Back to Search Start Over

A hierarchical Bayesian model for flexible module discovery in three-way time-series data

Authors :
Daniel Yekutieli
Talma Hendler
Adi Maron-Katz
David Amar
Ron Shamir
Source :
Bioinformatics
Publication Year :
2015
Publisher :
Oxford University Press, 2015.

Abstract

Motivation: Detecting modules of co-ordinated activity is fundamental in the analysis of large biological studies. For two-dimensional data (e.g. genes × patients), this is often done via clustering or biclustering. More recently, studies monitoring patients over time have added another dimension. Analysis is much more challenging in this case, especially when time measurements are not synchronized. New methods that can analyze three-way data are thus needed. Results: We present a new algorithm for finding coherent and flexible modules in three-way data. Our method can identify both core modules that appear in multiple patients and patient-specific augmentations of these core modules that contain additional genes. Our algorithm is based on a hierarchical Bayesian data model and Gibbs sampling. The algorithm outperforms extant methods on simulated and on real data. The method successfully dissected key components of septic shock response from time series measurements of gene expression. Detected patient-specific module augmentations were informative for disease outcome. In analyzing brain functional magnetic resonance imaging time series of subjects at rest, it detected the pertinent brain regions involved. Availability and implementation: R code and data are available at http://acgt.cs.tau.ac.il/twigs/. Contact: rshamir@tau.ac.il Supplementary information : Supplementary data are available at Bioinformatics online.

Details

Language :
English
ISSN :
13674811 and 13674803
Volume :
31
Issue :
12
Database :
OpenAIRE
Journal :
Bioinformatics
Accession number :
edsair.doi.dedup.....0a6e68400041c146830e9415af0b9775