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UNDO: a Bioconductor R package for unsupervised deconvolution of mixed gene expressions in tumor samples

机译:UNDO:Bioconductor R软件包,用于在肿瘤样本中无监督地对混合基因表达进行反卷积

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A Summary: We develop a novel unsupervised deconvolution method, within a well-grounded mathematical framework, to dissect mixed gene expressions in heterogeneous tumor samples. We implement an R package, UNsupervised DecOnvolution (UNDO), that can be used to automatically detect cell-specific marker genes (MGs) located on the scatter radii of mixed gene expressions, estimate cellular proportions in each sample and deconvolute mixed expressions into cell-specific expression profiles. We demonstrate the performance of UNDO over a wide range of tumor-stroma mixing proportions, validate UNDO on various biologically mixed benchmark gene expression datasets and further estimate tumor purity in TCGA/CPTAC datasets. The highly accurate deconvolution results obtained suggest not only the existence of cell-specific MGs but also UNDO's ability to detect them blindly and correctly. Although the principal application here involves microarray gene expressions, our methodology can be readily applied to other types of quantitative molecular profiling data.
机译:简介:我们在充分基础的数学框架内开发了一种新颖的无监督反卷积方法,以剖析异质肿瘤样本中的混合基因表达。我们实施了一个R包,即Unsupervised DecOnvolution(UNDO),可用于自动检测位于混合基因表达散点半径上的细胞特异性标记基因(MGs),估算每个样品中的细胞比例,并将混合表达反卷积为细胞-具体的表达谱。我们证明了UNDO在多种肿瘤-基质混合比例下的性能,在各种生物混合基准基因表达数据集上验证了UNDO,并进一步估计了TCGA / CPTAC数据集中的肿瘤纯度。获得的高度准确的解卷积结果不仅表明存在特定于细胞的MG,还表明UNDO能够盲目正确地检测它们。尽管这里的主要应用涉及微阵列基因表达,但是我们的方法可以很容易地应用于其他类型的定量分子谱数据。

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