Finding steady states of large scale regulatory networks through partitioning

F. Ay, G. Gülsoy, Tamer Kahveci
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引用次数: 4

Abstract

Identifying steady states that characterize the long term outcome of regulatory networks is crucial in understanding important biological processes such as cellular differentiation. Finding all possible steady states of regulatory networks is a computationally intensive task as it suffers from state space explosion problem. Here, we propose a method for finding steady states of large-scale Boolean regulatory networks. Our method exploits scale-freeness and weak connectivity of regulatory networks in order to speed up the steady state search through partitioning. In the trivial case where network has more than one component such that the components are disconnected from each other, steady states of each component are independent of those of the remaining components. When the size of at least one connected component of the network is still prohibitively large, further partitioning is necessary. In this case, we identify weakly dependent components (i.e., two components that have a small number of regulations from one to the other) and calculate the steady states of each such component independently. We then combine these steady states by taking into account the regulations connecting them. We show that this approach is much more efficient than calculating the steady states of the whole network at once when the number of edges connecting them is small. Since regulatory networks often have small in-degrees, this partitioning strategy can be used effectively in order to find their steady states. Our experimental results on real datasets demonstrate that our method leverages steady state identification to very large regulatory networks.
通过划分寻找大规模调控网络的稳定状态
识别调控网络长期结果的稳定状态对于理解重要的生物过程(如细胞分化)至关重要。由于监管网络存在状态空间爆炸问题,因此寻找所有可能的稳定状态是一项计算密集型的任务。在这里,我们提出了一种寻找大规模布尔调节网络稳态的方法。我们的方法利用调节网络的无标度性和弱连通性,通过分割来加快稳态搜索的速度。在网络具有多个组件的平凡情况下,这些组件彼此断开,每个组件的稳态与其余组件的稳态无关。当网络中至少有一个连接组件的大小仍然非常大时,就需要进一步分区。在这种情况下,我们识别弱依赖组件(即,两个组件具有少量的规则从一个到另一个),并独立计算每个这样的组件的稳定状态。然后我们通过考虑连接它们的规则将这些稳定状态结合起来。我们表明,当连接网络的边数较少时,这种方法比一次性计算整个网络的稳定状态要有效得多。由于调节网络通常具有较小的in-degree,因此可以有效地使用这种划分策略来找到它们的稳定状态。我们在真实数据集上的实验结果表明,我们的方法利用稳态识别非常大的监管网络。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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