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A Computational Pipeline for the Diagnosis of CVID Patients

Common variable immunodeficiency (CVID) is one of the most frequently diagnosed primary antibody deficiencies (PADs), a group of disorders characterized by a decrease in one or more immunoglobulin (sub)classes and/or impaired antibody responses caused by inborn defects in B cells in the absence of o...

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Autores principales: Emmaneel, Annelies, Bogaert, Delfien J., Van Gassen, Sofie, Tavernier, Simon J., Dullaers, Melissa, Haerynck, Filomeen, Saeys, Yvan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6730493/
https://www.ncbi.nlm.nih.gov/pubmed/31543876
http://dx.doi.org/10.3389/fimmu.2019.02009
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author Emmaneel, Annelies
Bogaert, Delfien J.
Van Gassen, Sofie
Tavernier, Simon J.
Dullaers, Melissa
Haerynck, Filomeen
Saeys, Yvan
author_facet Emmaneel, Annelies
Bogaert, Delfien J.
Van Gassen, Sofie
Tavernier, Simon J.
Dullaers, Melissa
Haerynck, Filomeen
Saeys, Yvan
author_sort Emmaneel, Annelies
collection PubMed
description Common variable immunodeficiency (CVID) is one of the most frequently diagnosed primary antibody deficiencies (PADs), a group of disorders characterized by a decrease in one or more immunoglobulin (sub)classes and/or impaired antibody responses caused by inborn defects in B cells in the absence of other major immune defects. CVID patients suffer from recurrent infections and disease-related, non-infectious, complications such as autoimmune manifestations, lymphoproliferation, and malignancies. A timely diagnosis is essential for optimal follow-up and treatment. However, CVID is by definition a diagnosis of exclusion, thereby covering a heterogeneous patient population and making it difficult to establish a definite diagnosis. To aid the diagnosis of CVID patients, and distinguish them from other PADs, we developed an automated machine learning pipeline which performs automated diagnosis based on flow cytometric immunophenotyping. Using this pipeline, we analyzed the immunophenotypic profile in a pediatric and adult cohort of 28 patients with CVID, 23 patients with idiopathic primary hypogammaglobulinemia, 21 patients with IgG subclass deficiency, six patients with isolated IgA deficiency, one patient with isolated IgM deficiency, and 100 unrelated healthy controls. Flow cytometry analysis is traditionally done by manual identification of the cell populations of interest. Yet, this approach has severe limitations including subjectivity of the manual gating and bias toward known populations. To overcome these limitations, we here propose an automated computational flow cytometry pipeline that successfully distinguishes CVID phenotypes from other PADs and healthy controls. Compared to the traditional, manual analysis, our pipeline is fully automated, performing automated quality control and data pre-processing, automated population identification (gating) and deriving features from these populations to build a machine learning classifier to distinguish CVID from other PADs and healthy controls. This results in a more reproducible flow cytometry analysis, and improves the diagnosis compared to manual analysis: our pipelines achieve on average a balanced accuracy score of 0.93 (±0.07), whereas using the manually extracted populations, an averaged balanced accuracy score of 0.72 (±0.23) is achieved.
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spelling pubmed-67304932019-09-20 A Computational Pipeline for the Diagnosis of CVID Patients Emmaneel, Annelies Bogaert, Delfien J. Van Gassen, Sofie Tavernier, Simon J. Dullaers, Melissa Haerynck, Filomeen Saeys, Yvan Front Immunol Immunology Common variable immunodeficiency (CVID) is one of the most frequently diagnosed primary antibody deficiencies (PADs), a group of disorders characterized by a decrease in one or more immunoglobulin (sub)classes and/or impaired antibody responses caused by inborn defects in B cells in the absence of other major immune defects. CVID patients suffer from recurrent infections and disease-related, non-infectious, complications such as autoimmune manifestations, lymphoproliferation, and malignancies. A timely diagnosis is essential for optimal follow-up and treatment. However, CVID is by definition a diagnosis of exclusion, thereby covering a heterogeneous patient population and making it difficult to establish a definite diagnosis. To aid the diagnosis of CVID patients, and distinguish them from other PADs, we developed an automated machine learning pipeline which performs automated diagnosis based on flow cytometric immunophenotyping. Using this pipeline, we analyzed the immunophenotypic profile in a pediatric and adult cohort of 28 patients with CVID, 23 patients with idiopathic primary hypogammaglobulinemia, 21 patients with IgG subclass deficiency, six patients with isolated IgA deficiency, one patient with isolated IgM deficiency, and 100 unrelated healthy controls. Flow cytometry analysis is traditionally done by manual identification of the cell populations of interest. Yet, this approach has severe limitations including subjectivity of the manual gating and bias toward known populations. To overcome these limitations, we here propose an automated computational flow cytometry pipeline that successfully distinguishes CVID phenotypes from other PADs and healthy controls. Compared to the traditional, manual analysis, our pipeline is fully automated, performing automated quality control and data pre-processing, automated population identification (gating) and deriving features from these populations to build a machine learning classifier to distinguish CVID from other PADs and healthy controls. This results in a more reproducible flow cytometry analysis, and improves the diagnosis compared to manual analysis: our pipelines achieve on average a balanced accuracy score of 0.93 (±0.07), whereas using the manually extracted populations, an averaged balanced accuracy score of 0.72 (±0.23) is achieved. Frontiers Media S.A. 2019-08-30 /pmc/articles/PMC6730493/ /pubmed/31543876 http://dx.doi.org/10.3389/fimmu.2019.02009 Text en Copyright © 2019 Emmaneel, Bogaert, Van Gassen, Tavernier, Dullaers, Haerynck and Saeys. 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) and the copyright owner(s) 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
Emmaneel, Annelies
Bogaert, Delfien J.
Van Gassen, Sofie
Tavernier, Simon J.
Dullaers, Melissa
Haerynck, Filomeen
Saeys, Yvan
A Computational Pipeline for the Diagnosis of CVID Patients
title A Computational Pipeline for the Diagnosis of CVID Patients
title_full A Computational Pipeline for the Diagnosis of CVID Patients
title_fullStr A Computational Pipeline for the Diagnosis of CVID Patients
title_full_unstemmed A Computational Pipeline for the Diagnosis of CVID Patients
title_short A Computational Pipeline for the Diagnosis of CVID Patients
title_sort computational pipeline for the diagnosis of cvid patients
topic Immunology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6730493/
https://www.ncbi.nlm.nih.gov/pubmed/31543876
http://dx.doi.org/10.3389/fimmu.2019.02009
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