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Hidden Patterns of Anti-HLA Class I Alloreactivity Revealed Through Machine Learning
- Source :
- Frontiers in Immunology, Frontiers in Immunology, Frontiers, 2021, 12, pp.670956. ⟨10.3389/fimmu.2021.670956⟩, Frontiers in Immunology, Vol 12 (2021)
- Publication Year :
- 2021
- Publisher :
- Frontiers Media SA, 2021.
-
Abstract
- Detection of alloreactive anti-HLA antibodies is a frequent and mandatory test before and after organ transplantation to determine the antigenic targets of the antibodies. Nowadays, this test involves the measurement of fluorescent signals generated through antibody–antigen reactions on multi-beads flow cytometers. In this study, in a cohort of 1,066 patients from one country, anti-HLA class I responses were analyzed on a panel of 98 different antigens. Knowing that the immune system responds typically to “shared” antigenic targets, we studied the clustering patterns of antibody responses against HLA class I antigens without any a priori hypothesis, applying two unsupervised machine learning approaches. At first, the principal component analysis (PCA) projections of intra-locus specific responses showed that anti-HLA-A and anti-HLA-C were the most distantly projected responses in the population with the anti-HLA-B responses to be projected between them. When PCA was applied on the responses against antigens belonging to a single locus, some already known groupings were confirmed while several new cross-reactive patterns of alloreactivity were detected. Anti-HLA-A responses projected through PCA suggested that three cross-reactive groups accounted for about 70% of the variance observed in the population, while anti-HLA-B responses were mainly characterized by a distinction between previously described Bw4 and Bw6 cross-reactive groups followed by several yet undocumented or poorly described ones. Furthermore, anti-HLA-C responses could be explained by two major cross-reactive groups completely overlapping with previously described C1 and C2 allelic groups. A second feature-based analysis of all antigenic specificities, projected as a dendrogram, generated a robust measure of allelic antigenic distances depicting bead-array defined cross reactive groups. Finally, amino acid combinations explaining major population specific cross-reactive groups were described. The interpretation of the results was based on the current knowledge of the antigenic targets of the antibodies as they have been characterized either experimentally or computationally and appear at the HLA epitope registry.
- Subjects :
- 0301 basic medicine
MESH: Registries
sensitization
Epitope
Cohort Studies
MESH: Cross Reactions
Epitopes
0302 clinical medicine
Isoantibodies
Feature (machine learning)
Immunology and Allergy
bead array test
Registries
MESH: Cohort Studies
Original Research
MESH: Aged
Principal Component Analysis
education.field_of_study
MESH: Middle Aged
MESH: Machine Learning
biology
Middle Aged
3. Good health
machine learning
Principal component analysis
[SDV.IMM]Life Sciences [q-bio]/Immunology
Antibody
MESH: Computational Biology
Adult
MESH: Epitopes
Immunology
Population
MESH: Organ Transplantation
HLA-C Antigens
Human leukocyte antigen
Computational biology
Cross Reactions
03 medical and health sciences
Antigen
Transplantation Immunology
Humans
machine learning, antigenic epitopes, alloimmune response, translational research, sensitization, bead array test, anti-HLA alloantibodies
ddc:610
MESH: Transplantation Immunology
Allele
education
MESH: HLA-A Antigens
Aged
MESH: Principal Component Analysis
MESH: Humans
HLA-A Antigens
Computational Biology
antigenic epitopes
alloimmune response
MESH: Adult
Organ Transplantation
RC581-607
anti-HLA alloantibodies
MESH: Isoantibodies
MESH: HLA-C Antigens
030104 developmental biology
translational research
HLA-B Antigens
MESH: HLA-B Antigens
biology.protein
Immunologic diseases. Allergy
030215 immunology
Subjects
Details
- ISSN :
- 16643224
- Volume :
- 12
- Database :
- OpenAIRE
- Journal :
- Frontiers in Immunology
- Accession number :
- edsair.doi.dedup.....055a81ede2e1ab701361e271f4fa980d
- Full Text :
- https://doi.org/10.3389/fimmu.2021.670956