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Design of Probabilistic Boolean Networks Based on Network Structure and Steady-State Probabilities

机译:基于网络结构和稳态概率的概率布尔网络设计

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摘要

In this brief, we consider the problem of finding a probabilistic Boolean network (PBN) based on a network structure and desired steady-state properties. In systems biology and synthetic biology, such problems are important as an inverse problem. Using a matrix-based representation of PBNs, a solution method for this problem is proposed. The problem of finding a BN has been studied so far. In the problem of finding a PBN, we must calculate not only the Boolean functions, but also the probabilities of selecting a Boolean function and the number of candidates of the Boolean functions. Hence, the problem of finding a PBN is more difficult than that of finding a BN. The effectiveness of the proposed method is presented by numerical examples.
机译:在本摘要中,我们考虑了基于网络结构和所需的稳态特性来寻找概率布尔网络(PBN)的问题。在系统生物学和合成生物学中,这些问题作为反问题很重要。使用基于矩阵的PBN表示,提出了解决该问题的方法。迄今为止,已经研究了寻找国阵的问题。在寻找PBN的问题中,我们不仅必须计算布尔函数,而且还必须计算选择布尔函数的概率和布尔函数候选的数量。因此,找到PBN的问题比找到BN的问题更加困难。数值算例表明了该方法的有效性。

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