Motivation S. cerevisiae is one of the most important model organisms, and has has been the focus of over a century of study. In spite of these efforts, 40% of its open reading frames (ORFs) remain classified as having unknown function (MIPS: Munich Information Center for Protein Sequences). We wished to make predictions for the function of these ORFs using data mining, as we have previously successfully done for the genomes of M. tuberculosis and E. coli. Applying this approach to the larger and eukaryotic S. cerevisiae genome involves modifying the machine learning and data mining algorithms, as this is a larger organism with more data available, and a more challenging functional classification. Results Novel extensions to the machine lea...
As various genome sequencing projects have already been completed or are near completion, genome res...
Computational approaches have promised to organize collections of functional genomics data into test...
To understand biology at a system level, I presented novel machine learning algorithms to reveal the...
Motivation S. cerevisiae is one of the most important model organisms, and has has been the focus of...
Motivation: A central problem in bioinformatics is the assignment of function to sequenced open read...
yeast Saccharomyces cerevisiae and the discovery that its genome encodes approximately 6,000 predict...
Yeast (Saccharomyces cerevisiae) has been an instrumental model system for an extraordinary diverse ...
BACKGROUND: Some upstream open reading frames (uORFs) regulate gene expression (i.e., they are funct...
Motivation: Mutant phenotype growth experiments are an important novel source of functional genomics...
A central challenge in genetics is to predict phenotypic variation from individual genome sequences....
Abstract: Different data sources have been used to learn gene function. Whereas combining heterogene...
Abstract Background Some upstream open reading frames (uORFs) regulate gene expression (i.e., they a...
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 ...
The annotation of the well-studied organism, Saccharomyces cerevisiae, has been improving over the p...
As various genome sequencing projects have already been completed or are near completion, genome res...
Computational approaches have promised to organize collections of functional genomics data into test...
To understand biology at a system level, I presented novel machine learning algorithms to reveal the...
Motivation S. cerevisiae is one of the most important model organisms, and has has been the focus of...
Motivation: A central problem in bioinformatics is the assignment of function to sequenced open read...
yeast Saccharomyces cerevisiae and the discovery that its genome encodes approximately 6,000 predict...
Yeast (Saccharomyces cerevisiae) has been an instrumental model system for an extraordinary diverse ...
BACKGROUND: Some upstream open reading frames (uORFs) regulate gene expression (i.e., they are funct...
Motivation: Mutant phenotype growth experiments are an important novel source of functional genomics...
A central challenge in genetics is to predict phenotypic variation from individual genome sequences....
Abstract: Different data sources have been used to learn gene function. Whereas combining heterogene...
Abstract Background Some upstream open reading frames (uORFs) regulate gene expression (i.e., they a...
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 ...
The annotation of the well-studied organism, Saccharomyces cerevisiae, has been improving over the p...
As various genome sequencing projects have already been completed or are near completion, genome res...
Computational approaches have promised to organize collections of functional genomics data into test...
To understand biology at a system level, I presented novel machine learning algorithms to reveal the...