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Clustering longitudinal profiles using P-splines and mixed effects models applied to time-course gene expression data

机译:使用P样条和应用于时间过程基因表达数据的混合效应模型对纵向轮廓进行聚类

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摘要

Longitudinal data is becoming increasingly common and various methods have been developed to analyze this type of data. Profiles from time-course gene expression studies, where cluster analysis plays an important role to identify groups of co-expressed genes over time, are investigated. A number of procedures have been used to cluster time-course gene expression data, however there are many limitations to the techniques previously described. An alternative approach is proposed, which aims to alleviate some of these limitations. The method exploits the connection between the linear mixed effects model and P-spline smoothing to simultaneously smooth the gene expression data to remove any measurement erroroise and cluster the expression profiles using finite mixtures of mixed effects models. This approach has a number of advantages, including decreased computation time and ease of implementation in standard software packages.
机译:纵向数据变得越来越普遍,并且已经开发出各种方法来分析这种类型的数据。研究了时程基因表达研究的概况,其中聚类分析在确定随时间推移共表达的基因组中起着重要作用。已经使用了许多程序来对时程基因表达数据进行聚类,但是,上述技术存在许多局限性。提出了一种替代方法,其目的是减轻一些限制。该方法利用线性混合效应模型和P样条平滑之间的联系,以同时平滑基因表达数据以消除任何测量误差/噪音,并使用混合效应模型的有限混合对表达谱进行聚类。这种方法具有许多优点,包括减少了计算时间和易于在标准软件包中实现。

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