A gene network inference method from continuous-value gene expression data of wild-type and mutants.
Author(s) -
K M Kyoda,
M Morohashi,
S Onami,
H Kitano
Publication year - 2000
Publication title -
genome informatics. workshop on genome informatics
Language(s) - English
DOI - 10.11234/gi1990.11.196
In this paper we introduce a new inference method of a gene regulatory network from steady-state gene expression data. Our method determines a regulatory structure consistent with an observed set of steady-state expression profiles, each generated from wild-type and single deletion mutant of the target network. Our method derives the regulatory relationships in the network using a graph theoretic approach. The advantage of our method is to be able to deal with continuous values of steady-state data, while most of the methods proposed in past use a Boolean network model with binary data. Performance of our method is evaluated on simulated networks with varying the size of networks, indegree of each gene, and the data characteristics (continuous-value/binary), and is compared with that of predictor method proposed by Ideker et al. As a result, we show the superiority of using continuous values to binary values, and the performance of our method is much better than that of the predictor method.
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