A Beta-mixture model for dimensionality reduction, sample classification and analysis

Research output: Contribution to journalJournal articleResearchpeer-review

  • Kirsti Laurila
  • Bodil Oster
  • Claus L. Andersen
  • Philippe Lamy
  • Torben Orntoft
  • Olli Yli-Harja
  • Wiuf, Carsten

Background: Patterns of genome-wide methylation vary between tissue types. For example, cancer tissue shows markedly different patterns from those of normal tissue. In this paper we propose a beta-mixture model to describe genome-wide methylation patterns based on probe data from methylation microarrays. The model takes dependencies between neighbour probe pairs into account and assumes three broad categories of methylation, low, medium and high. The model is described by 37 parameters, which reduces the dimensionality of a typical methylation microarray significantly. We used methylation microarray data from 42 colon cancer samples to assess the model.Results: Based on data from colon cancer samples we show that our model captures genome-wide characteristics of methylation patterns. We estimate the parameters of the model and show that they vary between different tissue types. Further, for each methylation probe the posterior probability of a methylation state (low, medium or high) is calculated and the probability that the state is correctly predicted is assessed. We demonstrate that the model can be applied to classify cancer tissue types accurately and that the model provides accessible and easily interpretable data summaries.Conclusions: We have developed a beta-mixture model for methylation microarray data. The model substantially reduces the dimensionality of the data. It can be used for further analysis, such as sample classification or to detect changes in methylation status between different samples and tissues.

Original languageEnglish
Article number215
JournalBMC Bioinformatics
Volume12
ISSN1471-2105
DOIs
Publication statusPublished - 27 May 2011
Externally publishedYes

ID: 203899494