Department of Quantitative Health Sciences, Mayo Clinic, Jacksonville, Florida, USA.
National Institute of Allergy and Infectious Diseases, Bethesda, Maryland, USA.
J Immunother Cancer. 2024 May 15;12(5):e008988. doi: 10.1136/jitc-2024-008988.
Cancer neoantigens arise from protein-altering somatic mutations in tumor and rank among the most promising next-generation immuno-oncology agents when used in combination with immune checkpoint inhibitors. We previously developed a computational framework, REAL-neo, for identification, quality control, and prioritization of both class-I and class-II human leucocyte antigen (HLA)-presented neoantigens resulting from somatic single-nucleotide mutations, small insertions and deletions, and gene fusions. In this study, we developed a new module, SPLICE-neo, to identify neoantigens from aberrant RNA transcripts from two distinct sources: (1) DNA mutations within splice sites and (2) de novo RNA aberrant splicings.
First, SPLICE-neo was used to profile all DNA splice-site mutations in 11,892 tumors from The Cancer Genome Atlas (TCGA) and identified 11 profiles of splicing donor or acceptor site gains or losses. Transcript isoforms resulting from the top seven most frequent profiles were computed using novel logic models. Second, SPLICE-neo identified de novo RNA splicing events using RNA sequencing reads mapped to novel exon junctions from either single, double, or multiple exon-skipping events. The aberrant transcripts from both sources were then ranked based on isoform expression levels and z-scores assuming that individual aberrant splicing events are rare. Finally, top-ranked novel isoforms were translated into protein, and the resulting neoepitopes were evaluated for neoantigen potential using REAL-neo. The top splicing neoantigen candidates binding to HLA-A*02:01 were validated using in vitro T2 binding assays.
We identified abundant splicing neoantigens in four representative TCGA cancers: BRCA, LUAD, LUSC, and LIHC. In addition to their substantial contribution to neoantigen load, several splicing neoantigens were potent tumor antigens with stronger bindings to HLA compared with the positive control of antigens from influenza virus.
SPLICE-neo is the first tool to comprehensively identify and prioritize splicing neoantigens from both DNA splice-site mutations and de novo RNA aberrant splicings. There are two major advances of SPLICE-neo. First, we developed novel logic models that assemble and prioritize full-length aberrant transcripts from DNA splice-site mutations. Second, SPLICE-neo can identify exon-skipping events involving more than two exons, which account for a quarter to one-third of all skipping events.
肿瘤中的蛋白改变性体细胞突变产生的癌症新生抗原,在与免疫检查点抑制剂联合使用时,属于最有前途的下一代免疫肿瘤药物之一。我们之前开发了一个计算框架 REAL-neo,用于鉴定、质量控制和优先考虑源自体细胞单核苷酸突变、小插入和缺失以及基因融合的 I 类和 II 类人类白细胞抗原 (HLA) 呈现的新生抗原。在这项研究中,我们开发了一个新模块 SPLICE-neo,用于从两个不同来源的异常 RNA 转录本中鉴定新生抗原:(1) 剪接位点内的 DNA 突变,以及 (2) 从头 RNA 异常剪接。
首先,SPLICE-neo 用于分析来自癌症基因组图谱 (TCGA) 的 11892 个肿瘤中的所有 DNA 剪接位点突变,并确定了 11 种剪接供体或受体位点获得或丢失的图谱。使用新的逻辑模型计算源自前七种最常见图谱的转录本异构体。其次,SPLICE-neo 利用从头 RNA 剪接事件,从单、双或多个外显子跳跃事件映射到新外显子连接的 RNA 测序读,识别 RNA 剪接事件。然后根据异构体表达水平和 z 分数对来自这两个来源的异常转录本进行排名,假设个体异常剪接事件很少见。最后,对排名最高的新异构体进行翻译,得到的新生肽段用于 REAL-neo 评估新生抗原潜力。与 HLA-A*02:01 结合的顶级剪接新生抗原候选物通过体外 T2 结合测定进行验证。
我们在四个代表性的 TCGA 癌症:BRCA、LUAD、LUSC 和 LIHC 中鉴定了丰富的剪接新生抗原。除了对新生抗原负荷的大量贡献外,一些剪接新生抗原也是强有力的肿瘤抗原,与流感病毒抗原的阳性对照相比,与 HLA 的结合更强。
SPLICE-neo 是第一个全面鉴定和优先考虑源自 DNA 剪接位点突变和从头 RNA 异常剪接的剪接新生抗原的工具。SPLICE-neo 有两个主要的进步。首先,我们开发了新的逻辑模型,用于组装和优先考虑源自 DNA 剪接位点突变的全长异常转录本。其次,SPLICE-neo 可以识别涉及两个以上外显子的外显子跳跃事件,这些事件占所有跳跃事件的四分之一到三分之一。