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Nonlinear joint latent variable models and integrative tumor subtype discovery

机译:非线性关节潜变量模型和整合型肿瘤亚型发现

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Abstract Integrative analysis has been used to identify clusters by integrating data of disparate types, such as deoxyribonucleic acid (DNA) copy number alterations and DNA methylation changes for discovering novel subtypes of tumors. Most existing integrative analysis methods are based on joint latent variable models, which are generally divided into two classes: joint factor analysis and joint mixture modeling, with continuous and discrete parameterizations of the latent variables respectivel.
机译:摘要整合分析已用于通过整合不同类型的数据(例如脱氧核糖核酸(DNA)的拷贝数变化和DNA甲基化变化)来识别簇,以发现新型的肿瘤亚型。现有的大多数综合分析方法都是基于联合潜变量模型,一般分为两类:联合因子分析和联合混合模型,分别对潜变量进行连续和离散的参数化。

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