Literature DB >> 15606969

Biological applications of support vector machines.

Zheng Rong Yang1.   

Abstract

One of the major tasks in bioinformatics is the classification and prediction of biological data. With the rapid increase in size of the biological databanks, it is essential to use computer programs to automate the classification process. At present, the computer programs that give the best prediction performance are support vector machines (SVMs). This is because SVMs are designed to maximise the margin to separate two classes so that the trained model generalises well on unseen data. Most other computer programs implement a classifier through the minimisation of error occurred in training, which leads to poorer generalisation. Because of this, SVMs have been widely applied to many areas of bioinformatics including protein function prediction, protease functional site recognition, transcription initiation site prediction and gene expression data classification. This paper will discuss the principles of SVMs and the applications of SVMs to the analysis of biological data, mainly protein and DNA sequences.

Mesh:

Year:  2004        PMID: 15606969     DOI: 10.1093/bib/5.4.328

Source DB:  PubMed          Journal:  Brief Bioinform        ISSN: 1467-5463            Impact factor:   11.622


  57 in total

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Journal:  Environ Sci Nano       Date:  2017-11-01

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Journal:  Mol Cell Proteomics       Date:  2012-02-27       Impact factor: 5.911

6.  Mining SARS-CoV protease cleavage data using non-orthogonal decision trees: a novel method for decisive template selection.

Authors:  Zheng Rong Yang
Journal:  Bioinformatics       Date:  2005-03-29       Impact factor: 6.937

7.  CASAnova: a multiclass support vector machine model for the classification of human sperm motility patterns.

Authors:  Summer G Goodson; Sarah White; Alicia M Stevans; Sanjana Bhat; Chia-Yu Kao; Scott Jaworski; Tamara R Marlowe; Martin Kohlmeier; Leonard McMillan; Steven H Zeisel; Deborah A O'Brien
Journal:  Biol Reprod       Date:  2017-11-01       Impact factor: 4.285

8.  Support vector machine applied to predict the zoonotic potential of E. coli O157 cattle isolates.

Authors:  Nadejda Lupolova; Timothy J Dallman; Louise Matthews; James L Bono; David L Gally
Journal:  Proc Natl Acad Sci U S A       Date:  2016-09-19       Impact factor: 11.205

9.  PaCRISPR: a server for predicting and visualizing anti-CRISPR proteins.

Authors:  Jiawei Wang; Wei Dai; Jiahui Li; Ruopeng Xie; Rhys A Dunstan; Christopher Stubenrauch; Yanju Zhang; Trevor Lithgow
Journal:  Nucleic Acids Res       Date:  2020-07-02       Impact factor: 16.971

10.  Naturally occurring human urinary peptides for use in diagnosis of chronic kidney disease.

Authors:  David M Good; Petra Zürbig; Angel Argilés; Hartwig W Bauer; Georg Behrens; Joshua J Coon; Mohammed Dakna; Stéphane Decramer; Christian Delles; Anna F Dominiczak; Jochen H H Ehrich; Frank Eitner; Danilo Fliser; Moritz Frommberger; Arnold Ganser; Mark A Girolami; Igor Golovko; Wilfried Gwinner; Marion Haubitz; Stefan Herget-Rosenthal; Joachim Jankowski; Holger Jahn; George Jerums; Bruce A Julian; Markus Kellmann; Volker Kliem; Walter Kolch; Andrzej S Krolewski; Mario Luppi; Ziad Massy; Michael Melter; Christian Neusüss; Jan Novak; Karlheinz Peter; Kasper Rossing; Harald Rupprecht; Joost P Schanstra; Eric Schiffer; Jens-Uwe Stolzenburg; Lise Tarnow; Dan Theodorescu; Visith Thongboonkerd; Raymond Vanholder; Eva M Weissinger; Harald Mischak; Philippe Schmitt-Kopplin
Journal:  Mol Cell Proteomics       Date:  2010-07-08       Impact factor: 5.911

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