Gene expression data collected from DNA microarray are characterized by a large amount of variables (genes), but with only a small amount of observations (experiments). In this paper, manifold learning method is proposed to map the gene expression data to a low dimensional space, and then explore the intrinsic structure of the features so as to classify the microarray data more accurately. The proposed algorithm can project the gene expression data into a subspace with high intra-class compactness and inter-class separability. Experimental results on six DNA microarray datasets demonstrated that our method is efficient for discriminant feature extraction and gene expression data classification. This work is a meaningful attempt to analyze m...
Identifying subspace gene clusters from the gene expression data is useful for discovering novel fun...
Abstract- Classification analysis of microarray gene expression data has been performed widely to fi...
In this project, we target to find effective and unsupervised feature reduction tools for gene expre...
This thesis deals with manifold learning techniques and their application in gene expression data an...
Microarray databases are a large source of genetic data, which, upon proper analysis, could enhance ...
<div><p>Microarray databases are a large source of genetic data, which, upon proper analysis, could ...
Microarray data provides quantitative information about the transcription profile of cells. To analy...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
This paper compares the performance of linear and non-linear projection techniques in functionally c...
Microarray gene expression data sets usually contain a large number of genes, but a small number of...
Abstract. It is important to develop computational methods that can effectively resolve two intrinsi...
A general framework for microarray data classification is proposed in this paper. It pro-duces preci...
Identifying subspace gene clusters from the gene expression data is useful for discovering novel fun...
International audienceBACKGROUND: Microarrays have become extremely useful for analysing genetic phe...
Some real problems, such as image recognition or the analysis of gene expression data, involve the o...
Identifying subspace gene clusters from the gene expression data is useful for discovering novel fun...
Abstract- Classification analysis of microarray gene expression data has been performed widely to fi...
In this project, we target to find effective and unsupervised feature reduction tools for gene expre...
This thesis deals with manifold learning techniques and their application in gene expression data an...
Microarray databases are a large source of genetic data, which, upon proper analysis, could enhance ...
<div><p>Microarray databases are a large source of genetic data, which, upon proper analysis, could ...
Microarray data provides quantitative information about the transcription profile of cells. To analy...
The analysis of microarray gene expression data to obtain useful information is a challenging proble...
This paper compares the performance of linear and non-linear projection techniques in functionally c...
Microarray gene expression data sets usually contain a large number of genes, but a small number of...
Abstract. It is important to develop computational methods that can effectively resolve two intrinsi...
A general framework for microarray data classification is proposed in this paper. It pro-duces preci...
Identifying subspace gene clusters from the gene expression data is useful for discovering novel fun...
International audienceBACKGROUND: Microarrays have become extremely useful for analysing genetic phe...
Some real problems, such as image recognition or the analysis of gene expression data, involve the o...
Identifying subspace gene clusters from the gene expression data is useful for discovering novel fun...
Abstract- Classification analysis of microarray gene expression data has been performed widely to fi...
In this project, we target to find effective and unsupervised feature reduction tools for gene expre...