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Biomarkers of AIT: Models of prediction of efficacy

Allergic rhinitis is an IgE-mediated inflammation that remains a clinical challenge, affecting 40% of the UK population with a wide range of severity from nasal discomfort to life-threatening anaphylaxis. It can be managed by pharmacotherapeutics and in selected patients by allergen immunotherapy (A...

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Autores principales: Tan, Tiak Ju, Delgado-Dolset, María I., Escribese, María M., Barber, Domingo, Layhadi, Janice A., Shamji, Mohamed H.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Dustri-Verlag Dr. Karl Feistle 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9707369/
https://www.ncbi.nlm.nih.gov/pubmed/36457722
http://dx.doi.org/10.5414/ALX02333E
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author Tan, Tiak Ju
Delgado-Dolset, María I.
Escribese, María M.
Barber, Domingo
Layhadi, Janice A.
Shamji, Mohamed H.
author_facet Tan, Tiak Ju
Delgado-Dolset, María I.
Escribese, María M.
Barber, Domingo
Layhadi, Janice A.
Shamji, Mohamed H.
author_sort Tan, Tiak Ju
collection PubMed
description Allergic rhinitis is an IgE-mediated inflammation that remains a clinical challenge, affecting 40% of the UK population with a wide range of severity from nasal discomfort to life-threatening anaphylaxis. It can be managed by pharmacotherapeutics and in selected patients by allergen immunotherapy (AIT), which provides long-term clinical efficacy, especially during peak allergy season. However, there are no definitive biomarkers for AIT efficacy. Here, we aim to summarize the key adaptive, innate, humoral, and metabolic advances in biomarker identification in response to AIT. Mechanisms of efficacy consist of an immune deviation towards T(H)1-secreting IFN-γ, as well as an induction of IL10(+) cT(FR) and T(REG) have been observed. T(H)2 cells undergo exhaustion after AIT due to chronic allergen exposure and correlates with the exhaustion markers PD-1, CTLA-4, TIGIT, and LAG3. IL10(+) DC(REG) expressing C1Q and STAB are induced. KLRG1(+) IL10(+) ILC2 were shown to be induced in AIT in correlation with efficacy. B(REG) cells secreting IL-10, IL-35, and TGF-β are induced. Blocking antibodies IgG, IgA, and IgG4 are increased during AIT; whereas inflammatory metabolites, such as eicosanoids, are reduced. There are multiple promising biomarkers for AIT currently being evaluated. A panomic approach is essential to better understand cellular, molecular mechanisms and their correlation with clinical outcomes. Identification of predictive biomarkers of AIT efficacy will hugely impact current practice allowing physicians to select eligible patients that are likely to respond to treatment as well as improve patients’ compliance to complete the course of treatment.
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spelling pubmed-97073692022-11-30 Biomarkers of AIT: Models of prediction of efficacy Tan, Tiak Ju Delgado-Dolset, María I. Escribese, María M. Barber, Domingo Layhadi, Janice A. Shamji, Mohamed H. Allergol Select Review Article Allergic rhinitis is an IgE-mediated inflammation that remains a clinical challenge, affecting 40% of the UK population with a wide range of severity from nasal discomfort to life-threatening anaphylaxis. It can be managed by pharmacotherapeutics and in selected patients by allergen immunotherapy (AIT), which provides long-term clinical efficacy, especially during peak allergy season. However, there are no definitive biomarkers for AIT efficacy. Here, we aim to summarize the key adaptive, innate, humoral, and metabolic advances in biomarker identification in response to AIT. Mechanisms of efficacy consist of an immune deviation towards T(H)1-secreting IFN-γ, as well as an induction of IL10(+) cT(FR) and T(REG) have been observed. T(H)2 cells undergo exhaustion after AIT due to chronic allergen exposure and correlates with the exhaustion markers PD-1, CTLA-4, TIGIT, and LAG3. IL10(+) DC(REG) expressing C1Q and STAB are induced. KLRG1(+) IL10(+) ILC2 were shown to be induced in AIT in correlation with efficacy. B(REG) cells secreting IL-10, IL-35, and TGF-β are induced. Blocking antibodies IgG, IgA, and IgG4 are increased during AIT; whereas inflammatory metabolites, such as eicosanoids, are reduced. There are multiple promising biomarkers for AIT currently being evaluated. A panomic approach is essential to better understand cellular, molecular mechanisms and their correlation with clinical outcomes. Identification of predictive biomarkers of AIT efficacy will hugely impact current practice allowing physicians to select eligible patients that are likely to respond to treatment as well as improve patients’ compliance to complete the course of treatment. Dustri-Verlag Dr. Karl Feistle 2022-11-21 /pmc/articles/PMC9707369/ /pubmed/36457722 http://dx.doi.org/10.5414/ALX02333E Text en © Dustri-Verlag Dr. K. Feistle https://creativecommons.org/licenses/by/2.5/This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Review Article
Tan, Tiak Ju
Delgado-Dolset, María I.
Escribese, María M.
Barber, Domingo
Layhadi, Janice A.
Shamji, Mohamed H.
Biomarkers of AIT: Models of prediction of efficacy
title Biomarkers of AIT: Models of prediction of efficacy
title_full Biomarkers of AIT: Models of prediction of efficacy
title_fullStr Biomarkers of AIT: Models of prediction of efficacy
title_full_unstemmed Biomarkers of AIT: Models of prediction of efficacy
title_short Biomarkers of AIT: Models of prediction of efficacy
title_sort biomarkers of ait: models of prediction of efficacy
topic Review Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9707369/
https://www.ncbi.nlm.nih.gov/pubmed/36457722
http://dx.doi.org/10.5414/ALX02333E
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