Pan-cancer proteogenomics expands the landscape of therapeutic targets

泛癌症蛋白质组学拓展了治疗靶点的范围

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作者:Sara R Savage, Xinpei Yi, Jonathan T Lei, Bo Wen, Hongwei Zhao, Yuxing Liao, Eric J Jaehnig, Lauren K Somes, Paul W Shafer, Tobie D Lee, Zile Fu, Yongchao Dou, Zhiao Shi, Daming Gao, Valentina Hoyos, Qiang Gao, Bing Zhang

Abstract

Fewer than 200 proteins are targeted by cancer drugs approved by the Food and Drug Administration (FDA). We integrate Clinical Proteomic Tumor Analysis Consortium (CPTAC) proteogenomics data from 1,043 patients across 10 cancer types with additional public datasets to identify potential therapeutic targets. Pan-cancer analysis of 2,863 druggable proteins reveals a wide abundance range and identifies biological factors that affect mRNA-protein correlation. Integration of proteomic data from tumors and genetic screen data from cell lines identifies protein overexpression- or hyperactivation-driven druggable dependencies, enabling accurate predictions of effective drug targets. Proteogenomic identification of synthetic lethality provides a strategy to target tumor suppressor gene loss. Combining proteogenomic analysis and MHC binding prediction prioritizes mutant KRAS peptides as promising public neoantigens. Computational identification of shared tumor-associated antigens followed by experimental confirmation nominates peptides as immunotherapy targets. These analyses, summarized at https://targets.linkedomics.org, form a comprehensive landscape of protein and peptide targets for companion diagnostics, drug repurposing, and therapy development.

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