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Intervention in gene regulatory networks via greedy control policies based on long-run behavior

机译:通过基于长期行为的贪婪控制策略干预基因调控网络

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Background A salient purpose for studying gene regulatory networks is to derive intervention strategies, the goals being to identify potential drug targets and design gene-based therapeutic intervention. Optimal stochastic control based on the transition probability matrix of the underlying Markov chain has been studied extensively for probabilistic Boolean networks. Optimization is based on minimization of a cost function and a key goal of control is to reduce the steady-state probability mass of undesirable network states. Owing to computational complexity, it is difficult to apply optimal control for large networks. Results In this paper, we propose three new greedy stationary control policies by directly investigating the effects on the network long-run behavior. Similar to the recently proposed mean-first-passage-time (MFPT) control policy, these policies do not depend on minimization of a cost function and avoid the computational burden of dynamic programming. They can be used to design stationary control policies that avoid the need for a user-defined cost function because they are based directly on long-run network behavior; they can be used as an alternative to dynamic programming algorithms when the latter are computationally prohibitive; and they can be used to predict the best control gene with reduced computational complexity, even when one is employing dynamic programming to derive the final control policy. We compare the performance of these three greedy control policies and the MFPT policy using randomly generated probabilistic Boolean networks and give a preliminary example for intervening in a mammalian cell cycle network. Conclusion The newly proposed control policies have better performance in general than the MFPT policy and, as indicated by the results on the mammalian cell cycle network, they can potentially serve as future gene therapeutic intervention strategies.
机译:背景技术研究基因调控网络的一个显着目的是得出干预策略,目的是确定潜在的药物靶标并设计基于基因的治疗干预。对于概率布尔网络,已经广泛研究了基于底层马尔可夫链的转移概率矩阵的最优随机控制。优化基于成本函数的最小化,控制的主要目标是减少不良网络状态的稳态概率质量。由于计算复杂性,难以将最佳控制应用于大型网络。结果在本文中,我们通过直接研究对网络长期行为的影响,提出了三种新的贪婪平稳控制策略。与最近提出的平均第一次通过时间(MFPT)控制策略相似,这些策略不依赖于成本函数的最小化,并且避免了动态编程的计算负担。它们可以用来设计固定控制策略,从而避免了用户定义的成本函数的需要,因为它们直接基于长期的网络行为。当动态编程算法在计算上令人望而却步时,它们可以用作动态编程算法的替代方法;它们甚至可以用来预测最佳的控制基因,并且降低了计算的复杂性,即使使用动态编程来得出最终的控制策略也是如此。我们使用随机生成的概率布尔网络比较了这三个贪婪控制策略和MFPT策略的性能,并给出了干预哺乳动物细胞周期网络的初步例子。结论新提出的控制策略总体上比MFPT策略具有更好的性能,并且正如哺乳动物细胞周期网络上的结果所表明的那样,它们有可能作为未来的基因治疗干预策略。

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