Automated flow cytometry enables high performance point-of-care analysis of leukocyte phenotypes

J Immunol Methods. 2019 Nov:474:112646. doi: 10.1016/j.jim.2019.112646. Epub 2019 Aug 13.

Abstract

Introduction: Phagocytes such as granulocytes and monocytes are fundamental players in the innate immune system. Activation of these cells can be quantified by the measurement of activation marker expression using flow cytometry. Analysis of receptor expression on inflammatory cells facilitates the diagnosis of inflammatory diseases and can be used to determine the extent of inflammation. However, several major limitations of this analysis precludes application of inflammation monitoring in clinical practice. Fast and automated analysis would minimalize ex vivo manipulation and allow reproducible processing. The aim of this study was to evaluate a fully automated "load & go" flow cytometer for analyzing activation of granulocytes and monocytes in a clinically applicable setting.

Methods: Blood samples were obtained from 10 anonymous and healthy volunteers between the age of 18 and 65 years. Granulocyte and monocyte activation was determined by the use of the markers CD35, CD11b and CD10 measured in the automated AQUIOS CL® "load & go" flow cytometer. This machine is able to pierce the tube caps, add antibodies, lyse and measure the sample within 20 min after vena puncture. Reproducibility tests were performed to test the stability of activation marker expression on phagocytes. The expression of activation markers was measured at different time points after blood drawing to analyze the effect of bench time on granulocyte and monocyte activation.

Results: The duplicate experiments demonstrate a high reproducibility of the measurements of the activation state of phagocytes. Healthy controls showed a very homogenous expression of activation markers at T = 0 (immediately after vena puncture). Activation markers on neutrophils were already significantly increased after 1 h (T = 1) depicted as means (95%Cl) CD35: 2.2× (1.5×-2.5×) p = .028, CD11b: 2.5× (1.7×-3.1×) p = .023, CD10: 2.5× (2.1×-2.7×) p = .009) and a further increase in activation markers was observed after 2 and 3 h. Monocytes also showed a increase in activation markers in 1 h (mean (95%Cl) CD35: 1.8× (1.3×-2.2×) p = .058, CD11b: 2.13× (1.6×-2.4×) p = .025) and also a further significant increase in 2 and 3 h was observed.

Conclusion: This study showed that bench time of one hour already leads to a significant upregulation and bigger variance in activation markers of granulocytes and monocytes. In addition, it is likely that automated flow cytometry reduces intra-assay variability in the analysis of activation markers on inflammatory cells. Therefore, we found that it is of utmost importance to perform immune activation analysis as fast as possible to prevent drawing wrong conclusions. Automated flow cytometry is able to reduce this analysis from 2 h to only 15-20 min without the need of dedicated personnel and in a point-of-care context. This now allows fast and automated inflammation monitoring in blood samples obtained from a variety of patient groups. FUND: This research did not receive any specific grant from funding agencies in the public, commercial, or not-for-profit sectors.

Keywords: Activation antibodies; Fast analysis; Flow cytometry; Inflammatory cells; Phagocytes; Point-of-care.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Adolescent
  • Adult
  • Aged
  • Automation, Laboratory
  • Biomarkers / blood
  • CD11b Antigen / blood*
  • Female
  • Flow Cytometry* / instrumentation
  • Healthy Volunteers
  • Humans
  • Immunophenotyping / instrumentation
  • Immunophenotyping / methods*
  • Leukocytes / immunology
  • Leukocytes / metabolism*
  • Male
  • Middle Aged
  • Monocytes / immunology
  • Monocytes / metabolism
  • Neprilysin / blood*
  • Neutrophil Activation
  • Neutrophils / immunology
  • Neutrophils / metabolism
  • Phagocytes / immunology
  • Phagocytes / metabolism
  • Phenotype
  • Point-of-Care Systems*
  • Point-of-Care Testing*
  • Predictive Value of Tests
  • Receptors, Complement 3b / blood*
  • Reproducibility of Results
  • Time Factors
  • Workflow
  • Young Adult

Substances

  • Biomarkers
  • CD11b Antigen
  • CR1 protein, human
  • ITGAM protein, human
  • Receptors, Complement 3b
  • Neprilysin