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Biologically-aware Latent Dirichlet Allocation (BaLDA) for the Classification of Expression Microarray

机译:用于表达微阵列的分类的生物学意识到潜在的Dirichlet分配(BALDA)

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Topic models have recently shown to be really useful tools for the analysis of microarray experiments. In particular they have been successfully applied to gene clustering and, very recently, also to samples classification. In this latter case, nevertheless, the basic assumption of functional independence between genes is limiting, since many other a priori information about genes' interactions may be available (co-regulation, spatial proximity or other a priori knowledge). In this paper a novel topic model is proposed, which enriches and extends the Latent Dirichlet Allocation (LDA) model by integrating such dependencies, encoded in a categorization of genes. The proposed topic model is used to derive a highly informative and discriminant representation for microarray experiments. Its usefulness, in comparison with standard topic models, has been demonstrated in two different classification tests.
机译:主题模型最近显示出对微阵列实验分析的真正有用的工具。特别是,他们已成功应用于基因聚类,并且最近也是对样品分类的。然而,在后一种情况下,基因之间的功能独立性的基本假设是限制性的,因为可以使用许多关于基因交互的先验信息(共同调节,空间接近或其他先验知识)。在本文中,提出了一种新颖的主题模型,通过集成在基因分类中编码的这种依赖性来丰富并扩展潜在的Dirichlet分配(LDA)模型。所提出的主题模型用于推导出微阵列实验的高度信息丰富和判别表示。与标准主题模型相比,其有用性已在两种不同的分类测试中证明。

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