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Detection of the dominant direction of information flow and feedback links in densely interconnected regulatory networks

机译:在密集互连的监管网络中检测信息流和反馈链接的主导方向

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摘要

BackgroundFinding the dominant direction of flow of information in densely interconnected regulatory or signaling networks is required in many applications in computational biology and neuroscience. This is achieved by first identifying and removing links which close up feedback loops in the original network and hierarchically arranging nodes in the remaining network. In mathematical language this corresponds to a problem of making a graph acyclic by removing as few links as possible and thus altering the original graph in the least possible way. The exact solution of this problem requires enumeration of all cycles and combinations of removed links, which, as an NP-hard problem, is computationally prohibitive even for modest-size networks.
机译:背景技术在计算生物学和神经科学的许多应用中,需要找到密集互连的调节或信号网络中信息流的主导方向。这是通过首先识别和删除链接来实现的,该链接关闭了原始网络中的反馈环路,并在其余网络中按层次排列了节点。用数学语言,这对应于一个问题,即通过删除尽可能少的链接,从而以最小可能的方式更改原始图,从而使图成为非循环图。该问题的确切解决方案要求枚举所有周期以及已删除链接的组合,这作为NP难题,即使对于中等规模的网络,在计算上也是禁止的。

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