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Tensor-Decomposition-Based Unsupervised Feature Extraction Applied to Prostate Cancer Multiomics Data

机译:基于张量分解的无监督特征提取应用于前列腺癌多孔数据

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摘要

The large p small n problem is a challenge without a de facto standard method available to it. In this study, we propose a tensor-decomposition (TD)-based unsupervised feature extraction (FE) formalism applied to multiomics datasets, in which the number of features is more than 100,000 whereas the number of samples is as small as about 100, hence constituting a typical large p small n problem. The proposed TD-based unsupervised FE outperformed other conventional supervised feature selection methods, random forest, categorical regression (also known as analysis of variance, or ANOVA), penalized linear discriminant analysis, and two unsupervised methods, multiple non-negative matrix factorization and principal component analysis (PCA) based unsupervised FE when applied to synthetic datasets and four methods other than PCA based unsupervised FE when applied to multiomics datasets. The genes selected by TD-based unsupervised FE were enriched in genes known to be related to tissues and transcription factors measured. TD-based unsupervised FE was demonstrated to be not only the superior feature selection method but also the method that can select biologically reliable genes. To our knowledge, this is the first study in which TD-based unsupervised FE has been successfully applied to the integration of this variety of multiomics measurements.
机译:大的P小n问题是一个没有事实上标准方法的挑战。在这项研究中,我们提出了一种张量分解(TD) - 基于应用于多组合数据集的无监督特征提取(FE)形式主义,其中特征数量超过100,000,而样品的数量小于约100,因此构成一个典型的大p小问题。基于TD的无人监督Fe优于其他常规监督特征选择方法,随机森林,分类回归(又称差异分析,或Anova),惩罚线性判别分析,以及两个无监督的方法,多个非负矩阵分解和校长基于组件分析(PCA)在应用于合成数据集时的无监督FE和基于PCA的PCA以外的四种方法应用于多组合器数据集时。由TD基未经监察的Fe选择的基因富集,富集已知与组织和转录因子有关的基因。基于TD的无人监督Fe被证明不仅是优越的特征选择方法,而且还可以选择可以选择生物学可靠基因的方法。为我们的知识,这是第一项研究,其中基于TD的无人监督FE已成功应用于这种多孔测量的整合。

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