DocumentCode
1664123
Title
Gene clustering using self-organizing maps and particle swarm optimization
Author
Xiao, Xiang ; Dow, Ernst R. ; Eberhart, Russell ; Miled, Z.B. ; Oppelt, Robert J.
Author_Institution
Indiana Univ., Indianapolis, IN, USA
fYear
2003
Abstract
Gene clustering, the process of grouping related genes in the same cluster, is at the foundation of different genomic studies that aim at analyzing the function of genes. Microarray technologies have made it possible to measure gene expression levels for thousand of genes simultaneously. For knowledge to be extracted from the datasets generated by these technologies, the datasets have to be presented to a scientist in a meaningful way. Gene clustering methods serve this purpose. In this paper, a hybrid clustering approach that is based on self-organizing maps and particle swarm optimization is proposed. In the proposed algorithm, the rate of convergence is improved by adding a conscience factor to the self-organizing maps algorithm. The robustness of the result is measured by using a resampling technique. The algorithm is implemented on a cluster of workstations.
Keywords
DNA; arrays; biology computing; convergence; evolutionary computation; parallel algorithms; pattern clustering; sampling methods; self-organising feature maps; unsupervised learning; cluster of workstations; conscience factor; convergence rate; gene clustering; gene function; genomic studies; hybrid clustering; microarray technologies; parallel algorithm; particle swarm optimization; resampling technique; self-organizing maps; Bioinformatics; Clustering algorithms; Clustering methods; Colon; Gene expression; Genomics; Liver neoplasms; Particle swarm optimization; Robustness; Self organizing feature maps;
fLanguage
English
Publisher
ieee
Conference_Titel
Parallel and Distributed Processing Symposium, 2003. Proceedings. International
ISSN
1530-2075
Print_ISBN
0-7695-1926-1
Type
conf
DOI
10.1109/IPDPS.2003.1213290
Filename
1213290
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