PAGER-scFGA: unveiling cell functions and molecular mechanisms in cell trajectories through single-cell functional genomics analysis

Fengyuan Huang, Robert S. Welner, Jake Y. Chen, Zongliang Yue
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Abstract

Background: Understanding how cells and tissues respond to stress factors and perturbations during disease processes is crucial for developing effective prevention, diagnosis, and treatment strategies. Single-cell RNA sequencing (scRNA-seq) enables high-resolution identification of cells and exploration of cell heterogeneity, shedding light on cell differentiation/maturation and functional differences. Recent advancements in multimodal sequencing technologies have focused on improving access to cell-specific subgroups for functional genomics analysis. To facilitate the functional annotation of cell groups and characterization of molecular mechanisms underlying cell trajectories, we introduce the Pathways, Annotated Gene Lists, and Gene Signatures Electronic Repository for Single-Cell Functional Genomics Analysis (PAGER-scFGA).Results: We have developed PAGER-scFGA, which integrates cell functional annotations and gene-set enrichment analysis into popular single-cell analysis pipelines such as Scanpy. Using differentially expressed genes (DEGs) from pairwise cell clusters, PAGER-scFGA infers cell functions through the enrichment of potential cell-marker genesets. Moreover, PAGER-scFGA provides pathways, annotated gene lists, and gene signatures (PAGs) enriched in specific cell subsets with tissue compositions and continuous transitions along cell trajectories. Additionally, PAGER-scFGA enables the construction of a gene subcellular map based on DEGs and allows examination of the gene functional compartments (GFCs) underlying cell maturation/differentiation. In a real-world case study of mouse natural killer (mNK) cells, PAGER-scFGA revealed two major stages of natural killer (NK) cells and three trajectories from the precursor stage to NK T-like mature stage within blood, spleen, and bone marrow tissues. As the trajectories progress to later stages, the DEGs exhibit greater divergence and variability. However, the DEGs in different trajectories still interact within a network during NK cell maturation. Notably, PAGER-scFGA unveiled cell cytotoxicity, exocytosis, and the response to interleukin (IL) signaling pathways and associated network models during the progression from precursor NK cells to mature NK cells.Conclusion: PAGER-scFGA enables in-depth exploration of functional insights and presents a comprehensive knowledge map of gene networks and GFCs, which can be utilized for future studies and hypothesis generation. It is expected to become an indispensable tool for inferring cell functions and detecting molecular mechanisms within cell trajectories in single-cell studies. The web app (accessible at https://au-singlecell.streamlit.app/) is publicly available.
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PAGER-scFGA:通过单细胞功能基因组学分析揭示细胞轨迹中的细胞功能和分子机制
背景:了解细胞和组织如何应对疾病过程中的应激因素和干扰,对于制定有效的预防、诊断和治疗策略至关重要。单细胞 RNA 测序(scRNA-seq)能够高分辨率地识别细胞并探索细胞异质性,从而揭示细胞分化/成熟和功能差异。多模态测序技术的最新进展主要集中在改善细胞特异性亚群的获取,以进行功能基因组学分析。为了促进细胞群的功能注释和细胞轨迹的分子机制表征,我们引入了用于单细胞功能基因组学分析的通路、注释基因列表和基因特征电子资源库(PAGER-scFGA):我们开发了 PAGER-scFGA,它将细胞功能注释和基因组富集分析集成到了 Scanpy 等流行的单细胞分析管道中。PAGER-scFGA利用成对细胞簇的差异表达基因(DEGs),通过富集潜在的细胞标记基因组来推断细胞功能。此外,PAGER-scFGA 还提供了在特定细胞亚群中富集的通路、注释基因列表和基因特征 (PAG),以及组织组成和细胞轨迹的连续转换。此外,PAGER-scFGA 还能根据 DEGs 构建基因亚细胞图谱,并检查细胞成熟/分化所依赖的基因功能区(GFCs)。在对小鼠自然杀伤(mNK)细胞的实际案例研究中,PAGER-scFGA 揭示了自然杀伤(NK)细胞的两个主要阶段,以及在血液、脾脏和骨髓组织中从前体阶段到类似 NK T 的成熟阶段的三个轨迹。随着轨迹向后期发展,DEGs 表现出更大的差异和变异性。然而,在 NK 细胞成熟过程中,不同轨迹的 DEGs 仍会在一个网络中相互作用。值得注意的是,PAGER-scFGA揭示了从前体NK细胞到成熟NK细胞过程中的细胞毒性、外吞作用和对白细胞介素(IL)信号通路的反应以及相关网络模型:结论:PAGER-scFGA 能够深入探讨功能性见解,并呈现基因网络和 GFC 的全面知识图谱,可用于未来的研究和假设生成。它有望成为单细胞研究中推断细胞功能和检测细胞轨迹中分子机制的不可或缺的工具。该网络应用程序(可通过 https://au-singlecell.streamlit.app/ 访问)已公开发布。
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