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Nonlinear Joint Latent Variable Models and Integrative Tumor Subtype Discovery

机译:非线性联合潜变量模型和整合型肿瘤亚型发现

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摘要

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 respectively. Despite recent progresses, many issues remain. In particular, existing integration methods based on joint factor analysis may be inadequate to model multiple clusters due to the unimodality of the assumed Gaussian distribution, while those based on joint mixture modeling may not have the ability for dimension reduction and/or feature selection. In this paper, we employ a nonlinear joint latent variable model to allow for flexible modeling that can account for multiple clusters as well as conduct dimension reduction and feature selection. We propose a method, called integrative and regularized generative topographic mapping (irGTM), to perform simultaneous dimension reduction across multiple types of data while achieving feature selection separately for each data type. Simulations are performed to examine the operating characteristics of the methods, in which the proposed method compares favorably against the popular iCluster that is based on a linear joint latent variable model. Finally, a glioblastoma multiforme (GBM) dataset is examined.
机译: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)来发现新​​的肿瘤亚型来识别簇。现有的大多数综合分析方法都基于联合潜在变量模型,通常将其分为两类: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。尽管取得了最新进展,但仍有许多问题。特别是,由于假定的高斯分布的单峰性,基于联合因子分析的现有集成方法可能不足以对多个聚类进行建模,而基于联合混合模型的那些则可能不具有降维和/或特征选择的能力。在本文中,我们采用非线性联合潜在变量模型来进行灵活的建模,该模型可以考虑多个聚类以及进行尺寸缩减和特征选择。我们提出了一种称为集成和正则化的生成式地形图(irGTM)的方法,该方法可跨多种类型的数据执行同时降维,同时针对每种数据类型分别实现特征选择。进行仿真以检查方法的操作特性,其中所提出的方法与基于线性联合潜在变量模型的流行iCluster相比具有优势。最后,检查了胶质母细胞瘤(GBM)数据集。

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