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使用COSG准确快速地鉴定细胞标记基因。

Accurate and fast cell marker gene identification with COSG.

作者信息

Dai Min, Pei Xiaobing, Wang Xiu-Jie

机构信息

Institute of Genetics and Developmental Biology, Innovation Academy of Seed Design, Chinese Academy of Sciences, Beijing 100101, China.

University of Chinese Academy of Sciences, Beijing 100049, China.

出版信息

Brief Bioinform. 2022 Mar 10;23(2). doi: 10.1093/bib/bbab579.

Abstract

Accurate cell classification is the groundwork for downstream analysis of single-cell sequencing data, yet how to identify true marker genes for different cell types still remains a big challenge. Here, we report COSine similarity-based marker Gene identification (COSG) as a cosine similarity-based method for more accurate and scalable marker gene identification. COSG is applicable to single-cell RNA sequencing data, single-cell ATAC sequencing data and spatially resolved transcriptome data. COSG is fast and scalable for ultra-large datasets of million-scale cells. Application on both simulated and real experimental datasets showed that the marker genes or genomic regions identified by COSG have greater cell-type specificity, demonstrating the superior performance of COSG in terms of both accuracy and efficiency as compared with other available methods.

摘要

准确的细胞分类是单细胞测序数据下游分析的基础,但如何识别不同细胞类型的真正标记基因仍然是一个巨大的挑战。在此,我们报告基于余弦相似度的标记基因识别方法(COSG),这是一种基于余弦相似度的方法,用于更准确、可扩展地识别标记基因。COSG适用于单细胞RNA测序数据、单细胞ATAC测序数据和空间分辨转录组数据。对于数百万规模细胞的超大型数据集,COSG快速且可扩展。在模拟和真实实验数据集上的应用表明,COSG识别出的标记基因或基因组区域具有更高的细胞类型特异性,证明了COSG在准确性和效率方面优于其他现有方法。

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