| Literature DB >> 34079956 |
Martí Duran-Ferrer1,2, Guillem Clot3,4, Ferran Nadeu3,4, Renée Beekman3,4, Tycho Baumann4,5, Jessica Nordlund6, Yanara Marincevic-Zuniga6, Gudmar Lönnerholm7, Alfredo Rivas-Delgado3,5, Silvia Martín3,4, Raquel Ordoñez4,8, Giancarlo Castellano3, Marta Kulis3, Ana C Queirós3, Seung-Tae Lee9, Joseph Wiemels10, Romina Royo11, Montserrat Puiggrós11, Junyan Lu12, Eva Giné3,4,5, Sílvia Beà3,4,13, Pedro Jares3,4,13, Xabier Agirre4,8, Felipe Prosper4,8,14, Carlos López-Otín4,15, Xosé S Puente4,15, Christopher C Oakes13, Thorsten Zenz13,16, Julio Delgado3,4,5, Armando López-Guillermo3,4,5, Elías Campo3,4,17, José Ignacio Martín-Subero18,19,20,21.
Abstract
We report a systematic analysis of the DNA methylation variability in 1,595 samples of normal cell subpopulations and 14 tumor subtypes spanning the entire human B-cell lineage. Differential methylation among tumor entities relates to differences in cellular origin and to de novo epigenetic alterations, which allowed us to build an accurate machine learning-based diagnostic algorithm. We identify extensive patient-specific methylation variability in silenced chromatin associated with the proliferative history of normal and neoplastic B cells. Mitotic activity generally leaves both hyper- and hypomethylation imprints, but some B-cell neoplasms preferentially gain or lose DNA methylation. Subsequently, we construct a DNA methylation-based mitotic clock called epiCMIT, whose lapse magnitude represents a strong independent prognostic variable in B-cell tumors and is associated with particular driver genetic alterations. Our findings reveal DNA methylation as a holistic tracer of B-cell tumor developmental history, with implications in the differential diagnosis and prediction of clinical outcome.Entities:
Mesh:
Year: 2020 PMID: 34079956 PMCID: PMC8168619 DOI: 10.1038/s43018-020-00131-2
Source DB: PubMed Journal: Nat Cancer ISSN: 2662-1347