Abstract Selecting high discriminative genes from gene expression data has become an important research. Not only can this improve the performance of cancer classification, but it can also cut down the cost of medical diagnoses when a large number of noisy, redundant genes are filtered. In this paper, a hybrid Particle Swarm Optimization (PSO) and Genetic Algorithm (GA) method is used for gene selection, and Support Vector Machine (SVM) is adopted as the clas-sifier. The proposed approach is tested on three benchmark gene expression datasets: Leukemia, Colon and breast cancer data. Experimental results show that the proposed method can reduce the dimensionality of the dataset, and confirm the most informative gene subset and improve classif...
Abstract Background Gene expression data play an important role in bioinformatics applications. Alth...
The improvement of high-through-put gene profiling based microarrays technology has provided monitor...
This paper focuses on the feature gene selection for cancer classification, which employs an optimiz...
In this work we compare the use of a Particle Swarm Optimization (PSO) and a Genetic Algorithm (GA)...
International audienceIn this work we compare the use of a Particle Swarm Optimization (PSO) and a G...
To improve cancer diagnosis and drug development, the classification of tumor types based on genomic...
[[abstract]]Background In the application of microarray data, how to select a small number of inform...
The application of microarray data for cancer classification has recently gained in popularity. The ...
Background: Gene expression data are characteristically high dimensional with a small sample size in...
Innovation has spread its foundations profound into the lives of a cutting-edge man, and the essenti...
Background: Gene expression data could likely be a momentous help in the progress of proficient canc...
It remains a great challenge to achieve sufficient cancer classification accuracy with the entire se...
The application of gene expression data to the diagnosis and classification of cancer has become a h...
Gene expression data (DNA microarray) enable researchers to simultaneously measure the levels of exp...
Feature Selection is significant in order to perform constructive classification in the area of canc...
Abstract Background Gene expression data play an important role in bioinformatics applications. Alth...
The improvement of high-through-put gene profiling based microarrays technology has provided monitor...
This paper focuses on the feature gene selection for cancer classification, which employs an optimiz...
In this work we compare the use of a Particle Swarm Optimization (PSO) and a Genetic Algorithm (GA)...
International audienceIn this work we compare the use of a Particle Swarm Optimization (PSO) and a G...
To improve cancer diagnosis and drug development, the classification of tumor types based on genomic...
[[abstract]]Background In the application of microarray data, how to select a small number of inform...
The application of microarray data for cancer classification has recently gained in popularity. The ...
Background: Gene expression data are characteristically high dimensional with a small sample size in...
Innovation has spread its foundations profound into the lives of a cutting-edge man, and the essenti...
Background: Gene expression data could likely be a momentous help in the progress of proficient canc...
It remains a great challenge to achieve sufficient cancer classification accuracy with the entire se...
The application of gene expression data to the diagnosis and classification of cancer has become a h...
Gene expression data (DNA microarray) enable researchers to simultaneously measure the levels of exp...
Feature Selection is significant in order to perform constructive classification in the area of canc...
Abstract Background Gene expression data play an important role in bioinformatics applications. Alth...
The improvement of high-through-put gene profiling based microarrays technology has provided monitor...
This paper focuses on the feature gene selection for cancer classification, which employs an optimiz...