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Gene trajectory clustering with a hybrid genetic algorithm and expectation maximization method

机译:混合遗传算法与期望最大化方法的基因轨迹聚类

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Clustering time course gene expression data (gene trajectories) is an important step towards solving the complex problem of gene regulatory network (GRN) modeling and discovery as it significantly reduces the dimensionality of the gene space required for analysis. This paper introduces a novel method that hybridizes genetic algorithm (GA) and expectation maximization algorithms (EM) for clustering with the mixtures of multiple linear regression models (MLRs). The proposed method is applied to cluster gene expression time course data into smaller number of classes based on their trajectory similarities. Its performance and application as a generic clustering method to other complex problems are discussed.
机译:聚类时程基因表达数据(基因轨迹)是解决复杂的基因调控网络(GRN)建模和发现问题的重要步骤,因为它显着降低了分析所需的基因空间的维数。本文介绍了一种新颖的方法,该方法将遗传算法(GA)和期望最大化算法(EM)混合在一起,以与多个线性回归模型(MLR)的混合物进行聚类。所提出的方法基于它们的轨迹相似性,将基因表达时程数据聚类为更少的类。讨论了它的性能和作为其他复杂问题的通用聚类方法的应用。

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