» Articles » PMID: 20054992

An Integrated Probabilistic Approach for Gene Function Prediction Using Multiple Sources of High-throughput Data

Overview
Specialties Biology
Pharmacology
Date 2010 Jan 9
PMID 20054992
Citations 4
Authors
Affiliations
Soon will be listed here.
Abstract

Characterising gene function is one of the major challenging tasks in the post-genomic era. Various approaches have been developed to integrate multiple sources of high-throughput data to predict gene function. Most of those approaches are just used for research purpose and have not been implemented as publicly available tools. Even for those implemented applications, almost all of them are still web-based 'prediction servers' that have to be managed by specialists. This paper introduces a systematic method for integrating various sources of high-throughput data to predict gene function and analyse our prediction results and evaluates its performances based on the competition for mouse gene function prediction (MouseFunc). A stand-alone Java-based software package 'GeneFAS' is freely available at http://digbio. missouri.eduigenefas.

Citing Articles

A proteogenomic approach to understand splice isoform functions through sequence and expression-based computational modeling.

Li H, Omenn G, Guan Y Brief Bioinform. 2016; 17(6):1024-1031.

PMID: 26740460 PMC: 5142014. DOI: 10.1093/bib/bbv109.


Parametric Bayesian priors and better choice of negative examples improve protein function prediction.

Youngs N, Penfold-Brown D, Drew K, Shasha D, Bonneau R Bioinformatics. 2013; 29(9):1190-8.

PMID: 23511543 PMC: 3634187. DOI: 10.1093/bioinformatics/btt110.


Uncovering the molecular machinery of the human spindle--an integration of wet and dry systems biology.

Rojas A, Santamaria A, Malik R, Jensen T, Korner R, Morilla I PLoS One. 2012; 7(3):e31813.

PMID: 22427808 PMC: 3302876. DOI: 10.1371/journal.pone.0031813.


A protein domain co-occurrence network approach for predicting protein function and inferring species phylogeny.

Wang Z, Zhang X, Le M, Xu D, Stacey G, Cheng J PLoS One. 2011; 6(3):e17906.

PMID: 21455299 PMC: 3063783. DOI: 10.1371/journal.pone.0017906.