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

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...

Full description

Bibliographic Details
Main Authors: Luca Galbusera, Gwendoline Bellement-Theroue, Arantxa Urchueguia, Thomas Julou, Erik van Nimwegen
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2020-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0240233
id doaj-ae0dd100b95d4499a8dcc13f935111f2
record_format Article
spelling doaj-ae0dd100b95d4499a8dcc13f935111f22021-03-04T11:10:46ZengPublic Library of Science (PLoS)PLoS ONE1932-62032020-01-011510e024023310.1371/journal.pone.0240233Using fluorescence flow cytometry data for single-cell gene expression analysis in bacteria.Luca GalbuseraGwendoline Bellement-TheroueArantxa UrchueguiaThomas JulouErik van NimwegenFluorescence 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.https://doi.org/10.1371/journal.pone.0240233
collection DOAJ
language English
format Article
sources DOAJ
author Luca Galbusera
Gwendoline Bellement-Theroue
Arantxa Urchueguia
Thomas Julou
Erik van Nimwegen
spellingShingle Luca Galbusera
Gwendoline Bellement-Theroue
Arantxa Urchueguia
Thomas Julou
Erik van Nimwegen
Using fluorescence flow cytometry data for single-cell gene expression analysis in bacteria.
PLoS ONE
author_facet Luca Galbusera
Gwendoline Bellement-Theroue
Arantxa Urchueguia
Thomas Julou
Erik van Nimwegen
author_sort Luca Galbusera
title Using fluorescence flow cytometry data for single-cell gene expression analysis in bacteria.
title_short Using fluorescence flow cytometry data for single-cell gene expression analysis in bacteria.
title_full Using fluorescence flow cytometry data for single-cell gene expression analysis in bacteria.
title_fullStr Using fluorescence flow cytometry data for single-cell gene expression analysis in bacteria.
title_full_unstemmed Using fluorescence flow cytometry data for single-cell gene expression analysis in bacteria.
title_sort using fluorescence flow cytometry data for single-cell gene expression analysis in bacteria.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2020-01-01
description 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.
url https://doi.org/10.1371/journal.pone.0240233
work_keys_str_mv AT lucagalbusera usingfluorescenceflowcytometrydataforsinglecellgeneexpressionanalysisinbacteria
AT gwendolinebellementtheroue usingfluorescenceflowcytometrydataforsinglecellgeneexpressionanalysisinbacteria
AT arantxaurchueguia usingfluorescenceflowcytometrydataforsinglecellgeneexpressionanalysisinbacteria
AT thomasjulou usingfluorescenceflowcytometrydataforsinglecellgeneexpressionanalysisinbacteria
AT erikvannimwegen usingfluorescenceflowcytometrydataforsinglecellgeneexpressionanalysisinbacteria
_version_ 1714804679265746944