A comprehensive proteogenomic pipeline for neoantigen discovery to advance personalized cancer immunotherapy

Florian Huber(University Hospital of Lausanne), Marion Arnaud(Ludwig Cancer Research), Brian J. Stevenson(SIB Swiss Institute of Bioinformatics), Justine Michaux(University Hospital of Lausanne), Fabrizio Benedetti(Ludwig Cancer Research), Jonathan Thévenet(University Hospital of Lausanne), Sara Bobisse(Ludwig Cancer Research), Johanna Chiffelle(Ludwig Cancer Research), Talita Gehert(Ludwig Cancer Research), Markus Müller(SIB Swiss Institute of Bioinformatics), HuiSong Pak(University Hospital of Lausanne), Anne I. Krämer(University Hospital of Lausanne), Emma Ricart Altimiras(University Hospital of Lausanne), Julien Racle(SIB Swiss Institute of Bioinformatics), Marie Taillandier-Coindard(University Hospital of Lausanne), Katja Muehlethaler(University Hospital of Lausanne), Aymeric Auger(Ludwig Cancer Research), Damien Saugy(Ludwig Cancer Research), Baptiste Murgues(Ludwig Cancer Research), Abdelkader Benyagoub(University Hospital of Lausanne), David Gfeller(SIB Swiss Institute of Bioinformatics), Denarda Dangaj Laniti(Ludwig Cancer Research), Lana E. Kandalaft(University Hospital of Lausanne), Blanca Navarro Rodrigo(University of Lausanne), Hasna Bouchaab(University Hospital of Lausanne), Stéphanie Tissot(University Hospital of Lausanne), George Coukos(Ludwig Cancer Research), Alexandre Harari(Ludwig Cancer Research), Michal Bassani‐Sternberg(University Hospital of Lausanne)
Nature Biotechnology
October 11, 2024
Cited by 82Open Access
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Abstract

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.


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