scPlant: A versatile framework for single-cell transcriptomic data analysis in plants

Single-cell transcriptomics has been fully embraced in plant biological research and is revolutionizing our understanding of plant growth, development, and responses to external stimuli. However, single-cell transcriptomic data analysis in plants is not trivial, given that there is currently no end-...

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Veröffentlicht in:Plant communications 2023-09, Vol.4 (5), p.100631, Article 100631
Hauptverfasser: Cao, Shanni, He, Zhaohui, Chen, Ruidong, Luo, Yuting, Fu, Liang-Yu, Zhou, Xinkai, He, Chao, Yan, Wenhao, Zhang, Chen-Yu, Chen, Dijun
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Sprache:eng
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Zusammenfassung:Single-cell transcriptomics has been fully embraced in plant biological research and is revolutionizing our understanding of plant growth, development, and responses to external stimuli. However, single-cell transcriptomic data analysis in plants is not trivial, given that there is currently no end-to-end solution and that integration of various bioinformatics tools involves a large number of required dependencies. Here, we present scPlant, a versatile framework for exploring plant single-cell atlases with minimum input data provided by users. The scPlant pipeline is implemented with numerous functions for diverse analytical tasks, ranging from basic data processing to advanced demands such as cell-type annotation and deconvolution, trajectory inference, cross-species data integration, and cell-type-specific gene regulatory network construction. In addition, a variety of visualization tools are bundled in a built-in Shiny application, enabling exploration of single-cell transcriptomic data on the fly. scPlant is a versatile framework designed for analyzing single-cell transcriptomic data in plants. With a range of analytical functions, it enables researchers to efficiently explore plant single-cell atlases. The framework includes tools for data processing, cell-type annotation, trajectory inference, cross-species data integration, gene regulatory network construction, and on-the-fly visualization with a built-in Shiny application.
ISSN:2590-3462
2590-3462
DOI:10.1016/j.xplc.2023.100631