Author:
Pham Thi Mong Quynh,Nguyen Thanh Nhan,Nguyen Bui Que Tran,Tran Thi Phuong Diem,Pham Nguyen My Diem,Nguyen Hoang Thien Phuc,Ho Thi Kim Cuong,Nguyen Dinh Viet Linh,Nguyen Huu Thinh,Tran Duc Huy,Tran Thanh Sang,Pham Truong-Vinh Ngoc,Le Minh-Triet,Nguyen Thi Tuong Vy,Phan Minh-Duy,Giang Hoa,Nguyen Hoai-Nghia,Tran Le Son
Abstract
ABSTRACTIn the realm of cancer immunotherapy, the meticulous selection of neoantigens plays a fundamental role in enhancing personalized treatments. Traditionally, this selection process has heavily relied on predicting the binding of peptides to human leukocyte antigens (pHLA). Nevertheless, this approach often overlooks the dynamic interaction between tumor cells and the immune system. In response to this limitation, we have developed an innovative prediction algorithm rooted in machine learning, integrating T cell receptor β chain (TCRβ) profiling data from colorectal cancer (CRC) patients for a more precise neoantigen prioritization. TCRβ sequencing was conducted to profile the TCR repertoire of tumor-infiltrating lymphocytes (TILs) from 27 CRC patients. The data unveiled both intra-tumor and inter-patient heterogeneity in the TCRβ repertoires of CRC patients, likely resulting from the stochastic utilization of V and J segments in response to neoantigens. Our novel combined model integrates pHLA binding information with pHLA-TCR binding to prioritize neoantigens, resulting in heightened specificity and sensitivity compared to models using individual features alone. The efficacy of our proposed model was corroborated through ELISpot assays on long peptides, performed on four CRC patients. These assays demonstrated that neoantigen candidates prioritized by our combined model outperformed predictions made by the established tool NetMHCpan. This comprehensive assessment underscores the significance of integrating pHLA binding with pHLA-TCR binding analysis for more effective immunotherapeutic strategies.
Publisher
Cold Spring Harbor Laboratory