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使用荧光流式细胞术数据进行细菌单细胞基因表达分析。

Using fluorescence flow cytometry data for single-cell gene expression analysis in bacteria.

机构信息

Biozentrum, University of Basel, Basel, Switzerland.

Swiss Institute of Bioinformatics, Lausanne, Switzerland.

出版信息

PLoS One. 2020 Oct 12;15(10):e0240233. doi: 10.1371/journal.pone.0240233. eCollection 2020.

Abstract

Fluorescence flow cytometry is increasingly being used to quantify single-cell expression distributions in bacteria in high-throughput. However, there has been no systematic investigation into the best practices for quantitative analysis of such data, what systematic biases exist, and what accuracy and sensitivity can be obtained. We investigate these issues by measuring the same E. coli strains carrying fluorescent reporters using both flow cytometry and microscopic setups and systematically comparing the resulting single-cell expression distributions. Using these results, we develop methods for rigorous quantitative inference of single-cell expression distributions from fluorescence flow cytometry data. First, we present a Bayesian mixture model to separate debris from viable cells using all scattering signals. Second, we show that cytometry measurements of fluorescence are substantially affected by autofluorescence and shot noise, which can be mistaken for intrinsic noise in gene expression, and present methods to correct for these using calibration measurements. Finally, we show that because forward- and side-scatter signals scale non-linearly with cell size, and are also affected by a substantial shot noise component that cannot be easily calibrated unless independent measurements of cell size are available, it is not possible to accurately estimate the variability in the sizes of individual cells using flow cytometry measurements alone. To aid other researchers with quantitative analysis of flow cytometry expression data in bacteria, we distribute E-Flow, an open-source R package that implements our methods for filtering debris and for estimating true biological expression means and variances from the fluorescence signal. The package is available at https://github.com/vanNimwegenLab/E-Flow.

摘要

荧光流式细胞术越来越多地被用于高通量地定量细菌中单细胞的表达分布。然而,对于这种数据的定量分析的最佳实践、存在哪些系统偏差以及可以获得什么样的准确性和灵敏度,还没有进行系统的研究。我们通过使用流式细胞术和显微镜设备测量相同的携带荧光报告基因的大肠杆菌菌株,并系统地比较由此产生的单细胞表达分布,来研究这些问题。利用这些结果,我们开发了从荧光流式细胞术数据中进行严格的单细胞表达分布定量推断的方法。首先,我们提出了一种贝叶斯混合模型,该模型使用所有散射信号将碎片与活细胞分离。其次,我们表明,荧光的细胞术测量受到自发荧光和散粒噪声的显著影响,这些噪声可能会被误认为是基因表达的固有噪声,并提出了使用校准测量来校正这些噪声的方法。最后,我们表明,由于前向散射和侧向散射信号与细胞大小呈非线性关系,并且还受到大量不能轻易校准的散粒噪声成分的影响,除非有独立的细胞大小测量,否则不可能仅通过流式细胞术测量准确估计单个细胞大小的变化。为了帮助其他研究人员对细菌中的流式细胞术表达数据进行定量分析,我们分发了 E-Flow,这是一个开源的 R 包,实现了我们用于过滤碎片以及从荧光信号估计真实生物学表达均值和方差的方法。该软件包可在 https://github.com/vanNimwegenLab/E-Flow 上获得。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d7a9/7549788/acb36558b6db/pone.0240233.g001.jpg

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