TimeFlow:用于流式细胞术数据分析的密度驱动伪时间方法。

IF 2.5 4区 生物学 Q3 BIOCHEMICAL RESEARCH METHODS
Margarita Liarou, Thomas Matthes, Stéphane Marchand-Maillet
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引用次数: 0

摘要

伪时间方法对分化的细胞从分化程度最小到分化程度最大进行排序。我们开发了TimeFlow,一种在多维流式细胞术数据集中计算伪时间的新方法。TimeFlow通过跟踪细胞种群密度的平滑变化来跟踪图上每个细胞的分化路径。为了计算单元格的概率密度函数,它使用归一化流模型。我们使用20色抗体面板对3名健康患者的骨髓样本进行了流式细胞术分析,并准备了从5000到60万个细胞的数据集,包括不同成熟阶段的单核细胞、中性粒细胞、红细胞和b细胞。TimeFlow为所有数据集计算了细粒度的伪时间,并且细胞顺序与人类造血的先验知识一致。实验表明,它有可能在病人和看不见的细胞状态中推广。我们将我们的方法与其他11种使用内部和公共数据集的伪时间方法进行了比较,发现线性和分支轨迹的性能都非常好。TimeFlow的伪时间排序对于沿着线性轨迹建模细胞表面蛋白质的动力学非常有用。分支轨迹的生物学意义结果表明,自动化细胞谱系检测的未来应用的可能性。代码可从https://github.com/MargaritaLiarou1/TimeFlow获得,数据可从https://osf.io/ykue7/获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

TimeFlow: A Density-Driven Pseudotime Method for Flow Cytometry Data Analysis

TimeFlow: A Density-Driven Pseudotime Method for Flow Cytometry Data Analysis

Pseudotime methods order cells undergoing differentiation from the least to the most differentiated. We developed TimeFlow, a new method for computing pseudotime in multi-dimensional flow cytometry datasets. TimeFlow tracks the differentiation path of each cell on a graph by following smooth changes in the cell population density. To compute the probability density function of the cells, it uses a normalizing flow model. We profiled bone marrow samples from three healthy patients using a 20-color antibody panel for flow cytometry and prepared datasets that ranged from 5,000 to 600,000 cells and included monocytes, neutrophils, erythrocytes, and B-cells at various maturation stages. TimeFlow computed fine-grained pseudotime for all the datasets, and the cell orderings were consistent with prior knowledge of human hematopoiesis. Experiments showed its potential in generalizing across patients and unseen cell states. We compared our method to 11 other pseudotime methods using in-house and public datasets and found very good performance for both linear and branching trajectories. TimeFlow's pseudotemporal orderings are useful for modeling the dynamics of cell surface proteins along linear trajectories. The biologically meaningful results in branching trajectories suggest the possibility of future applications with automated cell lineage detection. Code is available at https://github.com/MargaritaLiarou1/TimeFlow and data at https://osf.io/ykue7/.

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来源期刊
Cytometry Part A
Cytometry Part A 生物-生化研究方法
CiteScore
8.10
自引率
13.50%
发文量
183
审稿时长
4-8 weeks
期刊介绍: Cytometry Part A, the journal of quantitative single-cell analysis, features original research reports and reviews of innovative scientific studies employing quantitative single-cell measurement, separation, manipulation, and modeling techniques, as well as original articles on mechanisms of molecular and cellular functions obtained by cytometry techniques. The journal welcomes submissions from multiple research fields that fully embrace the study of the cytome: Biomedical Instrumentation Engineering Biophotonics Bioinformatics Cell Biology Computational Biology Data Science Immunology Parasitology Microbiology Neuroscience Cancer Stem Cells Tissue Regeneration.
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