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SPSNet: subpopulation-sensitive network-based analysis of heterogeneous gene expression data

机译:SPSNet:基于亚群敏感网络的异构基因表达数据分析

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摘要

BackgroundTranscriptomic datasets often contain undeclared heterogeneity arising from biological variation such as diversity of disease subtypes, treatment subgroups, time-series gene expression, nested experimental conditions, as well as technical variation due to batch effects, platform differences in integrated meta-analyses, etc. However, current analysis approaches are primarily designed to handle comparisons between experimental conditions represented by homogeneous samples, thus precluding the discovery of underlying subphenotypes. Unsupervised methods for subtype identification are typically based on individual gene level analysis, which often result in irreproducible gene signatures for potential subtypes. Emerging methods to study heterogeneity have been largely developed in the context of single-cell datasets containing hundreds to thousands of samples, limiting their use to select contexts.
机译:背景转录组数据集通常包含未声明的异质性,这些异质性是由生物学变异引起的,例如疾病亚型,治疗亚组,时间序列基因表达,嵌套实验条件以及由于批次效应,集成荟萃分析中平台差异等引起的技术变异等生物变异。但是,当前的分析方法主要设计用于处理均质样品所代表的实验条件之间的比较,从而排除了潜在亚表型的发现。无监督亚型鉴定方法通常基于个体基因水平分析,这经常导致潜在亚型的基因标记无法再现。在研究包含数百到数千个样本的单细胞数据集的背景下,研究异质性的新兴方法已经得到了很大发展,从而限制了它们用于选择背景的能力。

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