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Large-scale approximate intervention strategies for Probabilistic Boolean Networks as models of gene regulation

机译:概率布尔网络的大型近似干预策略作为基因调节模型

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摘要

Control of Probabilistic Boolean Networks as models of gene regulation is an important problem; the solution may help researchers in various different areas. But as generally applies to control problems, the size of the state space in gene regulatory networks is too large to be considered for comprehensive solution to the problem; this is evident from the work done in the field, where only very small portions of the whole genome of an organism could be used in control applications. The Factored Markov Decision Problem (FMDP) framework avoids enumerating the whole state space by representing the probability distribution of state transitions using compact models like dynamic bayesian networks. In this paper, we successfully applied FMDP to gene regulatory network control, and proposed a model minimization method that helps finding better approximate policies by using existing FMDP solvers. The results reported on gene expression data demonstrate the applicability and effectiveness of the proposed approach.
机译:控制概率布尔网络作为基因调节模型是一个重要问题;该解决方案可以帮助各种不同区域的研究人员。但通常适用于控制问题,基因监管网络中的状态空间的大小太大而无法考虑解决问题的综合解决方案;这显然是从该领域所做的工作中所做的,其中仅在控制应用中只能使用整个生物体的非常小的部分。代表性的马尔可夫决策问题(FMDP)框架避免了通过代表使用像动态贝叶斯网络这样的紧凑型号的状态转换的概率分布来枚举整个状态空间。在本文中,我们成功地将FMDP应用于基因监管网络控制,并提出了一种模型最小化方法,可以通过使用现有的FMDP求解器来找到更好的近似政策。关于基因表达数据报告的结果表明了所提出的方法的适用性和有效性。

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