| Literature DB >> 31387980 |
Erez Persi1,2,3, Davide Prandi4, Yuri I Wolf3, Yair Pozniak5, Georgina D Barnabas5, Keren Levanon6,7, Iris Barshack8, Christopher Barbieri9,10, Paola Gasperini4, Himisha Beltran10,11, Bishoy M Faltas10,11, Mark A Rubin12, Tamar Geiger5, Eugene V Koonin13, Francesca Demichelis14,11, David Horn1.
Abstract
Repetitive sequences are hotspots of evolution at multiple levels. However, due to difficulties involved in their assembly and analysis, the role of repeats in tumor evolution is poorly understood. We developed a rigorous motif-based methodology to quantify variations in the repeat content, beyond microsatellites, in proteomes and genomes directly from proteomic and genomic raw data. This method was applied to a wide range of tumors and normal tissues. We identify high similarity between repeat instability patterns in tumors and their patient-matched adjacent normal tissues. Nonetheless, tumor-specific signatures both in protein expression and in the genome strongly correlate with cancer progression and robustly predict the tumorigenic state. In a patient, the hierarchy of genomic repeat instability signatures accurately reconstructs tumor evolution, with primary tumors differentiated from metastases. We observe an inverse relationship between repeat instability and point mutation load within and across patients independent of other somatic aberrations. Thus, repeat instability is a distinct, transient, and compensatory adaptive mechanism in tumor evolution and a potential signal for early detection.Entities:
Keywords: cancer evolution; diagnosis; genome instability; prognosis; repeats
Year: 2019 PMID: 31387980 PMCID: PMC6708321 DOI: 10.1073/pnas.1908790116
Source DB: PubMed Journal: Proc Natl Acad Sci U S A ISSN: 0027-8424 Impact factor: 11.205