Title
Genetic network inference as a series of discrimination tasks.
Abstract
Genetic network inference methods based on sets of differential equations generally require a great deal of time, as the equations must be solved many times. To reduce the computational cost, researchers have proposed other methods for inferring genetic networks by solving sets of differential equations only a few times, or even without solving them at all. When we try to obtain reasonable network models using these methods, however, we must estimate the time derivatives of the gene expression levels with great precision. In this study, we propose a new method to overcome the drawbacks of inference methods based on sets of differential equations.Our method infers genetic networks by obtaining classifiers capable of predicting the signs of the derivatives of the gene expression levels. For this purpose, we defined a genetic network inference problem as a series of discrimination tasks, then solved the defined series of discrimination tasks with a linear programming machine. Our experimental results demonstrated that the proposed method is capable of correctly inferring genetic networks, and doing so more than 500 times faster than the other inference methods based on sets of differential equations. Next, we applied our method to actual expression data of the bacterial SOS DNA repair system. And finally, we demonstrated that our approach relates to the inference method based on the S-system model. Though our method provides no estimation of the kinetic parameters, it should be useful for researchers interested only in the network structure of a target system.Supplementary data are available at Bioinformatics online.
Year
DOI
Venue
2009
10.1093/bioinformatics/btp072
Bioinformatics
Keywords
Field
DocType
inference method,genetic network inference problem,discrimination task,network structure,genetic network inference method,differential equation,genetic network,gene expression level,new method
Data mining,Computer science,Linear programming,Artificial intelligence,Adaptive neuro fuzzy inference system,Genetic network,Biological network inference,Network structure,Differential equation,Inference,Bioinformatics,Network model,Machine learning
Journal
Volume
Issue
ISSN
25
7
1367-4811
Citations 
PageRank 
References 
23
1.03
18
Authors
3
Name
Order
Citations
PageRank
Shuhei Kimura120415.99
Satoshi Nakayama2231.03
Mariko Hatakeyama317512.17