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A two-stage methodology for gene regulatory network extraction from time-course gene expression data

机译:从时程基因表达数据中提取基因调控网络的两阶段方法

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摘要

The discovery of gene regulatory networks (GRN) from time-course gene expression data (gene trajectory data) is useful for (1) identifying important genes in relation to a disease or a biological function; (2) gaining an understanding on the dynamic interaction between genes; (3) predicting gene expression values at future time points and accordingly; (4) predicting drug effect over time. In this paper, we propose a two-stage methodology that is implemented in the software 'Gene Network Explorer (GNetXP)' for extracting GRNs from gene trajectory data. In the first stage, we apply a hybrid Genetic Algorithm and Expectation Maximization algorithm on clustering the large number of gene trajectories using the mixture of multiple linear regression models for fitting the trajectory data. In the second stage, we apply the Kalman Filter to identify a set of first-order differential equations that describe the dynamics of the representative trajectories, and use these equations for discovering important gene interactions and predicting gene expression values at future time points. The proposed method is demonstrated on the human fibroblast response gene expression data.
机译:从时程基因表达数据(基因轨迹数据)中发现基因调控网络(GRN)可用于(1)识别与疾病或生物学功能有关的重要基因; (2)了解基因之间的动态相互作用; (3)并据此预测未来时间点的基因表达值; (4)预测随着时间的药物作用。在本文中,我们提出了一种在软件“ Gene Network Explorer(GNetXP)”中实现的两阶段方法,用于从基因轨迹数据中提取GRN。在第一阶段,我们使用混合遗传算法和期望最大化算法,使用多个线性回归模型的混合物对大量基因轨迹进行聚类,以拟合轨迹数据。在第二阶段中,我们应用卡尔曼滤波器识别一组描述代表性轨迹动力学的一阶微分方程,并使用这些方程来发现重要的基因相互作用并预测未来时间点的基因表达值。在人成纤维细胞反应基因表达数据上证明了该方法。

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