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Gene Regulatory Networks Reconstruction Using the Flooding-Pruning Hill-Climbing Algorithm

机译:利用洪水修剪爬山算法重建基因调控网络

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The explosion of genomic data provides new opportunities to improve the task of gene regulatory network reconstruction. Because of its inherent probability character, the Bayesian network is one of the most promising methods. However, excessive computation time and the requirements of a large number of biological samples reduce its effectiveness and application to gene regulatory network reconstruction. In this paper, Flooding-Pruning Hill-Climbing algorithm (FPHC) is proposed as a novel hybrid method based on Bayesian networks for gene regulatory networks reconstruction. On the basis of our previous work, we propose the concept of DPI Level based on data processing inequality (DPI) to better identify neighbors of each gene on the lack of enough biological samples. Then, we use the search-and-score approach to learn the final network structure in the restricted search space. We first analyze and validate the effectiveness of FPHC in theory. Then, extensive comparison experiments are carried out on known Bayesian networks and biological networks from the DREAM (Dialogue on Reverse Engineering Assessment and Methods) challenge. The results show that the FPHC algorithm, under recommended parameters, outperforms, on average, the original hill climbing and Max-Min Hill-Climbing (MMHC) methods with respect to the network structure and running time. In addition, our results show that FPHC is more suitable for gene regulatory network reconstruction with limited data.
机译:基因组数据的爆炸式增长为改善基因调控网络重建的任务提供了新的机会。由于其固有的概率特征,贝叶斯网络是最有前途的方法之一。然而,过多的计算时间和大量生物样品的需求降低了其有效性和在基因调控网络重建中的应用。本文提出了泛洪修剪爬山算法(FPHC),作为一种基于贝叶斯网络的基因调控网络重构的新混合方法。在我们之前的工作的基础上,我们提出了基于数据处理不平等(DPI)的DPI级别的概念,以在缺乏足够的生物样本时更好地识别每个基因的邻居。然后,我们使用搜索和评分方法来学习受限搜索空间中的最终网络结构。我们首先从理论上分析和验证FPHC的有效性。然后,在已知的贝叶斯网络和来自DREAM(逆向工程评估和方法的对话)挑战的生物网络上进行了广泛的比较实验。结果表明,就网络结构和运行时间而言,在推荐参数下,FPHC算法的平均性能要优于原始爬坡和最大爬坡爬坡(MMHC)方法。此外,我们的结果表明,FPHC更适用于数据有限的基因调控网络重建。

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