In the area of bioinformatics, the identification of gene subsets responsible for classifying available disease samples to two or more of its variants is an important task. Such problems have been solved in the past by means of unsupervised learning methods (hierarchical clustering, self-organizing maps, k-mean clustering, etc.) and supervised learning methods (weighted voting approach, k-nearest neighbor method, support vector machine method, etc.). Such problems can also be posed as optimization problems of minimizing gene subset size to achieve reliable and accurate classification. The main difficulties in solving the resulting optimization problem are the availability of only a few samples compared to the number of genes in the samples ...
AbstractIn this work we propose a new method for finding gene subsets of microarray data that effect...
International audienceThe study of the sensitivity and the specificity of a classification test cons...
The study of the sensitivity and the specificity of a classification test constitute a powerful kin...
In the area of bioinformatics, the identification of gene subsets responsible for classifying availa...
Microarray data are expected to be useful for cancer classification. However, the process of gene se...
Motivation: The increasing use of DNA microarray-based tumor gene expression profiles for cancer dia...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
AbstractSimultaneous multiclass classification of tumor types is essential for future clinical imple...
Background: Even though the classification of cancer tissue samples based on gene expression data ha...
Microarray data measured by microarray are useful for cancer classification. However, it faces with ...
Recent advances in DNA microarray offer the ability to monitor and measure the expression levels of ...
AbstractDifferential diagnosis among a group of histologically similar cancers poses a challenging p...
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Abstract Background Gene expression microarray is a powerful technology for genetic profiling diseas...
AbstractIn this work we propose a new method for finding gene subsets of microarray data that effect...
International audienceThe study of the sensitivity and the specificity of a classification test cons...
The study of the sensitivity and the specificity of a classification test constitute a powerful kin...
In the area of bioinformatics, the identification of gene subsets responsible for classifying availa...
Microarray data are expected to be useful for cancer classification. However, the process of gene se...
Motivation: The increasing use of DNA microarray-based tumor gene expression profiles for cancer dia...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
AbstractSimultaneous multiclass classification of tumor types is essential for future clinical imple...
Background: Even though the classification of cancer tissue samples based on gene expression data ha...
Microarray data measured by microarray are useful for cancer classification. However, it faces with ...
Recent advances in DNA microarray offer the ability to monitor and measure the expression levels of ...
AbstractDifferential diagnosis among a group of histologically similar cancers poses a challenging p...
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Microarray technologies allow the measurement of thousands of gene expression levels simultaneously....
Abstract Background Gene expression microarray is a powerful technology for genetic profiling diseas...
AbstractIn this work we propose a new method for finding gene subsets of microarray data that effect...
International audienceThe study of the sensitivity and the specificity of a classification test cons...
The study of the sensitivity and the specificity of a classification test constitute a powerful kin...