Clustering Gene Expression Data using a Posterior Split‐Merge‐Birth Procedure |
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Authors: | ERLANDSON F. SARAIVA LUIS A. MILAN |
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Affiliation: | 1. Faculdade de Ciências Exatas e Tecnologia, Universidade Federal da Grande Dourados;2. Departamento de Estatística, Universidade Federal de S?o Carlos |
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Abstract: | Abstract. DNA array technology is an important tool for genomic research due to its capa‐city of measuring simultaneously the expression levels of a great number of genes or fragments of genes in different experimental conditions. An important point in gene expression data analysis is to identify clusters of genes which present similar expression levels. We propose a new procedure for estimating the mixture model for clustering of gene expression data. The proposed method is a posterior split‐merge‐birth MCMC procedure which does not require the specification of the number of components, since it is estimated jointly with component parameters. The strategy for splitting is based on data and on posterior distribution from the previously allocated observations. This procedure defines a quick split proposal in contrary to other split procedures, which require substantial computational effort. The performance of the method is verified using real and simulated datasets. |
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Keywords: | gene expression Metropolis– Hastings mixture model split‐merge update |
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