| Literature DB >> 31092228 |
Arne Van Hoeck1, Niels H Tjoonk2,3, Ruben van Boxtel3, Edwin Cuppen2,4.
Abstract
BACKGROUND: In the past decade, systematic and comprehensive analyses of cancer genomes have identified cancer driver genes and revealed unprecedented insight into the molecular mechanisms underlying the initiation and progression of cancer. These studies illustrate that although every cancer has a unique genetic make-up, there are only a limited number of mechanisms that shape the mutational landscapes of cancer genomes, as reflected by characteristic computationally-derived mutational signatures. Importantly, the molecular mechanisms underlying specific signatures can now be dissected and coupled to treatment strategies. Systematic characterization of mutational signatures in a cancer patient's genome may thus be a promising new tool for molecular tumor diagnosis and classification.Entities:
Keywords: Mutational signature, Cancer diagnosis, Cancer biomarkers, Cancer genomics, Molecular medicine, Whole genome sequencing
Mesh:
Year: 2019 PMID: 31092228 PMCID: PMC6521503 DOI: 10.1186/s12885-019-5677-2
Source DB: PubMed Journal: BMC Cancer ISSN: 1471-2407 Impact factor: 4.430
Fig. 1Mutational processes linked to treatment selection via mutational signatures. Mutational signatures in tumor genomes can reflect the activity of specific mutational processes and thereby provide support for therapy selection. Different types of mutational signatures (a) can be considered: base substitution signatures (orange), indel signatures (green), rearrangement signatures (yellow), geographically localized mutational phenomena (blue) or other signatures characterized by copy-number variations (grey). Diagnostic interpretation of characteristic signatures can contribute to therapy choice (e) and include (green) or exclude (red) patients from a treatment. Actionable pathways that can be identified by mutational signatures (a) mainly include DNA repair defects (b), which was confirmed by the presence of pathogenic mutations in the indicated genes in these pathways (c). The prevalence of germline pathogenic mutations in these genes is typically linked to a cancer predisposition syndrome (d). Abbreviations: CS-[number], COSMIC signature; RS-[number], rearrangement signature; MH-indels, indels at microhomologies; STR-indels, short tandem repeat-mediated indels; TSB sigs, signatures showing transcriptional strand bias. APOBEC, apolipoprotein B DNA-editing complex; MAP, MUTYH-associated polyposis; NAP, NTHL1-associated polyposis; PARP, poly(ADP-ribose) polymerase; PPAP, polymerase proofreading associated polyposis. * defects in base excision repair have been associated with these characteristic substitutions
Fig. 2Mutational signature analysis as a tool in cancer diagnostics. A patient who is diagnosed with cancer will undergo biopsy of both the tumor tissue and a healthy tissue sample (e.g. blood). The entire DNA of both specimens will then be read using whole-genome sequencing (WGS), which allows the characterization of somatic mutations in the form of base substitutions, indels, rearrangements, copy-number variations (CNVs) and variations thereof. The healthy sample can be used to characterize predisposition variants, and somatic events can identify potentially actionable somatic tumor driver variants. Mutational signature analysis can provide additional evidence to support the interpretation of these measurements, such as for the interpretation of Variants of Unknown Significance (horizontal arrows), but can also provide direct support for the cancer diagnosis. The result of this workflow will influence clinical interventions such as treatment decisions and family counseling if a predisposition variant has been identified, and allows for stratification of patients towards effective anti-cancer drugs (precision medicine) to improve the patient’s outcome (prognosis)