Abstract: Different data sources have been used to learn gene function. Whereas combining heterogeneous data sets to infer gene function has been widely studied, there is no empirical comparison to determine the relative effectiveness or usefulness of different types of data in terms of gene function prediction. In this paper, we report a comparative study of yeast gene function prediction using different data sources, namely microarray data, phylogenetic data, literature text data, and a combination of these three data sources. Our results showed that text data outperformed microarray data and phylo-genetic data in gene function prediction (p<0.01) as measured by sensitivity, accuracy, and correlation coefficient. There was no significa...
As various genome sequencing projects have already been completed or are near completion, genome res...
Abstract Background In general, gene function prediction can be formalized as a classification probl...
A rich resource of information on functional genomics data can be applied to annotating the thousand...
Motivation: One of the important goals of biological investigation is to predict the function of unc...
Motivation S. cerevisiae is one of the most important model organisms, and has has been the focus of...
Predicting the functions of unannotated genes is one of the major challenges of biological investiga...
A central challenge in genetics is to predict phenotypic variation from individual genome sequences....
The development of effective methods for the characterization of gene functions that are able to com...
Motivation: The availability of genome-scale data has enabled an abundance of novel analysis techniq...
We developed a machine learning system for determining gene functions from heterogeneous sources of ...
Computational approaches have promised to organize collections of functional genomics data into test...
As various genome sequencing projects have already been completed or are near completion, genome res...
Contains fulltext : 57741.pdf (publisher's version ) (Closed access)Genomic data p...
BackgroundLearning the function of genes is a major goal of computational genomics. Methods for infe...
In recent years, the amount of digital data that we produce has increased exponentially. This flood ...
As various genome sequencing projects have already been completed or are near completion, genome res...
Abstract Background In general, gene function prediction can be formalized as a classification probl...
A rich resource of information on functional genomics data can be applied to annotating the thousand...
Motivation: One of the important goals of biological investigation is to predict the function of unc...
Motivation S. cerevisiae is one of the most important model organisms, and has has been the focus of...
Predicting the functions of unannotated genes is one of the major challenges of biological investiga...
A central challenge in genetics is to predict phenotypic variation from individual genome sequences....
The development of effective methods for the characterization of gene functions that are able to com...
Motivation: The availability of genome-scale data has enabled an abundance of novel analysis techniq...
We developed a machine learning system for determining gene functions from heterogeneous sources of ...
Computational approaches have promised to organize collections of functional genomics data into test...
As various genome sequencing projects have already been completed or are near completion, genome res...
Contains fulltext : 57741.pdf (publisher's version ) (Closed access)Genomic data p...
BackgroundLearning the function of genes is a major goal of computational genomics. Methods for infe...
In recent years, the amount of digital data that we produce has increased exponentially. This flood ...
As various genome sequencing projects have already been completed or are near completion, genome res...
Abstract Background In general, gene function prediction can be formalized as a classification probl...
A rich resource of information on functional genomics data can be applied to annotating the thousand...