As various genome sequencing projects have already been completed or are near completion, genome researchers are shifting their focus from structural genomics to functional genomics. Functional genomics represents the next phase, that expands the biological investigation to studying the functionality of genes of a single organism as well asstudying and correlating the functionality of genes across many different organisms. Recently developed methods for monitoring genome-wide mRNA expression changes hold the promise of allowing us to inexpensively gain insights into the function of unknown genes. In this paper we focus on evaluating the feasibility of using supervised machine learning methods for determining the function of genes basedsol...
Systems biology and bioinformatics are now major fields for productive research. DNA microarrays and...
This paper presents an application of supervised machine learning approaches to the classification o...
Abstract Background Development of robust and efficient methods for analyzing and interpreting high ...
As various genome sequencing projects have already been completed or are near completion, genome res...
In the paper we study the application of various supervised machine learning techniques to induce cl...
One of the primary goals of bioinformatics is the identification of the function of genes. The...
The authors introduce a method of functionally classifying genes by using gene expression data from ...
Functional genomics refers to the task of determining gene and protein function for whole genomes, a...
Abstract. Prediction of gene function from expression profiles is an in-triguing problem that has be...
Microarray technologies enable the quantitative simultaneously monitoring of expression levels for t...
The Guilt-by-Association (GBA) principle, according to which genes with similar expression profiles ...
Abstract Background Expression array data are used to predict biological functions of uncharacterize...
International audienceBACKGROUND: Microarrays have become extremely useful for analysing genetic phe...
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...
Systems biology and bioinformatics are now major fields for productive research. DNA microarrays and...
This paper presents an application of supervised machine learning approaches to the classification o...
Abstract Background Development of robust and efficient methods for analyzing and interpreting high ...
As various genome sequencing projects have already been completed or are near completion, genome res...
In the paper we study the application of various supervised machine learning techniques to induce cl...
One of the primary goals of bioinformatics is the identification of the function of genes. The...
The authors introduce a method of functionally classifying genes by using gene expression data from ...
Functional genomics refers to the task of determining gene and protein function for whole genomes, a...
Abstract. Prediction of gene function from expression profiles is an in-triguing problem that has be...
Microarray technologies enable the quantitative simultaneously monitoring of expression levels for t...
The Guilt-by-Association (GBA) principle, according to which genes with similar expression profiles ...
Abstract Background Expression array data are used to predict biological functions of uncharacterize...
International audienceBACKGROUND: Microarrays have become extremely useful for analysing genetic phe...
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...
Systems biology and bioinformatics are now major fields for productive research. DNA microarrays and...
This paper presents an application of supervised machine learning approaches to the classification o...
Abstract Background Development of robust and efficient methods for analyzing and interpreting high ...