Nucleic Acids Research Advance Access originally published online on June 21, 2007
Nucleic Acids Research 2007 35(Web Server issue):W619-W624; doi:10.1093/nar/gkm469
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Nucleic Acids Research, 2007, Vol. 35, No. suppl_2 W619-W624
© 2007 The Author(s)
This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/2.0/uk/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
Articles |
DEEPA tool for differential expression effector prediction
Department of Bioinformatics (Medical Faculty), Georg August University, Goldschmidtstraße 1, 37077 Göttingen, Germany
*To whom correspondence should be addressed. Tel: +49 551 3914915; Fax: +49 551 3914914; Email: martin.haubrock{at}bioinf.med.uni-goettingen.de
Received January 31, 2007. Revised April 13, 2007. Accepted May 29, 2007.
High-throughput methods for measuring transcript abundance, like SAGE or microarrays, are widely used for determining differences in gene expression between different tissue types, dignities (normal/malignant) or time points. Further analysis of such data frequently aims at the identification of gene interaction networks that form the causal basis for the observed properties of the systems under examination. To this end, it is usually not sufficient to rely on the measured gene expression levels alone; rather, additional biological knowledge has to be taken into account in order to generate useful hypotheses about the molecular mechanism leading to the realization of a certain phenotype.
We present a method that combines gene expression data with biological expert knowledge on molecular interaction networks, as described by the TRANSPATH1 database on signal transduction, to predict additionaland not necessarily differentially expressedgenes or gene products which might participate in processes specific for either of the examined tissues or conditions. In a first step, significance values for over-expression in tissue/condition A or B are assigned to all genes in the expression data set. Genes with a significance value exceeding a certain threshold are used as starting points for the reconstruction of a graph with signaling components as nodes and signaling events as edges. In a subsequent graph traversal process, again starting from the previously identified differentially expressed genes, all encountered nodes inherit all their starting nodes significance values. In a final step, the graph is visualized, the nodes being colored according to a weighted average of their inherited significance values. Each node's, or sub-network's, predominant color, ranging from green (significant for tissue/condition A) over yellow (not significant for either tissue/condition) to red (significant for tissue/condition B), thus gives an immediate visual clue on which moleculesdifferentially expressed or notmay play pivotal roles in the tissues or conditions under examination.
The described method has been implemented in Java as a client/server application and a web interface called DEEP (Differential Expression Effector Prediction). The client, which features an easy-to-use graphical interface, can freely be downloaded from the following URL: http://deep.bioinf.med.uni-goettingen.de