Identification of neutral biochemical network models from time series data

被引:33
|
作者
Vilela, Marco [1 ,2 ]
Vinga, Susana [2 ,8 ]
Grivet Mattoso Maia, Marco A. [3 ]
Voit, Eberhard O. [4 ,5 ,6 ]
Almeida, Jonas S. [1 ,7 ]
机构
[1] Univ Nova Lisboa, Inst Tecnol Quim & Biol, P-2780156 Oeiras, Portugal
[2] Inst Engn Sistemas & Computadores Invest & Desenv, P-1000029 Lisbon, Portugal
[3] Pontificia Univ Catolica Rio de Janeiro, Ctr Tecn Cient, Ctr Estudo Telecomun, BR-22453900 Rio De Janeiro, Brazil
[4] Georgia Inst Technol, Integrat BioSyst Inst, Atlanta, GA 30332 USA
[5] Georgia Inst Technol, Dept Biomed Engn, Atlanta, GA 30332 USA
[6] Emory Univ, Atlanta, GA 30332 USA
[7] Univ Texas MD Anderson Canc Ctr, Dept Bioinformat & Computat Biol, Houston, TX 77030 USA
[8] Univ Nova Lisboa, Fac Ciencias Med, P-1169056 Lisbon, Portugal
来源
BMC SYSTEMS BIOLOGY | 2009年 / 3卷
关键词
S-SYSTEM MODELS; POWER-LAW APPROXIMATION; PARAMETER-ESTIMATION; BIOLOGICAL NETWORKS; STATISTICAL-METHODS; IDENTIFIABILITY; OPTIMIZATION; DYNAMICS; ROBUSTNESS; ALGORITHM;
D O I
10.1186/1752-0509-3-47
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Background: The major difficulty in modeling biological systems from multivariate time series is the identification of parameter sets that endow a model with dynamical behaviors sufficiently similar to the experimental data. Directly related to this parameter estimation issue is the task of identifying the structure and regulation of ill-characterized systems. Both tasks are simplified if the mathematical model is canonical, i.e., if it is constructed according to strict guidelines. Results: In this report, we propose a method for the identification of admissible parameter sets of canonical S-systems from biological time series. The method is based on a Monte Carlo process that is combined with an improved version of our previous parameter optimization algorithm. The method maps the parameter space into the network space, which characterizes the connectivity among components, by creating an ensemble of decoupled S-system models that imitate the dynamical behavior of the time series with sufficient accuracy. The concept of sloppiness is revisited in the context of these S-system models with an exploration not only of different parameter sets that produce similar dynamical behaviors but also different network topologies that yield dynamical similarity. Conclusion: The proposed parameter estimation methodology was applied to actual time series data from the glycolytic pathway of the bacterium Lactococcus lactis and led to ensembles of models with different network topologies. In parallel, the parameter optimization algorithm was applied to the same dynamical data upon imposing a pre-specified network topology derived from prior biological knowledge, and the results from both strategies were compared. The results suggest that the proposed method may serve as a powerful exploration tool for testing hypotheses and the design of new experiments.
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页数:13
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