| Literature DB >> 29848362 |
Elena Piñeiro-Yáñez1, Miguel Reboiro-Jato2,3, Gonzalo Gómez-López1, Javier Perales-Patón1, Kevin Troulé1, José Manuel Rodríguez4, Héctor Tejero1, Takeshi Shimamura5, Pedro Pablo López-Casas1, Julián Carretero6, Alfonso Valencia1, Manuel Hidalgo1,7, Daniel Glez-Peña2,3, Fátima Al-Shahrour8.
Abstract
BACKGROUND: Large-sequencing cancer genome projects have shown that tumors have thousands of molecular alterations and their frequency is highly heterogeneous. In such scenarios, physicians and oncologists routinely face lists of cancer genomic alterations where only a minority of them are relevant biomarkers to drive clinical decision-making. For this reason, the medical community agrees on the urgent need of methodologies to establish the relevance of tumor alterations, assisting in genomic profile interpretation, and, more importantly, to prioritize those that could be clinically actionable for cancer therapy.Entities:
Keywords: Cancer genomics; Druggable genome; In silico prescription; Personalized medicine; Precision oncology; Targeted therapy; Translational bioinformatics
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Year: 2018 PMID: 29848362 PMCID: PMC5977747 DOI: 10.1186/s13073-018-0546-1
Source DB: PubMed Journal: Genome Med ISSN: 1756-994X Impact factor: 11.117
Fig. 1PanDrugs score calculation. a Overview of the DScore and GScore calculation and their corresponding annotation sources. PanDrugs considers drug indication and status, gene–drug associations and number of hits to calculate the DScore. GScore is estimated according to gene essentiality and tumoral vulnerability, gene relevance in cancer, the biological impact of mutations, the frequency of gene alterations, and their clinical implications. b PanDrugs considers the “Best therapeutic candidates” based on the accumulated and weighted scoring of GScore and DScore
Fig. 2Possible scenarios for PanDrugs therapeutic candidates. PanDrugs proposes three potential types of druggable candidates. This includes: (1) direct targets, a gene that contributes to a disease phenotype and can be directly targeted by a drug; (2) drug-resistance biomarkers, a gene which genetic status is associated with a drug response from clinical or pre-clinical evidence but its protein product is not the direct target of the drug; and (3) pathway members, a targetable gene located downstream to the altered one. To illustrate this, tumors mutated in EGFR carrying MET amplifications will not respond to EGFR inhibitors (red). PanDrugs proposes as therapeutic strategy MET inhibitors and targeting MET downstream proteins (green) to drive tumor cell death
Fig. 3a Comparison of current in silico drug prescription tools based on genomic data. b Venn diagram for drug–gene associations available in DGIdb v3.0.2, Cancer Genome Interpreter, OncoKB, and PanDrugs. Global data for associations from CancerResource and Personalized Cancer Therapy is not accessible. Total numbers for non-redundant drug–gene interactions after drug standardization using PubChem to compare the resources are 29,197 (DGidb), 349 (CGI), 129 (OncoKB), and 43,909 (PanDrugs)