» Articles » PMID: 18194576

Function Approximation Approach to the Inference of Reduced NGnet Models of Genetic Networks

Overview
Publisher Biomed Central
Specialty Biology
Date 2008 Jan 16
PMID 18194576
Citations 9
Authors
Affiliations
Soon will be listed here.
Abstract

Background: The inference of a genetic network is a problem in which mutual interactions among genes are deduced using time-series of gene expression patterns. While a number of models have been proposed to describe genetic regulatory networks, this study focuses on a set of differential equations since it has the ability to model dynamic behavior of gene expression. When we use a set of differential equations to describe genetic networks, the inference problem can be defined as a function approximation problem. On the basis of this problem definition, we propose in this study a new method to infer reduced NGnet models of genetic networks.

Results: Through numerical experiments on artificial genetic network inference problems, we demonstrated that our method has the ability to infer genetic networks correctly and it was faster than the other inference methods. We then applied the proposed method to actual expression data of the bacterial SOS DNA repair system, and succeeded in finding several reasonable regulations. When our method inferred the genetic network from the actual data, it required about 4.7 min on a single-CPU personal computer.

Conclusion: The proposed method has an ability to obtain reasonable networks with a short computational time. As a high performance computer is not always available at every laboratory, the short computational time of our method is a preferable feature. There does not seem to be a perfect model for the inference of genetic networks yet. Therefore, in order to extract reliable information from the observed gene expression data, we should infer genetic networks using multiple inference methods based on different models. Our approach could be used as one of the promising inference methods.

Citing Articles

Immuno-hybrid algorithm: a novel hybrid approach for GRN reconstruction.

Jereesh A, Govindan V 3 Biotech. 2017; 6(2):222.

PMID: 28330294 PMC: 5065543. DOI: 10.1007/s13205-016-0536-1.


Reverse engineering gene regulatory networks: coupling an optimization algorithm with a parameter identification technique.

Hsiao Y, Lee W BMC Bioinformatics. 2014; 15 Suppl 15:S8.

PMID: 25474560 PMC: 4271569. DOI: 10.1186/1471-2105-15-S15-S8.


Inference of Vohradský's models of genetic networks by solving two-dimensional function optimization problems.

Kimura S, Sato M, Okada-Hatakeyama M PLoS One. 2014; 8(12):e83308.

PMID: 24386175 PMC: 3875442. DOI: 10.1371/journal.pone.0083308.


Incorporating time-delays in S-System model for reverse engineering genetic networks.

Chowdhury A, Chetty M, Vinh N BMC Bioinformatics. 2013; 14:196.

PMID: 23777625 PMC: 3839642. DOI: 10.1186/1471-2105-14-196.


Inferring robust gene networks from expression data by a sensitivity-based incremental evolution method.

Hsiao Y, Lee W BMC Bioinformatics. 2012; 13 Suppl 7:S8.

PMID: 22595005 PMC: 3348052. DOI: 10.1186/1471-2105-13-S7-S8.


References
1.
Imoto S, Goto T, Miyano S . Estimation of genetic networks and functional structures between genes by using Bayesian networks and nonparametric regression. Pac Symp Biocomput. 2002; :175-86. View

2.
Veflingstad S, Almeida J, Voit E . Priming nonlinear searches for pathway identification. Theor Biol Med Model. 2004; 1:8. PMC: 522751. DOI: 10.1186/1742-4682-1-8. View

3.
Voit E, Radivoyevitch T . Biochemical systems analysis of genome-wide expression data. Bioinformatics. 2001; 16(11):1023-37. DOI: 10.1093/bioinformatics/16.11.1023. View

4.
Voit E, Almeida J . Decoupling dynamical systems for pathway identification from metabolic profiles. Bioinformatics. 2004; 20(11):1670-81. DOI: 10.1093/bioinformatics/bth140. View

5.
Akutsu T, Miyano S, Kuhara S . Inferring qualitative relations in genetic networks and metabolic pathways. Bioinformatics. 2000; 16(8):727-34. DOI: 10.1093/bioinformatics/16.8.727. View