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An efficient network querying method based on conditional random fields

机译:一种基于条件随机场的高效网络查询方法

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Motivation: A large amount of biomolecular network data for multiple species have been generated by high-throughput experimental techniques, including undirected and directed networks such as protein-protein interaction networks, gene regulatory networks and metabolic networks. There are many conserved functionally similar modules and pathways among multiple biomolecular networks in different species; therefore, it is important to analyze the similarity between the biomolecular networks. Network querying approaches aim at efficiently discovering the similar subnetworks among different species. However, many existing methods only partially solve this problem.Results: In this article, a novel approach for network querying problem based on conditional random fields (CRFs) model is presented, which can handle both undirected and directed networks, acyclic and cyclic networks and any number of insertions/deletions. The CRF method is fast and can query pathways in a large network in seconds using a PC. To evaluate the CRF method, extensive computational experiments are conducted on the simulated and real data, and the results are compared with the existing network querying methods. All results show that the CRF method is very useful and efficient to find the conserved functionally similar modules and pathways in multiple biomolecular networks.
机译:动机:高通量实验技术已经产生了多种物种的大量生物分子网络数据,包括无向和有向的网络,例如蛋白质-蛋白质相互作用网络,基因调控网络和代谢网络。在不同物种的多个生物分子网络之间,存在许多保守的功能相似的模块和途径。因此,重要的是分析生物分子网络之间的相似性。网络查询方法旨在有效地发现不同物种之间的相似子网。结果:本文提出了一种新的基于条件随机字段(CRF)模型的网络查询方法,该方法可以处理无向和有向网络,非循环和循环网络以及任意数量的插入/删除。 CRF方法快速,可以使用PC在几秒钟内查询大型网络中的路径。为了评估CRF方法,对模拟和真实数据进行了广泛的计算实验,并将结果与​​现有的网络查询方法进行了比较。所有结果表明,CRF方法对于在多个生物分子网络中寻找保守的功能相似的模块和途径非常有用和高效。

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