Cargando…

Automated Analysis of Flow Cytometry Data to Reduce Inter-Lab Variation in the Detection of Major Histocompatibility Complex Multimer-Binding T Cells

Manual analysis of flow cytometry data and subjective gate-border decisions taken by individuals continue to be a source of variation in the assessment of antigen-specific T cells when comparing data across laboratories, and also over time in individual labs. Therefore, strategies to provide automat...

Descripción completa

Detalles Bibliográficos
Autores principales: Pedersen, Natasja Wulff, Chandran, P. Anoop, Qian, Yu, Rebhahn, Jonathan, Petersen, Nadia Viborg, Hoff, Mathilde Dalsgaard, White, Scott, Lee, Alexandra J., Stanton, Rick, Halgreen, Charlotte, Jakobsen, Kivin, Mosmann, Tim, Gouttefangeas, Cécile, Chan, Cliburn, Scheuermann, Richard H., Hadrup, Sine Reker
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5526901/
https://www.ncbi.nlm.nih.gov/pubmed/28798746
http://dx.doi.org/10.3389/fimmu.2017.00858
_version_ 1783252871635009536
author Pedersen, Natasja Wulff
Chandran, P. Anoop
Qian, Yu
Rebhahn, Jonathan
Petersen, Nadia Viborg
Hoff, Mathilde Dalsgaard
White, Scott
Lee, Alexandra J.
Stanton, Rick
Halgreen, Charlotte
Jakobsen, Kivin
Mosmann, Tim
Gouttefangeas, Cécile
Chan, Cliburn
Scheuermann, Richard H.
Hadrup, Sine Reker
author_facet Pedersen, Natasja Wulff
Chandran, P. Anoop
Qian, Yu
Rebhahn, Jonathan
Petersen, Nadia Viborg
Hoff, Mathilde Dalsgaard
White, Scott
Lee, Alexandra J.
Stanton, Rick
Halgreen, Charlotte
Jakobsen, Kivin
Mosmann, Tim
Gouttefangeas, Cécile
Chan, Cliburn
Scheuermann, Richard H.
Hadrup, Sine Reker
author_sort Pedersen, Natasja Wulff
collection PubMed
description Manual analysis of flow cytometry data and subjective gate-border decisions taken by individuals continue to be a source of variation in the assessment of antigen-specific T cells when comparing data across laboratories, and also over time in individual labs. Therefore, strategies to provide automated analysis of major histocompatibility complex (MHC) multimer-binding T cells represent an attractive solution to decrease subjectivity and technical variation. The challenge of using an automated analysis approach is that MHC multimer-binding T cell populations are often rare and therefore difficult to detect. We used a highly heterogeneous dataset from a recent MHC multimer proficiency panel to assess if MHC multimer-binding CD8(+) T cells could be analyzed with computational solutions currently available, and if such analyses would reduce the technical variation across different laboratories. We used three different methods, FLOw Clustering without K (FLOCK), Scalable Weighted Iterative Flow-clustering Technique (SWIFT), and ReFlow to analyze flow cytometry data files from 28 laboratories. Each laboratory screened for antigen-responsive T cell populations with frequency ranging from 0.01 to 1.5% of lymphocytes within samples from two donors. Experience from this analysis shows that all three programs can be used for the identification of high to intermediate frequency of MHC multimer-binding T cell populations, with results very similar to that of manual gating. For the less frequent populations (<0.1% of live, single lymphocytes), SWIFT outperformed the other tools. As used in this study, none of the algorithms offered a completely automated pipeline for identification of MHC multimer populations, as varying degrees of human interventions were needed to complete the analysis. In this study, we demonstrate the feasibility of using automated analysis pipelines for assessing and identifying even rare populations of antigen-responsive T cells and discuss the main properties, differences, and advantages of the different methods tested.
format Online
Article
Text
id pubmed-5526901
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher Frontiers Media S.A.
record_format MEDLINE/PubMed
spelling pubmed-55269012017-08-10 Automated Analysis of Flow Cytometry Data to Reduce Inter-Lab Variation in the Detection of Major Histocompatibility Complex Multimer-Binding T Cells Pedersen, Natasja Wulff Chandran, P. Anoop Qian, Yu Rebhahn, Jonathan Petersen, Nadia Viborg Hoff, Mathilde Dalsgaard White, Scott Lee, Alexandra J. Stanton, Rick Halgreen, Charlotte Jakobsen, Kivin Mosmann, Tim Gouttefangeas, Cécile Chan, Cliburn Scheuermann, Richard H. Hadrup, Sine Reker Front Immunol Immunology Manual analysis of flow cytometry data and subjective gate-border decisions taken by individuals continue to be a source of variation in the assessment of antigen-specific T cells when comparing data across laboratories, and also over time in individual labs. Therefore, strategies to provide automated analysis of major histocompatibility complex (MHC) multimer-binding T cells represent an attractive solution to decrease subjectivity and technical