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质谱流式细胞术或高维流式细胞术生成的高维表型数据分析

Analysis of High-Dimensional Phenotype Data Generated by Mass Cytometry or High-Dimensional Flow Cytometry.

作者信息

Cirovic Branko, Katzmarski Natalie, Schlitzer Andreas

机构信息

Myeloid Cell Biology, Life and Medical Sciences Institute, University of Bonn, Bonn, Germany.

出版信息

Methods Mol Biol. 2019;1989:281-294. doi: 10.1007/978-1-4939-9454-0_18.

Abstract

Recent advances in single cell multi-omics methodologies significantly expand our understanding of cellular heterogeneity, particularly in the field of immunology. Today's state-of-the-art flow and mass cytometers can detect up to 50 parameters to comprehensively characterize the identity and function of individual cells within a heterogeneous population. As a consequence, the increasing number of parameters that can be detected simultaneously also introduces substantial complexity for the experimental setup and downstream data processing. However, this challenge in data analysis fostered the development of novel bioinformatic tools to fully exploit the high-dimensional data. These tools will eventually replace cumbersome serial, manual gating in the two-dimensional space driven by a priori knowledge, which still represents the gold standard in flow cytometric analysis, to meet the needs of the today's immunologist. To this end, we provide guidelines for a high-dimensional cytometry workflow including experimental setup, panel design, fluorescent spillover compensation, and data analysis.

摘要

单细胞多组学方法的最新进展显著拓宽了我们对细胞异质性的理解,尤其是在免疫学领域。当今最先进的流式细胞仪和质谱细胞仪能够检测多达50个参数,以全面表征异质群体中单个细胞的特性和功能。因此,可同时检测的参数数量不断增加,也给实验设置和下游数据处理带来了极大的复杂性。然而,数据分析中的这一挑战推动了新型生物信息学工具的开发,以充分利用高维数据。这些工具最终将取代由先验知识驱动的二维空间中繁琐的串行手动设门,而这种设门仍然是流式细胞术分析的金标准,以满足当今免疫学家的需求。为此,我们提供了一个高维细胞术工作流程指南,包括实验设置、抗体组合设计、荧光溢出补偿和数据分析。

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