AbstractAmong the large amount of genes presented in microarray gene expression data, only a small fraction of them is effective for performing a certain diagnostic test. In this regard, a new feature selection algorithm is presented based on rough set theory. It selects a set of genes from microarray data by maximizing the relevance and significance of the selected genes. A theoretical analysis is presented to justify the use of both relevance and significance criteria for selecting a reduced gene set with high predictive accuracy. The importance of rough set theory for computing both relevance and significance of the genes is also established. The performance of the proposed algorithm, along with a comparison with other related methods, i...
Selecting genes from microarray gene expression datasets has become an important research, because s...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Selection of reliable cancer biomarkers is crucial for gene expression profile-based precise diagnos...
Gene selection is of vital importance in molecular classification of cancer using high-dimensional g...
Abstract-Gene selection is a main procedure of discriminate analysis of microarray data which is the...
DNA microarrays have contributed to the exponential growth of genomic and experimental data in the l...
In this paper, a hybrid approach incorporating genetic algorithm and rough set theory into Feature S...
Microarray data analysis is concerned with the extraction of valuable informa-tion from large data s...
Microarray technology has recently attracted a lot of attention. This technology can measure the beh...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
This paper proposes a new gene selection (or feature selection) method for DNA microarray data analy...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
AbstractEstablishing a classification model for cancer recognition based on DNA microarrays is usefu...
Background: Classification of human tumors into distinguishable entities is traditionally based on c...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
Selecting genes from microarray gene expression datasets has become an important research, because s...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Selection of reliable cancer biomarkers is crucial for gene expression profile-based precise diagnos...
Gene selection is of vital importance in molecular classification of cancer using high-dimensional g...
Abstract-Gene selection is a main procedure of discriminate analysis of microarray data which is the...
DNA microarrays have contributed to the exponential growth of genomic and experimental data in the l...
In this paper, a hybrid approach incorporating genetic algorithm and rough set theory into Feature S...
Microarray data analysis is concerned with the extraction of valuable informa-tion from large data s...
Microarray technology has recently attracted a lot of attention. This technology can measure the beh...
Thousands of genes can be identified by DNA microarray technology at the same time which can have a ...
This paper proposes a new gene selection (or feature selection) method for DNA microarray data analy...
Abstract Background Microarray data have a high dimension of variables and a small sample size. In m...
AbstractEstablishing a classification model for cancer recognition based on DNA microarrays is usefu...
Background: Classification of human tumors into distinguishable entities is traditionally based on c...
Machine Learning methods have of late made signicant efforts to solving multidisciplinary problems i...
Selecting genes from microarray gene expression datasets has become an important research, because s...
Microarray analysis has made it possible to predict clinical outcomes or diagnosing patients with th...
Selection of reliable cancer biomarkers is crucial for gene expression profile-based precise diagnos...