Network inference via adaptive optimal design

<p>Abstract</p> <p>Background</p> <p>Current research in network reverse engineering for genetic or metabolic networks very often does not include a proper experimental and/or input design. In this paper we address this issue in more detail and suggest a method that inc...

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Main Authors: Stigter Johannes D, Molenaar Jaap
Format: Article
Language:English
Published: BMC 2012-09-01
Series:BMC Research Notes
Online Access:http://www.biomedcentral.com/1756-0500/5/518
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spelling doaj-a7009b25c28e43daac72c2e42b17c6d12020-11-25T01:54:27ZengBMCBMC Research Notes1756-05002012-09-015151810.1186/1756-0500-5-518Network inference via adaptive optimal designStigter Johannes DMolenaar Jaap<p>Abstract</p> <p>Background</p> <p>Current research in network reverse engineering for genetic or metabolic networks very often does not include a proper experimental and/or input design. In this paper we address this issue in more detail and suggest a method that includes an iterative design of experiments based, on the most recent data that become available. The presented approach allows a reliable reconstruction of the network and addresses an important issue, i.e., the analysis and the propagation of uncertainties as they exist in both the data and in our own knowledge. These two types of uncertainties have their immediate ramifications for the uncertainties in the parameter estimates and, hence, are taken into account from the very beginning of our experimental design.</p> <p>Findings</p> <p>The method is demonstrated for two small networks that include a genetic network for mRNA synthesis and degradation and an oscillatory network describing a molecular network underlying adenosine 3’-5’ cyclic monophosphate (cAMP) as observed in populations of Dyctyostelium cells. In both cases a substantial reduction in parameter uncertainty was observed. Extension to larger scale networks is possible but needs a more rigorous parameter estimation algorithm that includes sparsity as a constraint in the optimization procedure.</p> <p>Conclusion</p> <p>We conclude that a careful experiment design very often (but not always) pays off in terms of reliability in the inferred network topology. For large scale networks a better parameter estimation algorithm is required that includes sparsity as an additional constraint. These algorithms are available in the literature and can also be used in an adaptive optimal design setting as demonstrated in this paper.</p> http://www.biomedcentral.com/1756-0500/5/518
collection DOAJ
language English
format Article
sources DOAJ
author Stigter Johannes D
Molenaar Jaap
spellingShingle Stigter Johannes D
Molenaar Jaap
Network inference via adaptive optimal design
BMC Research Notes
author_facet Stigter Johannes D
Molenaar Jaap
author_sort Stigter Johannes D
title Network inference via adaptive optimal design
title_short Network inference via adaptive optimal design
title_full Network inference via adaptive optimal design
title_fullStr Network inference via adaptive optimal design
title_full_unstemmed Network inference via adaptive optimal design
title_sort network inference via adaptive optimal design
publisher BMC
series BMC Research Notes
issn 1756-0500
publishDate 2012-09-01
description <p>Abstract</p> <p>Background</p> <p>Current research in network reverse engineering for genetic or metabolic networks very often does not include a proper experimental and/or input design. In this paper we address this issue in more detail and suggest a method that includes an iterative design of experiments based, on the most recent data that become available. The presented approach allows a reliable reconstruction of the network and addresses an important issue, i.e., the analysis and the propagation of uncertainties as they exist in both the data and in our own knowledge. These two types of uncertainties have their immediate ramifications for the uncertainties in the parameter estimates and, hence, are taken into account from the very beginning of our experimental design.</p> <p>Findings</p> <p>The method is demonstrated for two small networks that include a genetic network for mRNA synthesis and degradation and an oscillatory network describing a molecular network underlying adenosine 3’-5’ cyclic monophosphate (cAMP) as observed in populations of Dyctyostelium cells. In both cases a substantial reduction in parameter uncertainty was observed. Extension to larger scale networks is possible but needs a more rigorous parameter estimation algorithm that includes sparsity as a constraint in the optimization procedure.</p> <p>Conclusion</p> <p>We conclude that a careful experiment design very often (but not always) pays off in terms of reliability in the inferred network topology. For large scale networks a better parameter estimation algorithm is required that includes sparsity as an additional constraint. These algorithms are available in the literature and can also be used in an adaptive optimal design setting as demonstrated in this paper.</p>
url http://www.biomedcentral.com/1756-0500/5/518
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