Laboratory of Molecular Medicine, Shanghai Key Laboratory of Signaling and Disease Research, School of Life Sciences and Technology, Tongji Hospital, Tongji University Suzhou Institute, Tongji University, Shanghai, China.
School of Basic Medical Sciences, Henan University of Science and Technology, Luoyang, Henan, China.
Signal Transduct Target Ther. 2023 Oct 18;8(1):397. doi: 10.1038/s41392-023-01644-9.
Neoantigen vaccines are one of the most effective immunotherapies for personalized tumour treatment. The current immunogen design of neoantigen vaccines is usually based on whole-genome sequencing (WGS) and bioinformatics prediction that focuses on the prediction of binding affinity between peptide and MHC molecules, ignoring other peptide-presenting related steps. This may result in a gap between high prediction accuracy and relatively low clinical effectiveness. In this study, we designed an integrated in-silico pipeline, Neo-intline, which started from the SNPs and indels of the tumour samples to simulate the presentation process of peptides in-vivo through an integrated calculation model. Validation on the benchmark dataset of TESLA and clinically validated neoantigens illustrated that neo-intline could outperform current state-of-the-art tools on both sample level and melanoma level. Furthermore, by taking the mouse melanoma model as an example, we verified the effectiveness of 20 neoantigens, including 10 MHC-I and 10 MHC-II peptides. The in-vitro and in-vivo experiments showed that both peptides predicted by Neo-intline could recruit corresponding CD4 T cells and CD8 T cells to induce a T-cell-mediated cellular immune response. Moreover, although the therapeutic effect of neoantigen vaccines alone is not sufficient, combinations with other specific therapies, such as broad-spectrum immune-enhanced adjuvants of granulocyte-macrophage colony-stimulating factor (GM-CSF) and polyinosinic-polycytidylic acid (poly(I:C)), or immune checkpoint inhibitors, such as PD-1/PD-L1 antibodies, can illustrate significant anticancer effects on melanoma. Neo-intline can be used as a benchmark process for the design and screening of immunogenic targets for neoantigen vaccines.
肿瘤新生抗原疫苗是肿瘤个体化治疗最有效的免疫疗法之一。目前的肿瘤新生抗原疫苗免疫原设计通常基于全基因组测序(WGS)和生物信息学预测,主要侧重于预测肽与 MHC 分子之间的结合亲和力,而忽略了其他与肽呈递相关的步骤。这可能导致预测准确性高与临床效果相对较低之间存在差距。在本研究中,我们设计了一个集成的计算流程 Neo-intline,该流程从肿瘤样本的 SNPs 和 indels 开始,通过集成计算模型模拟肽在体内的呈递过程。在 TESLA 基准数据集和临床验证的新生抗原上的验证表明,neo-intline 在样本水平和黑色素瘤水平上均优于当前最先进的工具。此外,通过以小鼠黑色素瘤模型为例,我们验证了 20 种新生抗原的有效性,包括 10 种 MHC-I 和 10 种 MHC-II 肽。体外和体内实验表明,Neo-intline 预测的两种肽都可以募集相应的 CD4 T 细胞和 CD8 T 细胞,从而诱导 T 细胞介导的细胞免疫反应。此外,尽管新生抗原疫苗单独的治疗效果还不够,但与其他特定疗法的联合应用,如广谱免疫增强佐剂粒细胞-巨噬细胞集落刺激因子(GM-CSF)和聚肌胞苷酸(poly(I:C)),或免疫检查点抑制剂,如 PD-1/PD-L1 抗体,可以显著抑制黑色素瘤的生长。Neo-intline 可作为设计和筛选肿瘤新生抗原疫苗免疫原性靶标的基准流程。