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Principal Component Analysis-Based Unsupervised Feature Extraction Applied to Single-Cell Gene Expression Analysis

机译:基于主成分分析的无监督特征提取在单细胞基因表达分析中的应用

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Due to missed sample labeling, unsupervised feature selection during single-cell (sc) RNA-seq can identify critical genes under the experimental conditions considered. In this paper, we applied principal component analysis (PCA)-based unsupervised feature extraction (FE) to identify biologically relevant genes from mouse and human embryonic brain development expression profiles retrieved by scRNA-seq. When evaluating the biological relevance of selected genes by various enrichment analyses, the PCA-based unsupervised FE outperformed conventional unsupervised approaches that select highly variable genes as well as bimodal genes in addition to the recently proposed dpFeature.
机译:由于缺少样品标记,在考虑的实验条件下,单细胞(sc)RNA-seq期间的无监督特征选择可以识别关键基因。在本文中,我们应用了基于主成分分析(PCA)的无监督特征提取(FE)来从scRNA-seq检索的小鼠和人类胚胎脑发育表达谱中鉴定生物学相关基因。当通过各种富集分析评估选定基因的生物学相关性时,基于PCA的无监督FE优于传统的无监督方法,该方法除了最近提出的dpFeature之外还选择了高度可变的基因以及双峰基因。

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