Characterization of Tumor Antigens from Multi-omics Data: Computational Approaches and Resources.

Yunzhe Wang, James Wengler, Yuzhu Fang, Joseph Zhou, Hang Ruan, Zhao Zhang, Leng Han
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Abstract

Tumor-specific antigens, also known as neoantigens, have potential utility in anti-cancer immunotherapy, including immune checkpoint blockade (ICB), neoantigen-specific T cell receptor-engineered T (TCR-T), chimeric antigen receptor T (CAR-T), and therapeutic cancer vaccines (TCVs). After recognizing presented neoantigens, the immune system becomes activated and triggers the death of tumor cells. Neoantigens may be derived from multiple origins, including somatic mutations (single nucleotide variants, insertion/deletions, and gene fusions), circular RNAs, alternative splicing, RNA editing, and polymorphic microbiome. An increasing amount of bioinformatics tools and algorithms are being developed to predict tumor neoantigens derived from different sources, which may require inputs from different multi-omics data. In addition, calculating the peptide-major histocompatibility complex (MHC) affinity can aid in selecting putative neoantigens, as high binding affinities facilitate antigen presentation. Based on these approaches and previous experiments, many resources were developed to reveal the landscape of tumor neoantigens across multiple cancer types. Herein, we summarized these tools, algorithms, and resources to provide an overview of computational analysis for neoantigen discovery and prioritization, as well as the future development of potential clinical utilities in this field.

基于多组学数据的肿瘤抗原表征:计算方法和资源。
肿瘤特异性抗原,也称为新抗原,在抗癌免疫治疗中具有潜在的用途,包括免疫检查点阻断(ICB)、新抗原特异性T细胞受体工程T (TCR-T)、嵌合抗原受体T (CAR-T)和治疗性癌症疫苗(tcv)。在识别新抗原后,免疫系统被激活并触发肿瘤细胞的死亡。新抗原可能来源于多个来源,包括体细胞突变(单核苷酸变异、插入/缺失和基因融合)、环状RNA、选择性剪接、RNA编辑和多态微生物组。正在开发越来越多的生物信息学工具和算法来预测来自不同来源的肿瘤新抗原,这可能需要来自不同多组学数据的输入。此外,计算多肽-主要组织相容性复合体(MHC)亲和力有助于选择推定的新抗原,因为高结合亲和力有助于抗原呈递。基于这些方法和先前的实验,开发了许多资源来揭示多种癌症类型的肿瘤新抗原景观。在此,我们总结了这些工具、算法和资源,概述了新抗原发现和优先排序的计算分析,以及该领域潜在临床应用的未来发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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