• Quantitative Biomedical Research Center, Department of Population and Data Sciences, University of Texas Southwestern Medical Center, Dallas, TX, USA, 75390.
  • Department of Thoracic/Head & Neck Medical Oncology, MD Anderson Cancer Center, Houston, TX USA, 77030.
  • Department of Melanoma Medical Oncology, MD Anderson Cancer Center, Houston, TX USA, 77030.
  • Department of Pathology, New York University Grossman School of Medicine, New York, NY 10016.
  • Center for the Genetics of Host Defense, University of Texas Southwestern Medical Center, Dallas, TX, USA, 75390.
  • 新抗原在 T 细胞识别肿瘤细胞中起着关键作用;然而,只有一小部分新抗原真正引发 T 细胞反应,并且关于哪些新抗原被哪些 T 细胞受体 (TCR) 识别的线索很少。我们建立了一个名为 pMHC-TCR 结合预测网络 (pMTnet) 的基于迁移学习的模型,以预测由 I 类主要组织相容性复合物呈递的新抗原和一般 T 细胞抗原的 TCR 结合特异性。pMTnet 通过一系列分析得到了全面验证,并展示了比以前工作更大的进步。通过将 pMTnet 应用于人类肿瘤基因组学数据,我们发现新抗原通常比自身抗原更具免疫原性,但是人类内源性逆转录病毒 E(一种在肾癌中重新激活的特殊类型的自身抗原)比新抗原更具免疫原性。我们进一步发现,具有更多克隆扩增的 T 细胞的患者对躯干而非亚克隆新抗原表现出更好的亲和力,在黑色素瘤和肺癌而非肾癌中具有更有利的预后和对免疫疗法的治疗反应。预测 TCR-新抗原/抗原配对是现代免疫学中最艰巨的挑战之一;然而,我们仅使用 TCR 序列 (CDR3β)、抗原序列和 I 类主要组织相容性复合体等位基因就实现了对配对的准确预测,并且我们的工作揭示了使用 pMTnet 对人类肿瘤中 TCR 与主要组织相容性复合体之间相互作用的独特见解作为发现工具。

    Neoantigens play a key role in the recognition of tumour cells by T cells; however, only a small proportion of neoantigens truly elicit T-cell responses, and few clues exist as to which neoantigens are recognized by which T-cell receptors (TCRs). We built a transfer learning-based model named the pMHC–TCR binding prediction network (pMTnet) to predict TCR binding specificities of the neoantigens—and T cell antigens in general—presented by class I major histocompatibility complexes. pMTnet was comprehensively validated by a series of analyses and exhibited great advances over previous works. By applying pMTnet to human tumour genomics data, we discovered that neoantigens were generally more immunogenic than self-antigens, but human endogenous retrovirus E (a special type of self-antigen that is reactivated in kidney cancer) is more immunogenic than neoantigens. We further discovered that patients with more clonally expanded T cells that exhibit better affinity against truncal rather than subclonal neoantigens had more favourable prognosis and treatment response to immunotherapy in melanoma and lung cancer but not in kidney cancer. Predicting TCR–neoantigen/antigen pairing is one of the most daunting challenges in modern immunology; however, we achieved an accurate prediction of the pairing using only the TCR sequence (CDR3β), antigen sequence and class I major histocompatibility complex allele, and our work revealed unique insights into the interactions between TCRs and major histocompatibility complexes in human tumours, using pMTnet as a discovery tool.