Information and Media Technologies
Online ISSN : 1881-0896
ISSN-L : 1881-0896
Computing
Monte Carlo-based Mouse Nuclear Receptor Superfamily Gene Regulatory Network Prediction: Stochastic Dynamical System on Graph with Zipf Prior
Yusuke KitamuraTomomi KimiwadaJun MaruyamaTakashi KaburagiTakashi MatsumotoKeiji Wada
Author information
JOURNAL FREE ACCESS

2010 Volume 5 Issue 2 Pages 503-518

Details
Abstract
A Monte Carlo based algorithm is proposed to predict gene regulatory network structure of mouse nuclear receptor superfamily, about which little is known although those genes are believed to be related with several difficult diseases. The gene expression data is regarded as sample vector trajectories from a stochastic dynamical system on a graph. The problem is formulated within a Bayesian framework where the graph prior distribution is assumed to follow a Zipf distribution. Appropriateness of a graph is evaluated by the graph posterior mean. The algorithm is implemented with the Exchange Monte Carlo method. After validation against synthesized data, an attempt is made to use the algorithm for predicting network structure of the target, the mouse nuclear receptor superfamily. Several remarks are made on the feasibility of the predicted network from a biological viewpoint.
Content from these authors
© 2010 by Information Processing Society of Japan
Previous article Next article
feedback
Top