Skip Navigation

This Article
Right arrow FREE Full Text (Print PDF) Freely available
Right arrow FREE Full Text (Screen PDF)
Right arrow Comments: Submit a response
Right arrow Alert me when this article is cited
Right arrow Alert me when Comments are posted
Right arrow Alert me if a correction is posted
Services
Right arrow Email this article to a friend
Right arrow Similar articles in this journal
Right arrow Similar articles in PubMed
Right arrow Alert me to new issues of the journal
Right arrow Add to My Personal Archive
Right arrow Download to citation manager
Right arrowRequest Permissions
Google Scholar
Right arrow Articles by Friedman, N.
Right arrow Search for Related Content
PubMed
Right arrow PubMed Citation
Right arrow Articles by Friedman, N.
Social Bookmarking
 Add to CiteULike   Add to Connotea   Add to Del.icio.us  
What's this?

Bioinformatics Vol. 19 Suppl. 2 2003
page ii57
© 2003 Oxford University Press

Probabilistic models for identifying regulation networks

Nir Friedman

School of Computer Science & Engineering, Hebrew University, Ross Bldg, Room 203, Givat Ram, Jerusalem 91904, Israel

Received on March 17, 2003 ; accepted on June 9, 2003

Microarray-based hybridization methods techniques allow to simultaneously measure the expression level for thousands of genes. Such measurements contain information about many different aspects of gene regulation and function, and indeed this type of experiments has become a central tool in biological research. A major computational challenge is finding ways to extract new biological understanding from this wealth of data. Our goal is to uncover the causal structure of the interactions between genes, with the aim of understanding the regulatory processes that bring about the observed expression patterns. I will argue that one way of addressing this question is a Bayesian framework, where we treat the measured expression level of each gene as a random variable and each regulatory interaction as a probabilistic dependency between such variables. In my talk, I will describe an ongoing project to use Bayesian networks and extensions of them to model such dependencies.

In the talk I will explain the basic foundations of the approach, the possible choices in defining the modeling language, the methods we use to learn models from data, and finally how we interpret the learned models. This latter stage includes validation against known biology, and constructing new hypotheses about the role of unknown genes.

I will present a progression of models that capture different aspect of gene regulation, and an assessment of their performance on several large scale yeast gene expression experiments.

This is joint work with Dana Pe’er, Iftach Nachman, Aviv Regev, Gal Elidan, Eran Segel, Micha Shapira, David Botstein, and Daphne Koller.

Contact: nir{at}cs.huji.ac.il. http://www.cs.huji.ac.il/~nir


Add to CiteULike CiteULike   Add to Connotea Connotea   Add to Del.icio.us Del.icio.us    What's this?




Disclaimer: Please note that abstracts for content published before 1996 were created through digital scanning and may therefore not exactly replicate the text of the original print issues. All efforts have been made to ensure accuracy, but the Publisher will not be held responsible for any remaining inaccuracies. If you require any further clarification, please contact our Customer Services Department.