Personal tools
You are here: Home Publications Journal Publications Intervention in Gene Regulatory Networks via a Stationary Mean-First-Passage-Time Control Policy

Intervention in Gene Regulatory Networks via a Stationary Mean-First-Passage-Time Control Policy

Vahedi, G., Faryabi, B., Chamberland, J. F., Datta, A., and Dougherty, E. R., IEEE Transactions of Biomedical Engineering, Vol. 55, No. 10, 2319-2331, October, 2008

Keywords: Dynamic programming, genetic regulatory networks, mean first-passage time, probabilistic Boolean networks, stochastic optimal control

Abstract

Aprime objective of modeling genetic regulatory networks is the identification of potential targets for therapeutic intervention. To date, optimal stochastic intervention has been studied in the context of probabilistic Boolean networks, with the control policy based on the transition probability matrix of the associated Markov chain and dynamic programming used to find optimal control policies. Dynamical programming algorithms are problematic owing to their high computational complexity. Two additional computationally burdensome issues that arise are the potential for controlling the network and identifying the best gene for intervention. This paper proposes an algorithm based on mean first-passage time that assigns a stationary control policy for each gene candidate. It serves as an approximation to an optimal control policy and, owing to its reduced computational complexity, can be used to predict the best control gene. Once the best control gene is identified, one can derive an optimal policy or simply utilize the approximate policy for this gene when the network size precludes a direct application of dynamic programming algorithms. A salient point is that the proposed algorithm can be model-free. It can be directly designed from time-course data without having to infer the transition probability matrix of the network.

Files
PDF File   406.1 kB