SingleCellGGM enables gene expression program identification from single-cell transcriptomes and facilitates universal cell label transfer.

IF 4.3 Q1 BIOCHEMICAL RESEARCH METHODS Cell Reports Methods Pub Date : 2024-07-15 Epub Date: 2024-07-05 DOI:10.1016/j.crmeth.2024.100813
Yupu Xu, Yuzhou Wang, Shisong Ma
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引用次数: 0

Abstract

Gene co-expression analysis of single-cell transcriptomes, aiming to define functional relationships between genes, is challenging due to excessive dropout values. Here, we developed a single-cell graphical Gaussian model (SingleCellGGM) algorithm to conduct single-cell gene co-expression network analysis. When applied to mouse single-cell datasets, SingleCellGGM constructed networks from which gene co-expression modules with highly significant functional enrichment were identified. We considered the modules as gene expression programs (GEPs). These GEPs enable direct cell-type annotation of individual cells without cell clustering, and they are enriched with genes required for the functions of the corresponding cells, sometimes at levels greater than 10-fold. The GEPs are conserved across datasets and enable universal cell-type label transfer across different studies. We also proposed a dimension-reduction method through averaging by GEPs for single-cell analysis, enhancing the interpretability of results. Thus, SingleCellGGM offers a unique GEP-based perspective to analyze single-cell transcriptomes and reveals biological insights shared by different single-cell datasets.

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SingleCellGGM 可从单细胞转录组中识别基因表达程序,并促进通用细胞标签转移。
单细胞转录组的基因共表达分析旨在确定基因之间的功能关系,但由于丢失值过高,这种分析具有挑战性。在这里,我们开发了一种单细胞图形高斯模型(SingleCellGGM)算法来进行单细胞基因共表达网络分析。当应用于小鼠单细胞数据集时,SingleCellGGM构建了网络,并从中发现了具有高度显著功能富集的基因共表达模块。我们将这些模块视为基因表达程序(GEP)。这些基因表达程序可直接对单个细胞进行细胞类型注释,而无需进行细胞聚类,它们富集了相应细胞功能所需的基因,有时富集水平超过 10 倍。GEPs在不同数据集之间保持一致,可在不同研究中实现通用的细胞类型标签转移。我们还为单细胞分析提出了一种通过 GEPs 平均的降维方法,提高了结果的可解释性。因此,SingleCellGGM 为分析单细胞转录组提供了独特的基于 GEP 的视角,并揭示了不同单细胞数据集共有的生物学见解。
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来源期刊
Cell Reports Methods
Cell Reports Methods Chemistry (General), Biochemistry, Genetics and Molecular Biology (General), Immunology and Microbiology (General)
CiteScore
3.80
自引率
0.00%
发文量
0
审稿时长
111 days
期刊最新文献
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