Mining the coding and non-coding genome for cancer drivers

Jia Li, Damien Drubay, Stefan Michiels, Daniel Gautheret

    Résultats de recherche: Contribution à un journalArticle 'review'Revue par des pairs

    12 Citations (Scopus)

    Résumé

    Progress in next-generation sequencing provides unprecedented opportunities to fully characterize the spectrum of somatic mutations of cancer genomes. Given the large number of somatic mutations identified by such technologies, the prioritization of cancer-driving events is a consistent bottleneck. Most bioinformatics tools concentrate on driver mutations in the coding fraction of the genome, those causing changes in protein products. As more non-coding pathogenic variants are identified and characterized, the development of computational approaches to effectively prioritize cancer-driving variants within the non-coding fraction of human genome is becoming critical. After a short summary of methods for coding variant prioritization, we here review the highly diverse non-coding elements that may act as cancer drivers and describe recent methods that attempt to evaluate the deleteriousness of sequence variation in these elements. With such tools, the prioritization and identification of cancer-implicated regulatory elements and non-coding RNAs is becoming a reality.

    langue originaleAnglais
    Pages (de - à)307-315
    Nombre de pages9
    journalCancer Letters
    Volume369
    Numéro de publication2
    Les DOIs
    étatPublié - 28 déc. 2015

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