Cellsnake: a user-friendly tool for single-cell RNA sequencing analysis

Sinan U. Umu, Karoline Rapp Vander-Elst, Victoria T. Karlsen, Manto Chouliara,Espen Sonderaal Baekkevold,FroDe lars Jahnsen,Diana Domanska

GIGASCIENCE(2023)

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摘要
Background: Single-cell RNA sequencing (scRNA-seq) provides high-resolution transcriptome data to understand the heterogeneity of cell populations at the single-cell level. The analysis of scRNA-seq data requires the utilization of numerous computational tools. However, nonexpert users usually experience installation issues, a lack of critical functionality or batch analysis modes, and the steep learning curves of existing pipelines. Results: We have developed cellsnake, a comprehensive, reproducible, and accessible single-cell data analysis workflow, to overcome these problems. Cellsnake offers advanced features for standard users and facilitates downstream analyses in both R and Python environments. It is also designed for easy integration into existing workflows, allowing for rapid analyses of multiple samples. Conclusion: As an open-source tool, cellsnake is accessible through Bioconda, PyPi, Docker, and GitHub, making it a cost-effective and user-friendly option for researchers. By using cellsnake, researchers can streamline the analysis of scRNA-seq data and gain insights into the complex biology of single cells.
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关键词
scRNA,RNA-seq,workflow,microbiome,single-cell,snakemake,Seurat
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