Title of article :
Extended Robust Boolean Network of Budding Yeast Cell Cycle
Author/Authors :
Shafiekhani, Sajad Department of Biomedical Engineering - School of Medicine - Tehran University of Medical Sciences, Tehran, Iran , Shafiekhani, Mojtaba Department of Biomedical Engineering - Amirkabir University of Technology, Tehran, Iran , Rahbar, Sara Department of Biomedical Engineering - School of Medicine - Tehran University of Medical Sciences, Tehran, Iran , Homayoun Jafari, Amir Department of Biomedical Engineering - School of Medicine - Tehran University of Medical Sciences, Tehran, Iran
Abstract :
Background: How to explore the dynamics of transition probabilities between phases of budding
yeast cell cycle (BYCC) network based on the dynamics of protein activities that control
this network? How to identify the robust structure of protein interactions of BYCC Boolean
network (BN)? Budding yeast allows scientists to put experiments into effect in order to discover
the intracellular cell cycle regulating structures which are well simulated by mathematical modeling.
Methods: We extended an available deterministic BN of proteins responsible for the cell cycle
to a Markov chain model containing apoptosis besides G1, S, G2, M, and stationary G1. Using
genetic algorithm (GA), we estimated the kinetic parameters of the extended BN model so that the
subsequent transition probabilities derived using Markov chain model of cell states as normal cell
cycle becomes the maximum while the structure of chemical interactions of extended BN of cell
cycle becomes more stable. Results: Using kinetic parameters optimized by GA, the probability
of the subsequent transitions between cell cycle phases is maximized. The relative basin size of
stationary G1 increased from 86% to 96.48% while the number of attractors decreased from 7 in
the original model to 5 in the extended one. Hence, an increase in the robustness of the system has
been achieved. Conclusion: The structure of interacting proteins in cell cycle network affects its
robustness and probabilities of transitions between different cell cycle phases. Markov chain and BN
are good approaches to study the stability and dynamics of the cell cycle network.
Keywords :
Boolean network , budding yeast cell cycle , genetic algorithm , Markov chain model
Journal title :
Journal of Medical Signals and Sensors (JMSS)