Literature DB >> 11836224

Machine learning of functional class from phenotype data.

Amanda Clare1, Ross D King.   

Abstract

MOTIVATION: Mutant phenotype growth experiments are an important novel source of functional genomics data which have received little attention in bioinformatics. We applied supervised machine learning to the problem of using phenotype data to predict the functional class of Open Reading Frames (ORFs) in Saccaromyces cerevisiae. Three sources of data were used: TRansposon-Insertion Phenotypes, Localization and Expression in Saccharomyces (TRIPLES), European Functional Analysis Network (EUROFAN) and Munich Information Center for Protein Sequences (MIPS). The analysis of the data presented a number of challenges to machine learning: multi-class labels, a large number of sparsely populated classes, the need to learn a set of accurate rules (not a complete classification), and a very large amount of missing values. We modified the algorithm C4.5 to deal with these problems.
RESULTS: Rules were learnt which are accurate and biologically meaningful. The rules predict function of 83 ORFs of unknown function at an estimated accuracy of > or = 80%.

Entities:  

Mesh:

Year:  2002        PMID: 11836224     DOI: 10.1093/bioinformatics/18.1.160

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  8 in total

1.  Combining gene expression QTL mapping and phenotypic spectrum analysis to uncover gene regulatory relationships.

Authors:  Lei Bao; Lai Wei; Jeremy L Peirce; Ramin Homayouni; Hongqiang Li; Mi Zhou; Hao Chen; Lu Lu; Robert W Williams; Lawrence M Pfeffer; Dan Goldowitz; Yan Cui
Journal:  Mamm Genome       Date:  2006-06-12       Impact factor: 2.957

Review 2.  The zebrafish: scalable in vivo modeling for systems biology.

Authors:  Rahul C Deo; Calum A MacRae
Journal:  Wiley Interdiscip Rev Syst Biol Med       Date:  2010-09-29

3.  EnzML: multi-label prediction of enzyme classes using InterPro signatures.

Authors:  Luna De Ferrari; Stuart Aitken; Jano van Hemert; Igor Goryanin
Journal:  BMC Bioinformatics       Date:  2012-04-25       Impact factor: 3.169

4.  Predicting genome-wide redundancy using machine learning.

Authors:  Huang-Wen Chen; Sunayan Bandyopadhyay; Dennis E Shasha; Kenneth D Birnbaum
Journal:  BMC Evol Biol       Date:  2010-11-18       Impact factor: 3.260

5.  Towards a semi-automatic functional annotation tool based on decision-tree techniques.

Authors:  Jérôme Azé; Lucie Gentils; Claire Toffano-Nioche; Valentin Loux; Jean-François Gibrat; Philippe Bessières; Céline Rouveirol; Anne Poupon; Christine Froidevaux
Journal:  BMC Proc       Date:  2008-12-17

6.  Towards structured output prediction of enzyme function.

Authors:  Katja Astikainen; Liisa Holm; Esa Pitkänen; Sandor Szedmak; Juho Rousu
Journal:  BMC Proc       Date:  2008-12-17

7.  Combining guilt-by-association and guilt-by-profiling to predict Saccharomyces cerevisiae gene function.

Authors:  Weidong Tian; Lan V Zhang; Murat Taşan; Francis D Gibbons; Oliver D King; Julie Park; Zeba Wunderlich; J Michael Cherry; Frederick P Roth
Journal:  Genome Biol       Date:  2008-06-27       Impact factor: 13.583

8.  Functional genomics via metabolic footprinting: monitoring metabolite secretion by Escherichia coli tryptophan metabolism mutants using FT-IR and direct injection electrospray mass spectrometry.

Authors:  Naheed N Kaderbhai; David I Broadhurst; David I Ellis; Royston Goodacre; Douglas B Kell
Journal:  Comp Funct Genomics       Date:  2003
  8 in total

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