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Recent advances in gene expression data clustering: a case study with comparative results
George B. Bezerra1, Geraldo M.A. Cançado2, Marcelo Menossi2, Leandro N. de Castro1 and Fernando J. Von Zuben1
1Laboratório de Bioinformática e Computação Bio-Inspirada (LBiC/DCA/FEEC),
Caixa Postal 6101, UNICAMP, 13083-852 Campinas, SP, Brasil
2Laboratório de Genoma Funcional, Centro de Biologia Molecular e Engenharia Genética,
Caixa Postal 6010, UNICAMP, 13083-970 Campinas, SP, Brasil
Corresponding author: G.B. Bezerra
E-mail: bezerra@dca.fee.unicamp.br
Genet. Mol. Res. 4 (3): 514-524 (2005)
Received May 20, 2005
Accepted July 8, 2005
Published September 30, 2005

ABSTRACT. Several advanced techniques have been proposed for data clustering and many of them have been applied to gene expression data, with partial success. The high dimensionality and the multitude of admissible perspectives for data analysis of gene expression require additional computational resources, such as hierarchical structures and dynamic allocation of resources. We present an immune-inspired hierarchical clustering device, called hierarchical artificial immune network (HaiNet), especially devoted to the analysis of gene expression data. This technique was applied to a newly generated data set, involving maize plants exposed to different aluminum concentrations. The performance of the algorithm was compared with that of a self-organizing map, which is commonly adopted to deal with gene expression data sets. More consistent and informative results were obtained with HaiNet.

Key words: Hierarchical clustering, Gene expression data, Artificial immune systems

 

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