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Data processing workflow for large-scale immune monitoring studies by mass cytometry

机译:通过质量细胞仪进行大规模免疫监测研究的数据处理工作流程

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摘要

Mass cytometry is a powerful tool for deep immune monitoring studies. To ensure maximal data quality, a careful experimental and analytical design is required. However even in well-controlled experiments variability caused by either operator or instrument can introduce artifacts that need to be corrected or removed from the data. Here we present a data processing pipeline which ensures the minimization of experimental artifacts and batch effects, while improving data quality. Data preprocessing and quality controls are carried out using an R pipeline and packages like CATALYST for bead-normalization and debarcoding, flowAI and flowCut for signal anomaly cleaning, AOF for files quality control, flowClean and flowDensity for gating, CytoNorm for batch normalization and FlowSOM and UMAP for data exploration. As proper experimental design is key in obtaining good quality events, we also include the sample processing protocol used to generate the data. Both, analysis and experimental pipelines are easy to scale-up, thus the workflow presented here is particularly suitable for large-scale, multicenter, multibatch and retrospective studies.
机译:质量细胞学是深度免疫监测研究的强大工具。为确保最大数据质量,需要仔细的实验​​和分析设计。然而,即使在受控的实验中,也可以通过操作员或仪器引起的可变性引入需要从数据中校正或移除的伪像。在这里,我们提出了一种数据处理管道,其确保最小化实验伪影和批量效应,同时提高数据质量。数据预处理和质量控制使用R管道和伴电型珠子归一化和Demarcoding,FlowaI和Flowcut的封装,用于信号异常清洁,用于文件质量控制,流程和流动性,用于门控,批量标准化和流动性的人UMAP进行数据探索。由于适当的实验设计是获得良好质量事件的关键,我们还包括用于生成数据的示例处理协议。分析和实验管道易于扩大,因此这里呈现的工作流程特别适用于大规模,多中心,多匹配和回顾性研究。

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