K-means+ method for improving gene selection for classification of microarray data

Microarray gene expression techniques have recently made it possible to offer phenotype classification of many diseases. One problem in this analysis is that each sample is represented by quite a large number of genes, and many of them are insignificant or redundant to clarify the disease problem. The previous work has shown that selecting informative genes from microarray data can improve the accuracy of classification. Clustering methods have been successfully applied to group similar genes and select informative genes from them to avoid redundancy and extract biological information from them. A problem with these approaches is that the number of clusters must be given and it is time-consuming to fry all possible numbers for clusters. In this paper, a heuristic, called K-means+, is used to address the number of clusters dependency and degeneracy problems. The result of our experiments shows that K-means+ method can automatically partition genes into a reasonable number of clusters and then the informative genes are selected from clusters.

[1]  Z. Hornstein,et al.  Elementary Statistical Concepts. , 1977 .

[2]  Ali A. Ghorbani,et al.  Y-means: a clustering method for intrusion detection , 2003, CCECE 2003 - Canadian Conference on Electrical and Computer Engineering. Toward a Caring and Humane Technology (Cat. No.03CH37436).

[3]  Rolene B. Cain Elementary statistical concepts , 1972 .

[4]  Blaise Hanczar,et al.  Improving classification of microarray data using prototype-based feature selection , 2003, SKDD.

[5]  R. E. Walpole,et al.  Elementary statistical concepts , 1976 .

[6]  Walter L. Ruzzo,et al.  Improved Gene Selection for Classification of Microarrays , 2002, Pacific Symposium on Biocomputing.

[7]  E. Lander,et al.  Classification of human lung carcinomas by mRNA expression profiling reveals distinct adenocarcinoma subclasses , 2001, Proceedings of the National Academy of Sciences of the United States of America.