Bayesian unsupervised learning with multiple data types Journal Article


Authors: Agius, P.; Ying, Y.; Campbell, C.
Article Title: Bayesian unsupervised learning with multiple data types
Abstract: We propose Bayesian generative models for unsupervised learning with two types of data and an assumed dependency of one type of data on the other. We consider two algorithmic approaches, based on a correspondence model, where latent variables are shared across datasets. These models indicate the appropriate number of clusters in addition to indicating relevant features in both types of data. We evaluate the model on artificially created data. We then apply the method to a breast cancer dataset consisting of gene expression and microRNA array data derived from the same patients. We assume partial dependence of gene expression on microRNA expression in this study. The method ranks genes within subtypes which have statistically significant abnormal expression and ranks associated abnormally expressing microRNA. We report a genetic signature for the basal-like subtype of breast cancer found across a number of previous gene expression array studies. Using the two algorithmic approaches we find that this signature also arises from clustering on the microRNA expression data and appears derivative from this data. Copyright © 2009 The Berkeley Electronic Press. All rights reserved.
Keywords: review; neoplasm; neoplasms; metabolism; bayesian learning; breast cancer; cancer subtypes; clusters; correspondence model; genes; microrna; multiple datasets; unsupervised learning; hepatocyte nuclear factor 3alpha; transcription factor gata 3; x box binding protein 1; bayes theorem; cluster analysis; estrogen responsive element; gene amplification; gene expression; variance; biological model; biology; classification; gene expression profiling; statistics; computational biology; models, biological
Journal Title: Statistical Applications in Genetics and Molecular Biology
Volume: 8
Issue: 1
ISSN: 1544-6115
Publisher: The Berkeley Electronic Press  
Date Published: 2009-01-01
Start Page: epub
Language: English
DOI: 10.2202/1544-6115.1441
PUBMED: 19572826
PROVIDER: scopus
DOI/URL:
Notes: --- - "Export Date: 30 November 2010" - "Art. No.: 27" - "Source: Scopus"
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  1. Phaedra Agius
    11 Agius