice and ELISpot assay. Finally, we showed that clustered tumor-infiltrating TCRs can differentiate patients with early-stage cancer from healthy donors, using blood TCR repertoire sequencing data, suggesting potential applications in noninvasive cancer detection. Conclusions: Our analysis on the antigen-specific TCR clusters provides a unique resource for alternative antigen discovery and biomarker identification for cancer immunotherapies.
AB - Purpose: Cancer antigen-specific T cells are key components in antitumor immune response, yet their identification in the tumor microenvironment remains challenging, as most cancer antigens are unknown. Recent advance in immunology suggests that similar T-cell receptor (TCR) sequences can be clustered to infer shared antigen specificity. This study aims to identify antigen-specific TCRs from the tumor genomics sequencing data. Experimental Design: We used the TRUST (Tcr Repertoire Utilities for Solid Tissue) algorithm to assemble the TCR hypervariable CDR3 regions from 9,700 bulk tumor RNA-sequencing (RNA-seq) samples, and developed a computational method, iSMART, to group similar TCRs into antigen-specific clusters. Integrative analysis on the TCR clusters with multi-omics datasets was performed to profile cancer-associated T cells and to uncover novel cancer antigens. Results: Clustered TCRs are associated with signatures of T-cell activation after antigen encounter. We further elucidated the phenotypes of clustered T cells using single-cell RNA-seq data, which revealed a novel subset of tissue-resident memory T-cell population with elevated metabolic status. An exciting application of the TCR clusters is to identify novel cancer antigens, exemplified by our identification of a candidate cancer/testis gene, HSFX1, through integrated analysis of HLA alleles and genomics data. The target was further validated using vaccination of humanized HLA-A*02:01 mice and ELISpot assay. Finally, we showed that clustered tumor-infiltrating TCRs can differentiate patients with early-stage cancer from healthy donors, using blood TCR repertoire sequencing data, suggesting potential applications in noninvasive cancer detection. Conclusions: Our analysis on the antigen-specific TCR clusters provides a unique resource for alternative antigen discovery and biomarker identification for cancer immunotherapies.
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U2 - 10.1158/1078-0432.CCR-19-3249
DO - 10.1158/1078-0432.CCR-19-3249
M3 - Article
C2 - 31831563
AN - SCOPUS:85081945316
SN - 1078-0432
VL - 26
SP - 1359
EP - 1371
JO - Clinical Cancer Research
JF - Clinical Cancer Research
IS - 6
ER -