Design/methodology/approach - The method relies on alternation of identification of the active genes using a mixture model and clustering of the samples based on Ward hierarchical clustering. The initial-point of the procedure is obtained by means of a ?2 test. The method attempts to locally minimize the sum of the within cluster sample variances under a suitable Gaussian assumption on the distribution of data. Findings - This paper illustrates the proposed methodology and its success by means of results from both simulated and real cDNA microarray data. The comparison of the results with those from a related known method demonstrates the superiority of the proposed approach. Research limitations/implications - Only empirical evidence of algorithm convergence is provided. Theoretical proof of algorithm convergence is an open issue. Practical implications - The proposed methodology can be applied to perform cDNA microarray data analysis. Originality/value - This paper provides a contribution to the development of successful statistical methods for cDNA microarray data analysis.

Statistical analysis of cDNA microarray data for sample clustering and gene identification

Sebastiani G
2008

Abstract

Design/methodology/approach - The method relies on alternation of identification of the active genes using a mixture model and clustering of the samples based on Ward hierarchical clustering. The initial-point of the procedure is obtained by means of a ?2 test. The method attempts to locally minimize the sum of the within cluster sample variances under a suitable Gaussian assumption on the distribution of data. Findings - This paper illustrates the proposed methodology and its success by means of results from both simulated and real cDNA microarray data. The comparison of the results with those from a related known method demonstrates the superiority of the proposed approach. Research limitations/implications - Only empirical evidence of algorithm convergence is provided. Theoretical proof of algorithm convergence is an open issue. Practical implications - The proposed methodology can be applied to perform cDNA microarray data analysis. Originality/value - This paper provides a contribution to the development of successful statistical methods for cDNA microarray data analysis.
2008
Istituto Applicazioni del Calcolo ''Mauro Picone''
c-dna microarray
clustering
gene identification
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/32407
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