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Analyzing Time Course Gene Expression Data with Biological and Technical Replicates to Estimate Gene Networks by State Space Models

机译:用生物学和技术复制分析时间课程基因表达数据,通过国家空间模型来估算基因网络

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In order to estimate accurate gene networks from time course gene expression data, replicated time course data are useful. However, existing methods do not clearly distinguish between biological and technical replicates, while these two kinds of replicates have different features. In this paper, we propose a statistical model based on state space models to use biologically and technically replicated time course data and show an algorithm to estimate a gene network that is a graphical representation of gene-gene regulation. To our knowledge, for estimating gene networks, the proposed model is the first model that can simultaneously use two types of replicated time course data. We show the effectiveness of the proposed method through the analysis of the microarray human T-cell data.
机译:为了从时间课程基因表达数据中估计准确的基因网络,复制的时间课程数据是有用的。然而,现有方法没有明确区分生物和技术复制,而这两种重复具有不同的特征。在本文中,我们提出了一种基于状态空间模型的统计模型来使用生物学和技术上复制的时间课程数据,并显示一种估计基因网络的算法,该算法是基因调控的图形表示。为了我们的知识,为了估算基因网络,所提出的模型是第一模型,可以同时使用两种复制的时间课程数据。我们通过分析微阵列人T细胞数据来展示所提出的方法的有效性。

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