利用nextNEOpi综合预测肿瘤新抗原。

4区 生物学 Q4 Biochemistry, Genetics and Molecular Biology
Methods in cell biology Pub Date : 2025-01-01 Epub Date: 2025-02-06 DOI:10.1016/bs.mcb.2025.01.007
Markus Ausserhofer, Dietmar Rieder, Francesca Finotello
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引用次数: 0

摘要

免疫疗法通过利用免疫系统靶向表达新抗原的肿瘤细胞,彻底改变了癌症治疗。新抗原是由肿瘤特异性畸变产生的肽,由癌细胞呈现并被T细胞识别。利用患者的测序数据计算预测来自体细胞突变和其他肿瘤特异性畸变的癌症新抗原是研究抗癌免疫反应和设计个性化免疫疗法的关键。然而,新抗原预测需要实现复杂的计算管道,从RNA和DNA测序数据中提取大规模信息,并得出新抗原候选物及其相关特征,以便对其进行优先级和选择。我们之前开发了nextNEOpi,这是一个全面和独立的生物信息学管道,不仅可以预测i类和ii类新抗原和融合新抗原,还可以揭示肿瘤-免疫细胞界面,量化新抗原的克隆性,免疫原性和肿瘤特异性指标,如肿瘤突变负担和免疫细胞受体库多样性。在本章中,我们通过分析从肺癌患者收集的多次活组织检查中产生的基因组和转录组数据来展示nextNEOpi管道的主要功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comprehensive prediction of tumor neoantigens with nextNEOpi.

Immunotherapy has revolutionized cancer treatment by harnessing the immune system to target tumor cells expressing neoantigens. Neoantigens are peptides arising from tumor-specific aberrations that are presented by cancer cells and recognized by T cells. The computational prediction of cancer neoantigens from somatic mutations and other tumor-specific aberrations using patients' sequencing data is key for the investigation of anticancer immune responses and for the design of personalized immunotherapies. However, neoantigen prediction requires the implementation of complex computational pipelines to distill large-scale information from RNA and DNA sequencing data and derive neoantigen candidates together with associated features for their prioritization and selection. We previously developed nextNEOpi, a comprehensive and stand-alone bioinformatics pipeline that not only predicts class-I and -II neoantigens and fusion neoantigens, but also sheds light onto the tumor-immune cell interface, quantifying neoantigen clonality, immunogenicity, and tumor-specific metrics like tumor mutational burden and immune-cell receptor repertoire diversity. In this chapter, we showcase the main capabilities of the nextNEOpi pipeline by analyzing genomic and transcriptomic data generated from multiple biopsies collected from patients with lung cancer.

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来源期刊
Methods in cell biology
Methods in cell biology 生物-细胞生物学
CiteScore
3.10
自引率
0.00%
发文量
125
审稿时长
3 months
期刊介绍: For over fifty years, Methods in Cell Biology has helped researchers answer the question "What method should I use to study this cell biology problem?" Edited by leaders in the field, each thematic volume provides proven, state-of-art techniques, along with relevant historical background and theory, to aid researchers in efficient design and effective implementation of experimental methodologies. Over its many years of publication, Methods in Cell Biology has built up a deep library of biological methods to study model developmental organisms, organelles and cell systems, as well as comprehensive coverage of microscopy and other analytical approaches.
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