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An Efficient Algorithm for Computing Attractors of Synchronous And Asynchronous Boolean Networks

机译:计算同步和异步布尔网络吸引子的有效算法

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摘要

Biological networks, such as genetic regulatory networks, often contain positive and negative feedback loops that settle down to dynamically stable patterns. Identifying these patterns, the so-called attractors, can provide important insights for biologists to understand the molecular mechanisms underlying many coordinated cellular processes such as cellular division, differentiation, and homeostasis. Both synchronous and asynchronous Boolean networks have been used to simulate genetic regulatory networks and identify their attractors. The common methods of computing attractors are that start with a randomly selected initial state and finish with exhaustive search of the state space of a network. However, the time complexity of these methods grows exponentially with respect to the number and length of attractors. Here, we build two algorithms to achieve the computation of attractors in synchronous and asynchronous Boolean networks. For the synchronous scenario, combing with iterative methods and reduced order binary decision diagrams (ROBDD), we propose an improved algorithm to compute attractors. For another algorithm, the attractors of synchronous Boolean networks are utilized in asynchronous Boolean translation functions to derive attractors of asynchronous scenario. The proposed algorithms are implemented in a procedure called geneFAtt. Compared to existing tools such as genYsis, geneFAtt is significantly faster in computing attractors for empirical experimental systems.AvailabilityThe software package is available at .
机译:生物网络(例如基因调控网络)通常包含正反馈和负反馈环,这些反馈环稳定为动态稳定的模式。识别这些模式,即所谓的吸引子,可以为生物学家提供重要的见解,以帮助他们了解许多协调的细胞过程(如细胞分裂,分化和体内平衡)的分子机制。同步和异步布尔网络都已被用来模拟遗传调控网络并识别其吸引子。计算吸引子的常用方法是从随机选择的初始状态开始,到对网络状态空间的详尽搜索结束。但是,这些方法的时间复杂度相对于吸引子的数量和长度呈指数增长。在这里,我们建立了两种算法来实现同步和异步布尔网络中吸引子的计算。对于同步场景,结合迭代方法和降阶二进制决策图(ROBDD),我们提出了一种改进的算法来计算吸引子。对于另一种算法,在异步布尔转换函数中利用同步布尔网络的吸引子来导出异步场景的吸引子。所提出的算法是在名为geneFAtt的过程中实现的。与诸如genYsis之类的现有工具相比,geneFAtt在计算用于实验实验系统的吸引子方面要快得多。

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