MOTIVATION: Gene fusions resulting from chromosomal aberrations are an important cause of cancer. The complexity of genomic changes in certain cancer types has hampered the identification of gene fusions by molecular cytogenetic methods, especially in carcinomas. This is changing with the advent of next-generation sequencing, which is detecting a substantial number of new fusion transcripts in individual cancer genomes. However, this poses the challenge of identifying those fusions with greater oncogenic potential amid a background of 'passenger' fusion sequences. RESULTS: In the present work, we have used some recently identified genomic hallmarks of oncogenic fusion genes to develop a pipeline for the classification of fusion sequences, namely, Oncofuse. The pipeline predicts the oncogenic potential of novel fusion genes, calculating the probability that a fusion sequence behaves as 'driver' of the oncogenic process based on features present in known oncogenic fusions. Cross-validation and extensive validation tests on independent datasets suggest a robust behavior with good precision and recall rates. We believe that Oncofuse could become a useful tool to guide experimental validation studies of novel fusion sequences found during next-generation sequencing analysis of cancer transcriptomes. AVAILABILITY AND IMPLEMENTATION: Oncofuse is a naive Bayes Network Classifier trained and tested using Weka machine learning package. The pipeline is executed by running a Java/Groovy script, available for download at www.unav.es/genetica/oncofuse.html.
MOTIVATION: Gene fusions resulting from chromosomal aberrations are an important cause of cancer. The complexity of genomic changes in certain cancer types has hampered the identification of gene fusions by molecular cytogenetic methods, especially in carcinomas. This is changing with the advent of next-generation sequencing, which is detecting a substantial number of new fusion transcripts in individual cancer genomes. However, this poses the challenge of identifying those fusions with greater oncogenic potential amid a background of 'passenger' fusion sequences. RESULTS: In the present work, we have used some recently identified genomic hallmarks of oncogenic fusion genes to develop a pipeline for the classification of fusion sequences, namely, Oncofuse. The pipeline predicts the oncogenic potential of novel fusion genes, calculating the probability that a fusion sequence behaves as 'driver' of the oncogenic process based on features present in known oncogenic fusions. Cross-validation and extensive validation tests on independent datasets suggest a robust behavior with good precision and recall rates. We believe that Oncofuse could become a useful tool to guide experimental validation studies of novel fusion sequences found during next-generation sequencing analysis of cancer transcriptomes. AVAILABILITY AND IMPLEMENTATION: Oncofuse is a naive Bayes Network Classifier trained and tested using Weka machine learning package. The pipeline is executed by running a Java/Groovy script, available for download at www.unav.es/genetica/oncofuse.html.
Authors: Fresia Pareja; Arnaud Da Cruz Paula; Rodrigo Gularte-Mérida; Mahsa Vahdatinia; Anqi Li; Felipe C Geyer; Edaise M da Silva; Gouri Nanjangud; Hannah Y Wen; Zsuzsanna Varga; Edi Brogi; Emad A Rakha; Britta Weigelt; Jorge S Reis-Filho Journal: NPJ Breast Cancer Date: 2020-06-05
Authors: Julie W Reeser; Dorrelyn Martin; Jharna Miya; Esko A Kautto; Ezra Lyon; Eliot Zhu; Michele R Wing; Amy Smith; Matthew Reeder; Eric Samorodnitsky; Hannah Parks; Karan R Naik; Joseph Gozgit; Nicholas Nowacki; Kurtis D Davies; Marileila Varella-Garcia; Lianbo Yu; Aharon G Freud; Joshua Coleman; Dara L Aisner; Sameek Roychowdhury Journal: J Mol Diagn Date: 2017-08-09 Impact factor: 5.568
Authors: Jisun Kim; Felipe C Geyer; Luciano G Martelotto; Charlotte Ky Ng; Raymond S Lim; Pier Selenica; Anqi Li; Fresia Pareja; Nicola Fusco; Marcia Edelweiss; Rahul Kumar; Rodrigo Gularte-Merida; Andre N Forbes; Ekta Khurana; Odette Mariani; Sunil Badve; Anne Vincent-Salomon; Larry Norton; Jorge S Reis-Filho; Britta Weigelt Journal: J Pathol Date: 2017-12-28 Impact factor: 7.996
Authors: Gillian Hsieh; Rob Bierman; Linda Szabo; Alex Gia Lee; Donald E Freeman; Nathaniel Watson; E Alejandro Sweet-Cordero; Julia Salzman Journal: Nucleic Acids Res Date: 2017-07-27 Impact factor: 16.971
Authors: Salvatore Piscuoglio; Kathleen A Burke; Charlotte K Y Ng; Anastasios D Papanastasiou; Felipe C Geyer; Gabriel S Macedo; Luciano G Martelotto; Ino de Bruijn; Maria R De Filippo; Anne M Schultheis; Rafael A Ioris; Douglas A Levine; Robert A Soslow; Brian P Rubin; Jorge S Reis-Filho; Britta Weigelt Journal: J Pathol Date: 2015-12-28 Impact factor: 7.996
Authors: Ilan Weinreb; Salvatore Piscuoglio; Luciano G Martelotto; Daryl Waggott; Charlotte K Y Ng; Bayardo Perez-Ordonez; Nicholas J Harding; Javier Alfaro; Kenneth C Chu; Agnes Viale; Nicola Fusco; Arnaud da Cruz Paula; Caterina Marchio; Rita A Sakr; Raymond Lim; Lester D R Thompson; Simion I Chiosea; Raja R Seethala; Alena Skalova; Edward B Stelow; Isabel Fonseca; Adel Assaad; Christine How; Jianxin Wang; Richard de Borja; Michelle Chan-Seng-Yue; Christopher J Howlett; Anthony C Nichols; Y Hannah Wen; Nora Katabi; Nicholas Buchner; Laura Mullen; Thomas Kislinger; Bradly G Wouters; Fei-Fei Liu; Larry Norton; John D McPherson; Brian P Rubin; Blaise A Clarke; Britta Weigelt; Paul C Boutros; Jorge S Reis-Filho Journal: Nat Genet Date: 2014-09-21 Impact factor: 38.330