Literature DB >> 29259006

ConsensusDriver Improves upon Individual Algorithms for Predicting Driver Alterations in Different Cancer Types and Individual Patients.

Denis Bertrand1, Sibyl Drissler2,3, Burton K Chia2, Jia Yu Koh2, Chenhao Li2, Chayaporn Suphavilai2,4, Iain Beehuat Tan5,6, Niranjan Nagarajan1.   

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. ©2017 American Association for Cancer Research.

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Year:  2017        PMID: 29259006     DOI: 10.1158/0008-5472.CAN-17-1345

Source DB:  PubMed          Journal:  Cancer Res        ISSN: 0008-5472            Impact factor:   12.701


  9 in total

1.  MaxMIF: A New Method for Identifying Cancer Driver Genes through Effective Data Integration.

Authors:  Yingnan Hou; Bo Gao; Guojun Li; Zhengchang Su
Journal:  Adv Sci (Weinh)       Date:  2018-07-23       Impact factor: 16.806

2.  Cancer Informatics in 2018: The Mysteries of the Cancer Genome Continue to Unravel, Deep Learning Approaches the Clinic, and Passive Data Collection Demonstrates Utility.

Authors:  Jeremy L Warner; Debra Patt
Journal:  Yearb Med Inform       Date:  2019-08-16

3.  C3: Consensus Cancer Driver Gene Caller.

Authors:  Chen-Yu Zhu; Chi Zhou; Yun-Qin Chen; Ai-Zong Shen; Zong-Ming Guo; Zhao-Yi Yang; Xiang-Yun Ye; Shen Qu; Jia Wei; Qi Liu
Journal:  Genomics Proteomics Bioinformatics       Date:  2019-08-26       Impact factor: 7.691

4.  Cutaneous and acral melanoma cross-OMICs reveals prognostic cancer drivers associated with pathobiology and ultraviolet exposure.

Authors:  Zdenko Herceg; Vinicius de Lima Vazquez; Akram Ghantous; Anna Luiza Silva Almeida Vicente; Alexei Novoloaca; Vincent Cahais; Zainab Awada; Cyrille Cuenin; Natália Spitz; André Lopes Carvalho; Adriane Feijó Evangelista; Camila Souza Crovador; Rui Manuel Reis
Journal:  Nat Commun       Date:  2022-07-15       Impact factor: 17.694

5.  Interplay between whole-genome doubling and the accumulation of deleterious alterations in cancer evolution.

Authors:  Saioa López; Emilia L Lim; Stuart Horswell; Kerstin Haase; Ariana Huebner; Michelle Dietzen; Thanos P Mourikis; Thomas B K Watkins; Andrew Rowan; Sally M Dewhurst; Nicolai J Birkbak; Gareth A Wilson; Peter Van Loo; Mariam Jamal-Hanjani; Charles Swanton; Nicholas McGranahan
Journal:  Nat Genet       Date:  2020-03-05       Impact factor: 38.330

6.  Identification of relevant genetic alterations in cancer using topological data analysis.

Authors:  Raúl Rabadán; Yamina Mohamedi; Udi Rubin; Tim Chu; Adam N Alghalith; Oliver Elliott; Luis Arnés; Santiago Cal; Álvaro J Obaya; Arnold J Levine; Pablo G Cámara
Journal:  Nat Commun       Date:  2020-07-30       Impact factor: 14.919

Review 7.  A Review of Precision Oncology Knowledgebases for Determining the Clinical Actionability of Genetic Variants.

Authors:  Xuanyi Li; Jeremy L Warner
Journal:  Front Cell Dev Biol       Date:  2020-02-11

8.  Pan-cancer multi-omics analysis and orthogonal experimental assessment of epigenetic driver genes.

Authors:  Rita Khoueiry; Akram Ghantous; Zdenko Herceg; Andrea Halaburkova; Vincent Cahais; Alexei Novoloaca; Mariana Gomes da Silva Araujo
Journal:  Genome Res       Date:  2020-09-22       Impact factor: 9.043

9.  Analysis of therapeutic targets and prognostic biomarkers of CXC chemokines in cervical cancer microenvironment.

Authors:  Weina Kong; Gang Zhao; Haixia Chen; Weina Wang; Xiaoqian Shang; Qiannan Sun; Fan Guo; Xiumin Ma
Journal:  Cancer Cell Int       Date:  2021-07-28       Impact factor: 5.722

  9 in total

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