在Silico管道中使用外显子测序数据鉴定癌症免疫治疗的肿瘤特异性抗原。

IF 3.7 Q2 GENETICS & HEREDITY Phenomics (Cham, Switzerland) Pub Date : 2022-12-08 eCollection Date: 2023-04-01 DOI:10.1007/s43657-022-00084-9
Diego Morazán-Fernández, Javier Mora, Jose Arturo Molina-Mora
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摘要

肿瘤特异性抗原或新抗原是仅在癌症细胞中表达而不在健康细胞中表达的肽。其中一些分子可以诱导免疫反应,因此,它们在基于癌症疫苗的免疫治疗策略中的应用已被广泛探索。基于这些方法的研究已经被当前的高通量DNA测序技术所触发。然而,使用DNA测序数据发现新抗原并没有通用或直接的生物信息学方案。因此,我们提出了一种生物信息学方案来检测与肿瘤组织中的单核苷酸变异(SNV)或“突变”相关的肿瘤特异性抗原。为此,我们使用公开可用的数据来构建我们的模型,包括从单个病例中获得的结直肠癌癌症和健康细胞的外显子组测序数据,以及特定人群中常见的人类白细胞抗原(HLA)I类等位基因。以哥斯达黎加中央山谷人群的HLA数据为例。该策略包括三个主要步骤:(1)测序数据的预处理;(2) 变体调用分析,以检测与健康组织相比的肿瘤特异性SNV;以及(3)在衍生自变体的肽(蛋白质片段、肿瘤特异性抗原)与所选群体的频繁等位基因的亲和力的背景下,对其进行预测和表征。在我们的模型数据中,我们发现了28个非沉默的SNV,存在于一号染色体的17个基因中。该方案产生了23个强结合肽,这些肽来源于哥斯达黎加人群的频繁HLA I类等位基因的SNV。尽管分析是作为实施管道的一个例子进行的,但据我们所知,这是首次在HLA等位基因的背景下使用DNA测序数据对癌症硅疫苗进行研究。结论是,标准化方案不仅能够在特异性中识别新抗原,而且还为使用最佳生物信息学实践最终设计癌症疫苗提供了完整的途径。补充信息:在线版本包含补充材料,可访问10.1007/s43657-022-00084-9。
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In Silico Pipeline to Identify Tumor-Specific Antigens for Cancer Immunotherapy Using Exome Sequencing Data.

Tumor-specific antigens or neoantigens are peptides that are expressed only in cancer cells and not in healthy cells. Some of these molecules can induce an immune response, and therefore, their use in immunotherapeutic strategies based on cancer vaccines has been extensively explored. Studies based on these approaches have been triggered by the current high-throughput DNA sequencing technologies. However, there is no universal nor straightforward bioinformatic protocol to discover neoantigens using DNA sequencing data. Thus, we propose a bioinformatic protocol to detect tumor-specific antigens associated with single nucleotide variants (SNVs) or "mutations" in tumoral tissues. For this purpose, we used publicly available data to build our model, including exome sequencing data from colorectal cancer and healthy cells obtained from a single case, as well as frequent human leukocyte antigen (HLA) class I alleles in a specific population. HLA data from Costa Rican Central Valley population was selected as an example. The strategy included three main steps: (1) pre-processing of sequencing data; (2) variant calling analysis to detect tumor-specific SNVs in comparison with healthy tissue; and (3) prediction and characterization of peptides (protein fragments, the tumor-specific antigens) derived from the variants, in the context of their affinity with frequent alleles of the selected population. In our model data, we found 28 non-silent SNVs, present in 17 genes in chromosome one. The protocol yielded 23 strong binders peptides derived from the SNVs for frequent HLA class I alleles for the Costa Rican population. Although the analyses were performed as an example to implement the pipeline, to our knowledge, this is the first study of an in silico cancer vaccine using DNA sequencing data in the context of the HLA alleles. It is concluded that the standardized protocol was not only able to identify neoantigens in a specific but also provides a complete pipeline for the eventual design of cancer vaccines using the best bioinformatic practices.

Supplementary information: The online version contains supplementary material available at 10.1007/s43657-022-00084-9.

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