AbstractIn this work we propose a new method for finding gene subsets of microarray data that effectively discriminates subtypes of disease. We developed a new criterion for measuring the relevance of individual genes by using mean and standard deviation of distances from each sample to the class centroid in order to treat the well-known problem of gene selection, large within-class variation. Also this approach has the advantage that it is applicable not only to binary classification but also to multiple classification problems. We demonstrated the performance of the method by applying it to the publicly available microarray datasets, leukemia (two classes) and small round blue cell tumors (four classes). The proposed method provides a ver...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
We address gene selection and machine learning methods for cancer classification using microarray ge...
Gene expression data from microarrays have been suc-cessfully applied to class prediction, where the...
AbstractIn this work we propose a new method for finding gene subsets of microarray data that effect...
AbstractIn the analysis of gene expression profiles, the selection of genetic markers and precise di...
Abstract Background Gene expression microarray is a powerful technology for genetic profiling diseas...
AbstractMicroarray analysis is widely accepted for human cancer diagnosis and classification. Howeve...
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Microarray data are expected to be useful for cancer classification. However, the process of gene se...
One of the main applications of microarray technology is to determine the gene expression profiles o...
AbstractDifferential diagnosis among a group of histologically similar cancers poses a challenging p...
Background: The measurement of expression levels of many genes through a single experiment is now po...
Abstract Background Microarray datasets are an important medical diagnostic tool as they represent t...
Due to the disproportionate difference between the number of genes and samples, microarray data anal...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
We address gene selection and machine learning methods for cancer classification using microarray ge...
Gene expression data from microarrays have been suc-cessfully applied to class prediction, where the...
AbstractIn this work we propose a new method for finding gene subsets of microarray data that effect...
AbstractIn the analysis of gene expression profiles, the selection of genetic markers and precise di...
Abstract Background Gene expression microarray is a powerful technology for genetic profiling diseas...
AbstractMicroarray analysis is widely accepted for human cancer diagnosis and classification. Howeve...
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Microarray data are expected to be useful for cancer classification. However, the process of gene se...
One of the main applications of microarray technology is to determine the gene expression profiles o...
AbstractDifferential diagnosis among a group of histologically similar cancers poses a challenging p...
Background: The measurement of expression levels of many genes through a single experiment is now po...
Abstract Background Microarray datasets are an important medical diagnostic tool as they represent t...
Due to the disproportionate difference between the number of genes and samples, microarray data anal...
Identifying genes linked to the appearance of certain types of cancers and their phenotypes is a wel...
We address gene selection and machine learning methods for cancer classification using microarray ge...
Gene expression data from microarrays have been suc-cessfully applied to class prediction, where the...