Title
Overcoming the lack of kinetic information in biochemical reactions networks.
Abstract
A main aspect in computational modelling of biological systems is the determination of model structure and model parameters. Due to economical and technical reasons, only part of these details are well characterized, while the rest are unknown. To deal with this difficulty, many reverse engineering and parameter estimation methods have been proposed in the literature, however these methods often need an amount of experimental data not always available. In this paper we propose an alternative approach, which overcomes model indetermination solving an Optimization Problem (OP) with an objective function that, similarly to Flux Balance Analysis, is derived from an empirical biological knowledge and does not require large amounts of data. The system behaviour is described by a set of Ordinary Differential Equations (ODE). Model indetermination is resolved selecting time-varying coefficients that maximize/ minimize the objective function at each ODE integration step. Moreover, to facilitate the modelling phase we provide a graphical formalism, based on Petri Nets, which can be used to derive the corresponding ODEs and OP. Finally, the approach is illustrated on a case study focused on cancer metabolism.
Year
DOI
Venue
2017
10.1145/3092819.3092830
SIGMETRICS Performance Evaluation Review
Field
DocType
Volume
Mathematical optimization,Petri net,Ordinary differential equation,Computer science,Reverse engineering,Artificial intelligence,Estimation theory,Formalism (philosophy),Optimization problem,Ode,Flux balance analysis,Distributed computing
Journal
44
Issue
ISSN
Citations 
4
0163-5999
0
PageRank 
References 
Authors
0.34
3
6
Name
Order
Citations
PageRank
Niccoló Totis100.34
Laura Follia221.83
Chiara Riganti310.77
Francesco Novelli421.16
Francesca Cordero56313.42
Marco Beccuti619526.04