TY - JOUR
T1 - Reverse Engineering of Biochemical Reaction Networks Using Co-evolution with Eng-Genes
AU - Gormley, Padhraig
AU - Li, Kang
AU - Wolkenhauer, Olaf
AU - Irwin, George W.
AU - Du, Dajun
PY - 2013/3
Y1 - 2013/3
N2 - A major challenge when attempting to model biochemical reaction networks within the cell is that the dimensionality can become huge, where a large number of molecular species can be involved even in relatively small networks. This investigation attempts to infer models of these networks using a co-evolutionary algorithm that reverse engineers differential equation models of the target system from time-series data. The algorithm not only estimates the system parameters, but also the symbolic structure of the network. To reduce the problem of dimensionality, the algorithm uses a partitioning method while integrating candidate models in order to decouple system equations. In addition, the conventional evolutionary algorithm has been modified and extended to include a technique called 'eng-genes', where candidate models are built up from fundamental mathematical terms derived from knowledge about the target system a priori. This technique essentially focuses the search on more biologically plausible models. The approach is demonstrated on several example reaction networks. The results show that the eng-genes method of limiting the term pool using a priori knowledge improves the convergence of the reverse engineering process compared with the conventional method, resulting in more accurate and transparent models.
AB - A major challenge when attempting to model biochemical reaction networks within the cell is that the dimensionality can become huge, where a large number of molecular species can be involved even in relatively small networks. This investigation attempts to infer models of these networks using a co-evolutionary algorithm that reverse engineers differential equation models of the target system from time-series data. The algorithm not only estimates the system parameters, but also the symbolic structure of the network. To reduce the problem of dimensionality, the algorithm uses a partitioning method while integrating candidate models in order to decouple system equations. In addition, the conventional evolutionary algorithm has been modified and extended to include a technique called 'eng-genes', where candidate models are built up from fundamental mathematical terms derived from knowledge about the target system a priori. This technique essentially focuses the search on more biologically plausible models. The approach is demonstrated on several example reaction networks. The results show that the eng-genes method of limiting the term pool using a priori knowledge improves the convergence of the reverse engineering process compared with the conventional method, resulting in more accurate and transparent models.
KW - Evolutionary programming
KW - Modelling
KW - Parameter estimation
KW - Reverse engineering
KW - Symbolic identification
KW - System identification
UR - https://www.scopus.com/pages/publications/84874568936
U2 - 10.1007/s12559-012-9159-y
DO - 10.1007/s12559-012-9159-y
M3 - Article
AN - SCOPUS:84874568936
SN - 1866-9956
VL - 5
SP - 106
EP - 118
JO - Cognitive Computation
JF - Cognitive Computation
IS - 1
ER -