Your browser doesn't support javascript.
loading
ConsensusDriver Improves upon Individual Algorithms for Predicting Driver Alterations in Different Cancer Types and Individual Patients.
Bertrand, Denis; Drissler, Sibyl; Chia, Burton K; Koh, Jia Yu; Li, Chenhao; Suphavilai, Chayaporn; Tan, Iain Beehuat; Nagarajan, Niranjan.
Afiliação
  • Bertrand D; Computational and Systems Biology, Genome Institute of Singapore, Singapore. bertrandd@gis.a-star.edu.sg nagarajann@gis.a-star.edu.sg.
  • Drissler S; Computational and Systems Biology, Genome Institute of Singapore, Singapore.
  • Chia BK; Terry Fox Laboratory, BC Cancer Agency, British Columbia, Canada.
  • Koh JY; Computational and Systems Biology, Genome Institute of Singapore, Singapore.
  • Li C; Computational and Systems Biology, Genome Institute of Singapore, Singapore.
  • Suphavilai C; Computational and Systems Biology, Genome Institute of Singapore, Singapore.
  • Tan IB; Computational and Systems Biology, Genome Institute of Singapore, Singapore.
  • Nagarajan N; Department of Computer Science, School of Computing, National University of Singapore, Singapore.
Cancer Res ; 78(1): 290-301, 2018 01 01.
Article em En | MEDLINE | ID: mdl-29259006
ABSTRACT
Existing cancer driver prediction methods are based on very different assumptions and each of them can detect only a particular subset of driver genes. Here we perform a comprehensive assessment of 18 driver prediction methods on more than 3,400 tumor samples from 15 cancer types, all to determine their suitability in guiding precision medicine efforts. We categorized these methods into five groups functional impact on proteins in general (FI) or specific to cancer (FIC), cohort-based analysis for recurrent mutations (CBA), mutations with expression correlation (MEC), and methods that use gene interaction network-based analysis (INA). The performance of driver prediction methods varied considerably, with concordance with a gold standard varying from 9% to 68%. FI methods showed relatively poor performance (concordance <22%), while CBA methods provided conservative results but required large sample sizes for high sensitivity. INA methods, through the integration of genomic and transcriptomic data, and FIC methods, by training cancer-specific models, provided the best trade-off between sensitivity and specificity. As the methods were found to predict different subsets of driver genes, we propose a novel consensus-based approach, ConsensusDriver, which significantly improves the quality of predictions (20% increase in sensitivity) in patient subgroups or even individual patients. Consensus-based methods like ConsensusDriver promise to harness the strengths of different driver prediction paradigms.

Significance:

These findings assess state-of-the-art cancer driver prediction methods and develop a new and improved consensus-based approach for use in precision oncology. Cancer Res; 78(1); 290-301. ©2017 AACR.
Assuntos

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Algoritmos / Medicina de Precisão / Neoplasias Idioma: En Ano de publicação: 2018 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Algoritmos / Medicina de Precisão / Neoplasias Idioma: En Ano de publicação: 2018 Tipo de documento: Article