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Clustering Gene Expression Data Based on Predicted Differential Effects of G V Interaction

机译:基于G V相互作用的预测差异效应的基因表达数据聚类

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Microarray has become a popular biotechnology in biological and medical research.However, systematic and stochastic variabilities in microarray data are expected and unavoidable, resulting in the problem that the raw measurements have inherent "noise" within microarray experiments. Currently, logarithmic ratios are usually analyzed by various clustering methods directly, which may introduce bias interpretation in identifying groups of genes or samples. In this paper, a statistical method based on mixed model approaches was proposed for microarray data cluster analysis. The underlying rationale of this method is to partition the observed total gene expression level into various variations caused by different factors using an ANOVA model, and to predict the differential effects of G V (gene by variety)interaction using the adjusted unbiased prediction (AUP) method. The predicted G V interaction effects can then be used as the inputs of cluster analysis. We illustrated the application of our method with a gene expression dataset and elucidated the utility of our approach using an external validation.
机译:微阵列已成为生物学和医学研究中流行的生物技术。但是,微阵列数据的系统性和随机性变化是预期的和不可避免的,从而导致原始测量在微阵列实验中具有固有的“噪声”。当前,对数比通常通过各种聚类方法直接分析,这可能在鉴定基因或样品组时引入偏倚解释。本文提出了一种基于混合模型方法的统计方法,用于微阵列数据聚类分析。该方法的基本原理是使用ANOVA模型将观察到的总基因表达水平划分为由不同因素引起的各种变异,并使用调整后的无偏预测(AUP)方法预测GV(基因变异)相互作用的差异效应。 。然后,可以将预测的G V相互作用效应用作聚类分析的输入。我们用基因表达数据集说明了该方法的应用,并使用外部验证阐明了该方法的实用性。

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