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Inferring Gene Regulatory Network with Recurrent Neural Network and Extended Artificial Bee Colony Algorithm

机译:基于递归神经网络和扩展人工蜂群算法的基因调控网络推断

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Gene regulatory network is the network of genes interacting with each other performing as functional circuitry inside a cell. Many cellular processes are controlled by this network as they govern the expression levels of genes or gene product. High performance computational techniques are needed to analyze these data as it is heavily affected by noise. There are a number of algorithms available in the literature which use recurrent neural network for model building together with differential evolution, particle swarm optimization or genetic algorithm for searching the regulatory network. The problem with these methods is that they may trap in the local minimum. In this paper, we present an algorithm using recurrent neural network as model and an extended artificial bee colony algorithm for searching regulatory network that can avoid local minimum. A comprehensive analysis on both artificial and real data shows the effectiveness of the proposed approach. Furthermore we have also varied the network dimension and the noise level present in gene expression profiles. The reconstruction method has successfully predicted the underlying network topology while maintaining high accuracy. The proposed approach has also been applied to the real expression data of SOS DNA repair system in Escherichia coli and successfully predicted important regulations.
机译:基因调控网络是基因互相作用的网络,在细胞内部起着功能电路的作用。由于许多细胞过程控制着基因或基因产物的表达水平,因此受到该网络的控制。由于这些数据受到噪声的严重影响,因此需要高性能的计算技术来分析这些数据。文献中提供了许多算法,这些算法使用递归神经网络进行模型构建,同时使用差分进化,粒子群优化或遗传算法来搜索监管网络。这些方法的问题在于它们可能会陷入局部最小值。在本文中,我们提出了一种使用递归神经网络作为模型的算法,以及一种扩展的人工蜂群算法来搜索规避网络,该算法可以避免局部最小值。对人工和真实数据的综合分析表明了该方法的有效性。此外,我们还改变了基因表达谱中存在的网络尺寸和噪声水平。该重构方法已成功预测了基础网络拓扑,同时保持了较高的准确性。所提出的方法也已经应用于SOS DNA修复系统在大肠杆菌中的真实表达数据,并成功地预测了重要的法规。

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