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Handbook of ELISPOT

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Cover of 'Handbook of ELISPOT'

Table of Contents

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    Book Overview
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    Chapter 1 Challenges in Developing Protein Secretion Assays at a Single-Cell Level
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    Chapter 2 Mastering the Computational Challenges of Elispot Plate Evaluation
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    Chapter 3 Essential Controls for ELISpot Assay
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    Chapter 4 Automatic Search of Spots and Color Classification in ELISPOT Assay
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    Chapter 5 Four Color ImmunoSpot ® Assays for Identification of Effector T-Cell Lineages
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    Chapter 6 Detection of Cross-Reactive B Cells Using the FluoroSpot Assay
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    Chapter 7 Multiplex ImmunoSpot® Assays for the Study of Functional B Cell Subpopulations
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    Chapter 8 Detecting all Immunoglobulin Classes and Subclasses in a Multiplex 7 Color ImmunoSpot® Assay
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    Chapter 9 Multiplexing T- and B-Cell FLUOROSPOT Assays: Experimental Validation of the Multi-Color ImmunoSpot ® Software Based on Center of Mass Distance Algorithm
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    Chapter 10 Multi-Color FLUOROSPOT Counting Using ImmunoSpot ® Fluoro-X™ Suite
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    Chapter 11 B-Cell ELISpot Assay to Quantify Antigen-Specific Antibody-Secreting Cells in Human Peripheral Blood Mononuclear Cells
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    Chapter 12 Identification of Novel Mycobacterial Targets for Murine CD4 + T-Cells by IFNγ ELISPOT
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    Chapter 13 ELISPOT-Based “Multi-Color FluoroSpot” to Study Type-Specific and Cross-Reactive Responses in Memory B Cells after Dengue and Zika Virus Infections
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    Chapter 14 Cultured ELISpot Assay to Investigate Dengue Virus Specific T-Cell Responses
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    Chapter 15 Ex Vivo ELISpot Assay to Investigate Dengue Virus Specific T-Cell Responses
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    Chapter 16 Ex Vivo ELISpot Assay to Investigate iNKT Cell Responses in Acute Dengue Infection
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    Chapter 17 Dendritic Cell-Based ELISpot Assay for Assessing T-Cell IFN-γ Responses in Human Peripheral Blood Mononuclear Cells to Dengue Envelope Proteins
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    Chapter 18 Utilization of Feline ELISpot to Evaluate the Immunogenicity of a T Cell-Based FIV MAP Vaccine
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    Chapter 19 Detection and Quantification of Influenza A/H1N1 Virus-Specific Memory B Cells in Human PBMCs Using ELISpot Assay
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    Chapter 20 Towards a Full Automation of the ELISpot Assay for Safe and Parallelized Immunomonitoring
Attention for Chapter 9: Multiplexing T- and B-Cell FLUOROSPOT Assays: Experimental Validation of the Multi-Color ImmunoSpot ® Software Based on Center of Mass Distance Algorithm
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Chapter title
Multiplexing T- and B-Cell FLUOROSPOT Assays: Experimental Validation of the Multi-Color ImmunoSpot ® Software Based on Center of Mass Distance Algorithm
Chapter number 9
Book title
Handbook of ELISPOT
Published in
Methods in molecular biology, January 2018
DOI 10.1007/978-1-4939-8567-8_9
Pubmed ID
Book ISBNs
978-1-4939-8566-1, 978-1-4939-8567-8
Authors

Alexey Y. Karulin, Zoltán Megyesi, Richard Caspell, Jodi Hanson, Paul V. Lehmann, Karulin, Alexey Y., Megyesi, Zoltán, Caspell, Richard, Hanson, Jodi, Lehmann, Paul V.

Abstract

Over the past decade, ELISPOT has become a highly implemented mainstream assay in immunological research, immune monitoring, and vaccine development. Unique single cell resolution along with high throughput potential sets ELISPOT apart from flow cytometry, ELISA, microarray- and bead-based multiplex assays. The necessity to unambiguously identify individual T and B cells that do, or do not co-express certain analytes, including polyfunctional cytokine producing T cells has stimulated the development of multi-color ELISPOT assays. The success of these assays has also been driven by limited sample/cell availability and resource constraints with reagents and labor. There are few commercially available test kits and instruments available at present for multi-color FLUOROSPOT. Beyond commercial descriptions of competing systems, little is known about their accuracy in experimental settings detecting individual cells that secrete multiple analytes vs. random overlays of spots. Here, we present a theoretical and experimental validation study for three and four color T- and B-cell FLUOROSPOT data analysis. The ImmunoSpot® Fluoro-X™ analysis system we used includes an automatic image acquisition unit that generates individual color images free of spectral overlaps and multi-color spot counting software based on the maximal allowed distance between centers of spots of different colors or Center of Mass Distance (COMD). Using four color B-cell FLUOROSPOT for IgM, IgA, IgG1, IgG3; and three/four color T-cell FLUOROSPOT for IL-2, IFN-γ, TNF-α, and GzB, in serial dilution experiments, we demonstrate the validity and accuracy of Fluoro-X™ multi-color spot counting algorithms. Statistical predictions based on the Poisson spatial distribution, coupled with scrambled image counting, permit objective correction of true multi-color spot counts to exclude randomly overlaid spots.

Mendeley readers

Mendeley readers

The data shown below were compiled from readership statistics for 7 Mendeley readers of this research output. Click here to see the associated Mendeley record.

Geographical breakdown

Country Count As %
Unknown 7 100%

Demographic breakdown

Readers by professional status Count As %
Researcher 1 14%
Student > Doctoral Student 1 14%
Student > Bachelor 1 14%
Professor 1 14%
Student > Ph. D. Student 1 14%
Other 1 14%
Unknown 1 14%
Readers by discipline Count As %
Immunology and Microbiology 3 43%
Pharmacology, Toxicology and Pharmaceutical Science 1 14%
Biochemistry, Genetics and Molecular Biology 1 14%
Engineering 1 14%
Unknown 1 14%