会议专题

THE APPLICATION OF ANT COLONY OPTIMIZATION FOR GENE SELECTION IN MICROARRAY-BASED CANCER CLASSIFICATION

DNA mieroarrays technology enables us to obtain information about expression levels of thousands of genes at the same time. This technology promises to monitor the whole genome on a single chip so that researchers can have a better picture of the interactions among thousands of genes at the same time. It becomes a challenge to extract information from the large amount of data through data mining. One important application of gene expression microarray data is cancer classification. However, gene expression data collected for cancer classification usually has the property of the number of genes far exceeding the number of samples. Work in such a high dimensional space is extremely difficult. Previous researches have used two-stage classification method to deal with the gene expression data. Such approaches select genes to reduce problem dimension in the first stage and classify tumors in the second stage. In the study, the ant colony optimization (ACO) algorithm is introduced to select genes relevant to cancers first, then the multi-layer perccptrons (MI.P) neural network and support vector machine (SVM) classifiers are used for cancer classification. Experimental results show that selecting genes by using ACO algorithm can improve the accuracy of BP and SVM classifiers. The optimal number of genes selected for cancer classification should be set according to both the microarray dataset and gene selection methods.

Microarray gene ezpression ACO data mining

YU-MIN CHIANG HUEI-MIN CHIANG SHANG-YI LIN

Department of Industrial Engineering and Management, I-Shou University, Taiwan Department of Management and Information / Department of Industrial Engineering & Management, Nan Je

国际会议

2008 International Conference on Machine Learning and Cybernetics(2008机器学习与控制论国际会议)

昆明

英文

4001-4006

2008-07-12(万方平台首次上网日期,不代表论文的发表时间)