The proteogenomic landscape of multiple myeloma reveals insights into disease biology and therapeutic opportunities
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Published:2024-06-28
Issue:8
Volume:5
Page:1267-1284
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ISSN:2662-1347
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Container-title:Nature Cancer
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language:en
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Short-container-title:Nat Cancer
Author:
Ramberger EvelynORCID, Sapozhnikova Valeriia, Ng Yuen Lam Dora, Dolnik Anna, Ziehm MatthiasORCID, Popp Oliver, Sträng Eric, Kull Miriam, Grünschläger FlorianORCID, Krüger JosefineORCID, Benary ManuelaORCID, Müller SinaORCID, Gao Xiang, Murgai ArunimaORCID, Haji Mohamed, Schmidt Annika, Lutz Raphael, Nogai Axel, Braune JanORCID, Laue DominikORCID, Langer Christian, Khandanpour Cyrus, Bassermann FlorianORCID, Döhner HartmutORCID, Engelhardt MonikaORCID, Straka Christian, Hundemer MichaelORCID, Beule DieterORCID, Haas SimonORCID, Keller UlrichORCID, Einsele HermannORCID, Bullinger Lars, Knop StefanORCID, Mertins PhilippORCID, Krönke JanORCID
Abstract
AbstractMultiple myeloma (MM) is a plasma cell malignancy of the bone marrow. Despite therapeutic advances, MM remains incurable, and better risk stratification as well as new therapies are therefore highly needed. The proteome of MM has not been systematically assessed before and holds the potential to uncover insight into disease biology and improved prognostication in addition to genetic and transcriptomic studies. Here we provide a comprehensive multiomics analysis including deep tandem mass tag-based quantitative global (phospho)proteomics, RNA sequencing, and nanopore DNA sequencing of 138 primary patient-derived plasma cell malignancies encompassing treatment-naive MM, plasma cell leukemia and the premalignancy monoclonal gammopathy of undetermined significance, as well as healthy controls. We found that the (phospho)proteome of malignant plasma cells are highly deregulated as compared with healthy plasma cells and is both defined by chromosomal alterations as well as posttranscriptional regulation. A prognostic protein signature was identified that is associated with aggressive disease independent of established risk factors in MM. Integration with functional genetics and single-cell RNA sequencing revealed general and genetic subtype-specific deregulated proteins and pathways in plasma cell malignancies that include potential targets for (immuno)therapies. Our study demonstrates the potential of proteogenomics in cancer and provides an easily accessible resource for investigating protein regulation and new therapeutic approaches in MM.
Funder
Deutsche Forschungsgemeinschaft Berliner Sparkassenstiftung Medizin Deutsche Konsortium für Translationale Krebsforschung (DKTK), Berliner Krebsgesellschaft e.V. Bundesministerium für Bildung und Forschung
Publisher
Springer Science and Business Media LLC
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