Crowell Helena L, Chevrier Stéphane, Jacobs Andrea, Sivapatham Sujana, Bodenmiller Bernd, Robinson Mark D
Institute of Molecular Life Sciences, University of Zurich, Zurich, 8057, Switzerland.
SIB Swiss Institute of Bioinformatics, Zurich, 8057, Switzerland.
F1000Res. 2020 Oct 22;9:1263. doi: 10.12688/f1000research.26073.2. eCollection 2020.
Mass cytometry (CyTOF) has become a method of choice for in-depth characterization of tissue heterogeneity in health and disease, and is currently implemented in multiple clinical trials, where higher quality standards must be met. Currently, preprocessing of raw files is commonly performed in independent standalone tools, which makes it difficult to reproduce. Here, we present an R pipeline based on an updated version of CATALYST that covers all preprocessing steps required for downstream mass cytometry analysis in a fully reproducible way. This new version of CATALYST is based on Bioconductor's SingleCellExperiment class and fully unit tested. The R-based pipeline includes file concatenation, bead-based normalization, single-cell deconvolution, spillover compensation and live cell gating after debris and doublet removal. Importantly, this pipeline also includes different quality checks to assess machine sensitivity and staining performance while allowing also for batch correction. This pipeline is based on open source R packages and can be easily be adapted to different study designs. It therefore has the potential to significantly facilitate the work of CyTOF users while increasing the quality and reproducibility of data generated with this technology.
质谱流式细胞术(CyTOF)已成为深入表征健康与疾病状态下组织异质性的首选方法,目前已应用于多项临床试验,这些试验必须满足更高的质量标准。目前,原始文件的预处理通常在独立的单机工具中进行,这使得结果难以重现。在此,我们展示了一种基于更新版CATALYST的R工作流程,它以完全可重现的方式涵盖了下游质谱流式细胞术分析所需的所有预处理步骤。这个新版的CATALYST基于生物导体(Bioconductor)的单细胞实验(SingleCellExperiment)类,并经过了全面的单元测试。基于R的工作流程包括文件合并、基于微珠的标准化、单细胞解卷积、溢出补偿以及去除碎片和双联体后的活细胞门控。重要的是,该工作流程还包括不同的质量检查,以评估仪器灵敏度和染色性能,同时也允许进行批次校正。此工作流程基于开源R包,并且可以轻松适应不同的研究设计。因此,它有潜力显著简化CyTOF用户的工作,同时提高使用该技术生成的数据的质量和可重复性。