Xia Jiaqi, Li Shuai, Ren Baorui, Zhang Pengxia
Key laboratory of Microecology-Immune Regulatory Network and Related Diseases, School of Basic Medicine, Jiamusi University, Jiamusi, Heilongjiang, China.
Front Oncol. 2023 Apr 12;13:1098523. doi: 10.3389/fonc.2023.1098523. eCollection 2023.
Neoepitopes have attracted much attention as targets for immunotherapy against cancer. Therefore, efficient neoepitope screening technology is an essential step in the development of personalized vaccines. Circular RNAs (circRNAs) are generated by back-splicing and have a single-stranded continuous circular structure. So far, various circRNAs have been poorly characterized, though new evidence suggests that a few translated circRNAs may play a role in cancer. In the present study, circRNA was used as a source of neoepitope, a novel strategy as circRNA-derived neoepitopes have never been previously explored. The present study reports CIRC_neo (circRNA-derived neoepitope prediction pipeline), which is a comprehensive and automated bioinformatic pipeline for the prediction of circRNA-derived neoepitopes from RNA sequencing data. The computational prediction from sequencing data requires complex computational workflows to identify circRNAs, derive the resulting peptides, infer the types of human leukocyte antigens (HLA I and HLA II) in patients, and predict the neoepitopes binding to these antigens. The present study proposes a novel source of neoepitopes. The study focused on cancer-specific circRNAs, which have greatly expanded the source pool for neoepitope discovery. The statistical analysis of different features of circRNA-derived neoepitopes revealed that circRNAs could produce long proteins or truncated proteins. Because the peptides were completely foreign to the human body, they could be highly immunogenic. Importantly, circRNA-derived neoepitopes capable of binding to HLA were discovered. In the current study, circRNAs were systematically analyzed, revealing potential targets and novel research clues for cancer diagnosis, treatment, and prospective personalized vaccine research.
新表位作为癌症免疫治疗的靶点已引起广泛关注。因此,高效的新表位筛选技术是个性化疫苗开发的关键步骤。环状RNA(circRNAs)由反向剪接产生,具有单链连续环状结构。到目前为止,各种circRNAs的特征还不清楚,不过新证据表明一些可翻译的circRNAs可能在癌症中发挥作用。在本研究中,circRNA被用作新表位的来源,这是一种新策略,因为此前从未探索过circRNA衍生的新表位。本研究报告了CIRC_neo(circRNA衍生新表位预测流程),它是一个全面且自动化的生物信息学流程,用于从RNA测序数据中预测circRNA衍生的新表位。从测序数据进行计算预测需要复杂的计算工作流程,以识别circRNAs、推导产生的肽段、推断患者体内人类白细胞抗原(HLA I和HLA II)的类型,并预测与这些抗原结合的新表位。本研究提出了一种新的新表位来源。该研究聚焦于癌症特异性circRNAs,极大地扩展了新表位发现的来源库。对circRNA衍生新表位不同特征的统计分析表明,circRNAs可以产生长蛋白或截短蛋白。由于这些肽段对人体来说是完全外来的,它们可能具有高度免疫原性。重要的是,发现了能够与HLA结合的circRNA衍生新表位。在当前研究中,对circRNAs进行了系统分析,为癌症诊断、治疗以及前瞻性个性化疫苗研究揭示了潜在靶点和新的研究线索。