Reconstruction of Gene Regulatory Networks using Differential Evolution

Briti Sundar Mondal, Arup Kumar Sarkar, Mahmudul Hasan, N. Noman
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引用次数: 12

Abstract

Gene Regulatory Network (GRN) is an abstract mapping of gene regulations in living cells that can help to predict the system behavior of living organisms. In this research, we use a model based inference method to reconstruct GRN from gene expression data. We use linear time variant model which is of particular interest among all other models because of its capability of discovering the non-linear interactions among genes in a reasonably short time even while dealing with noisy time-series data. Here, Differential Evolution (DE), a versatile, robust and well-known Evolutionary Algorithm (EA) has been used. The potency of the proposed method has been verified in gene network reconstruction experiments, varying the network dimension and characteristics, the amount of gene expression data used for inference, and the noise level present in gene expression profiles. Real expression dataset of SOS DNA repair system in Escherichia coli is used to reconstruct the regulatory network. All these experiments have proved the efficacy of the proposed reconstruction method.
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利用差异进化重建基因调控网络
基因调控网络(GRN)是活细胞中基因调控的抽象图谱,可以帮助预测活生物体的系统行为。在本研究中,我们使用基于模型的推理方法从基因表达数据中重构GRN。我们使用线性时变模型,这是所有其他模型中特别感兴趣的,因为它能够在相当短的时间内发现基因之间的非线性相互作用,即使在处理有噪声的时间序列数据时。这里,差分进化(DE),一个通用的,鲁棒的和著名的进化算法(EA)被使用。该方法的有效性已在基因网络重建实验中得到验证,该实验改变了网络的维度和特征、用于推理的基因表达数据量以及基因表达谱中存在的噪声水平。利用SOS DNA修复系统在大肠杆菌中的真实表达数据集,重构其调控网络。所有这些实验都证明了所提出的重建方法的有效性。
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