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基于长期行为的表型约束控制策略对基因调控网络的干预。

Intervention in gene regulatory networks via phenotypically constrained control policies based on long-run behavior.

机构信息

University of South Florida, Tampa.

出版信息

IEEE/ACM Trans Comput Biol Bioinform. 2012 Jan-Feb;9(1):123-36. doi: 10.1109/TCBB.2011.107. Epub 2011 Jul 20.

Abstract

A salient purpose for studying gene regulatory networks is to derive intervention strategies to identify potential drug targets and design gene-based therapeutic intervention. Optimal and approximate intervention strategies based on the transition probability matrix of the underlying Markov chain have been studied extensively for probabilistic Boolean networks. While the key goal of control is to reduce the steady-state probability mass of undesirable network states, in practice it is important to limit collateral damage and this constraint should be taken into account when designing intervention strategies with network models. In this paper, we propose two new phenotypically constrained stationary control policies by directly investigating the effects on the network long-run behavior. They are derived to reduce the risk of visiting undesirable states in conjunction with constraints on the shift of undesirable steady-state mass so that only limited collateral damage can be introduced. We have studied the performance of the new constrained control policies together with the previous greedy control policies to randomly generated probabilistic Boolean networks. A preliminary example for intervening in a metastatic melanoma network is also given to show their potential application in designing genetic therapeutics to reduce the risk of entering both aberrant phenotypes and other ambiguous states corresponding to complications or collateral damage. Experiments on both random network ensembles and the melanoma network demonstrate that, in general, the new proposed control policies exhibit the desired performance. As shown by intervening in the melanoma network, these control policies can potentially serve as future practical gene therapeutic intervention strategies.

摘要

研究基因调控网络的一个突出目的是得出干预策略,以确定潜在的药物靶点并设计基于基因的治疗干预措施。已经广泛研究了基于潜在马尔可夫链转移概率矩阵的最优和近似干预策略,用于概率布尔网络。虽然控制的关键目标是减少不良网络状态的稳态概率质量,但在实践中,限制附带损害很重要,在使用网络模型设计干预策略时应考虑到这一约束。在本文中,我们通过直接研究对网络长期行为的影响,提出了两种新的表型约束稳态控制策略。它们是为了减少访问不良状态的风险而设计的,同时对不良稳态质量的转移施加约束,以便只能引入有限的附带损害。我们已经研究了新的约束控制策略与以前的贪婪控制策略相结合对随机生成的概率布尔网络的性能。还给出了一个干预转移性黑素瘤网络的初步示例,以展示它们在设计减少进入异常表型和其他对应于并发症或附带损害的模糊状态的风险的遗传治疗中的潜在应用。对随机网络集合和黑素瘤网络的实验表明,一般来说,新提出的控制策略表现出所需的性能。如通过干预黑素瘤网络所示,这些控制策略可能潜在地作为未来的实际基因治疗干预策略。

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