variation. The challenge of using an automated analysis approach is that MHC multimer-binding T cell populations are often rare and therefore difficult to detect. We used a highly heterogeneous dataset from a recent MHC multimer proficiency panel to assess if MHC multimer-binding CD8(+) T cells could be analyzed with computational solutions currently available, and if such analyses would reduce the technical variation across different laboratories. We used three different methods, FLOw Clustering without K (FLOCK), Scalable Weighted Iterative Flow-clustering Technique (SWIFT), and ReFlow to analyze flow cytometry data files from 28 laboratories. Each laboratory screened for antigen-responsive T cell populations with frequency ranging from 0.01 to 1.5% of lymphocytes within samples from two donors. Experience from this analysis shows that all three programs can be used for the identification of high to intermediate frequency of MHC multimer-binding T cell populations, with results very similar to that of manual gating. For the less frequent populations (<0.1% of live, single lymphocytes), SWIFT outperformed the other tools. As used in this study, none of the algorithms offered a completely automated pipeline for identification of MHC multimer populations, as varying degrees of human interventions were needed to complete the analysis. In this study, we demonstrate the feasibility of using automated analysis pipelines for assessing and identifying even rare populations of antigen-responsive T cells and discuss the main properties, differences, and advantages of the different methods tested. Frontiers Media S.A. 2017-07-26 /pmc/articles/PMC5526901/ /pubmed/28798746 http://dx.doi.org/10.3389/fimmu.2017.00858 Text en Copyright © 2017 Pedersen, Chandran, Qian, Rebhahn, Petersen, Hoff, White, Lee, Stanton, Halgreen, Jakobsen, Mosmann, Gouttefangeas, Chan, Scheuermann and Hadrup. http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Immunology
Pedersen, Natasja Wulff
Chandran, P. Anoop
Qian, Yu
Rebhahn, Jonathan
Petersen, Nadia Viborg
Hoff, Mathilde Dalsgaard
White, Scott
Lee, Alexandra J.
Stanton, Rick
Halgreen, Charlotte
Jakobsen, Kivin
Mosmann, Tim
Gouttefangeas, Cécile
Chan, Cliburn
Scheuermann, Richard H.
Hadrup, Sine Reker
Automated Analysis of Flow Cytometry Data to Reduce Inter-Lab Variation in the Detection of Major Histocompatibility Complex Multimer-Binding T Cells
title Automated Analysis of Flow Cytometry Data to Reduce Inter-Lab Variation in the Detection of Major Histocompatibility Complex Multimer-Binding T Cells
title_full Automated Analysis of Flow Cytometry Data to Reduce Inter-Lab Variation in the Detection of Major Histocompatibility Complex Multimer-Binding T Cells
title_fullStr Automated Analysis of Flow Cytometry Data to Reduce Inter-Lab Variation in the Detection of Major Histocompatibility Complex Multimer-Binding T Cells
title_full_unstemmed Automated Analysis of Flow Cytometry Data to Reduce Inter-Lab Variation in the Detection of Major Histocompatibility Complex Multimer-Binding T Cells
title_short Automated Analysis of Flow Cytometry Data to Reduce Inter-Lab Variation in the Detection of Major Histocompatibility Complex Multimer-Binding T Cells
title_sort automated analysis of flow cytometry data to reduce inter-lab variation in the detection of major histocompatibility complex multimer-binding t cells
topic Immunology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5526901/
https://www.ncbi.nlm.nih.gov/pubmed/28798746
http://dx.doi.org/10.3389/fimmu.2017.00858
work_keys_str_mv AT pedersennatasjawulff automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT chandranpanoop automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT qianyu automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT rebhahnjonathan automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT petersennadiaviborg automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT hoffmathildedalsgaard automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT whitescott automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT leealexandraj automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT stantonrick automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT halgreencharlotte automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT jakobsenkivin automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT mosmanntim automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT gouttefangeascecile automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT chancliburn automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT scheuermannrichardh automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells
AT hadrupsinereker automatedanalysisofflowcytometrydatatoreduceinterlabvariationinthedetectionofmajorhistocompatibilitycomplexmultimerbindingtcells