蛋白质基因组学
管道(软件)
免疫疗法
计算生物学
癌症免疫疗法
癌症
医学
癌症研究
生物
计算机科学
基因组
基因组学
遗传学
基因
内科学
程序设计语言
作者
Florian Huber,Marion Arnaud,Brian J. Stevenson,Justine Michaux,Fabrizio Benedetti,Jonathan Thévenet,Sara Bobisse,Johanna Chiffelle,Talita Gehert,Markus Müller,HuiSong Pak,Anne I. Krämer,Emma Ricart Altimiras,Julien Racle,Marie Taillandier-Coindard,Katja Muehlethaler,Aymeric Auger,Damien Saugy,Baptiste Murgues,Abdelkader Benyagoub
标识
DOI:10.1038/s41587-024-02420-y
摘要
The accurate identification and prioritization of antigenic peptides is crucial for the development of personalized cancer immunotherapies. Publicly available pipelines to predict clinical neoantigens do not allow direct integration of mass spectrometry immunopeptidomics data, which can uncover antigenic peptides derived from various canonical and noncanonical sources. To address this, we present an end-to-end clinical proteogenomic pipeline, called NeoDisc, that combines state-of-the-art publicly available and in-house software for immunopeptidomics, genomics and transcriptomics with in silico tools for the identification, prediction and prioritization of tumor-specific and immunogenic antigens from multiple sources, including neoantigens, viral antigens, high-confidence tumor-specific antigens and tumor-specific noncanonical antigens. We demonstrate the superiority of NeoDisc in accurately prioritizing immunogenic neoantigens over recent prioritization pipelines. We showcase the various features offered by NeoDisc that enable both rule-based and machine-learning approaches for personalized antigen discovery and neoantigen cancer vaccine design. Additionally, we demonstrate how NeoDisc's multiomics integration identifies defects in the cellular antigen presentation machinery, which influence the heterogeneous tumor antigenic landscape. The neoantigen discovery pipeline NeoDisc incorporates mass spectrometry immunopeptidomics data.
科研通智能强力驱动
Strongly Powered by AbleSci AI