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Hierarchical mixture models for biclustering in microarray data

机译:用于微阵列数据二聚化的分层混合模型

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In the last few years, model-based clustering techniques have become widely used in the context of microarray data analysis. In this empirical context, a potential purpose for statistical approaches is the identification of clusters of genes that are co-expressed under subsets of experimental conditions. We discuss a hierarchical mixture model to combine advantages of allowing for dependence within gene clusters and for simultaneous clustering of genes and experimental conditions. Thanks to the adopted hierarchical structure, we may distinguish gene clusters from mixture components, where the latter may represent intra-cluster gene-specific extra-Gaussian departures. To cluster experimental conditions, instead, we suggest a suitable parameterization of component-specific means by using a binary row stochastic matrix representing condition membership. The performance of the proposed approach is discussed on both simulated and real datasets.
机译:在过去的几年中,基于模型的聚类技术已广泛用于微阵列数据分析中。在这种经验背景下,统计学方法的潜在目的是鉴定在实验条件子集下共表达的基因簇。我们讨论了一种分层混合模型,以结合允许在基因簇内进行依赖以及同时对基因和实验条件进行聚类的优势。由于采用了分层结构,我们可以将基因簇与混合物成分区分开,后者可以代表群集内基因特定的高斯外偏离。为了聚类实验条件,我们建议使用代表条件成员资格的二进制行随机矩阵对特定于组件的方法进行适当的参数化。在模拟和真实数据集上都讨论了该方法的性能。

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