Back to Search Start Over

A computational framework for gene regulatory network inference that combines multiple methods and datasets

Authors :
Philipp Antczak
Anna Stincone
Sarah Durant
Francesco Falciani
Andreas Bikfalvi
Rita Gupta
Roy Bicknell
School of Biosciences
University of Birmingham [Birmingham]
Institute of Biomedical Research
Mecanismes Moleculaires de l'Angiogenese
Université Sciences et Technologies - Bordeaux 1-Institut National de la Santé et de la Recherche Médicale (INSERM)
The work described in this paper was funded by the CRUK grant C8504/A9488 and partially funded by the BBSRC grant BBC5151041. AS is a recipient of a Darwin Trust PhD fellowship and PA is a recipient of a BBSRC PhD studentship.
BMC, Ed.
Université Sciences et Technologies - Bordeaux 1 (UB)-Institut National de la Santé et de la Recherche Médicale (INSERM)
Source :
BMC Systems Biology, BMC Systems Biology, Vol 5, Iss 1, p 52 (2011), BMC Systems Biology, BioMed Central, 2011, 5 (1), pp.52. ⟨10.1186/1752-0509-5-52⟩, BMC Systems Biology, 2011, 5 (1), pp.52. ⟨10.1186/1752-0509-5-52⟩
Publication Year :
2011

Abstract

Background Reverse engineering in systems biology entails inference of gene regulatory networks from observational data. This data typically include gene expression measurements of wild type and mutant cells in response to a given stimulus. It has been shown that when more than one type of experiment is used in the network inference process the accuracy is higher. Therefore the development of generally applicable and effective methodologies that embed multiple sources of information in a single computational framework is a worthwhile objective. Results This paper presents a new method for network inference, which uses multi-objective optimisation (MOO) to integrate multiple inference methods and experiments. We illustrate the potential of the methodology by combining ODE and correlation-based network inference procedures as well as time course and gene inactivation experiments. Here we show that our methodology is effective for a wide spectrum of data sets and method integration strategies. Conclusions The approach we present in this paper is flexible and can be used in any scenario that benefits from integration of multiple sources of information and modelling procedures in the inference process. Moreover, the application of this method to two case studies representative of bacteria and vertebrate systems has shown potential in identifying key regulators of important biological processes.

Details

ISSN :
17520509
Volume :
5
Database :
OpenAIRE
Journal :
BMC systems biology
Accession number :
edsair.doi.dedup.....6b6367e0620688472c22ead4f11ae844