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Prediction of sublingual immunotherapy efficacy in allergic rhinitis by serum metabolomics analysis.

Authors :
Xie, Shaobing
Jiang, Sijie
Zhang, Hua
Wang, Fengjun
Liu, Yongzhen
She, Yongchuan
Jing, Qiancheng
Gao, Kelei
Fan, Ruohao
Xie, Shumin
Xie, Zhihai
Jiang, Weihong
Source :
International Immunopharmacology. Jan2021, Vol. 90, pN.PAG-N.PAG. 1p.
Publication Year :
2021

Abstract

• Serum metabolomics was useful to identify biomarkers predicting efficacy of SLIT. • Serum lactic acid, ornithine, linolenic acid, etc, could predict the efficacy of SLIT. • Metabolism pathways dysfunction might underlie the mechanism of SLIT in AR patients. Allergen-specific immunotherapy (ASIT) is currently the only therapy for allergic rhinitis (AR) that can induce immune tolerance to allergens. However, the course of ASIT is long and there is no objective biomarker to predict treatment efficacy. The present study aimed to explore potential biomarkers predictive of efficacy of AIT based on serum metabolomics profiles. This prospective study recruited 72 consecutive eligible patients who were assigned to receive sublingual immunotherapy (SLIT). Serum samples were collected prior to SLIT and utilized to obtain metabolomics profiling by applying ultra-high performance liquid chromatography-mass spectrometry (UHPLC-MS). Treatment response was determined 3 years after SLIT, and patients were divided into effective group and ineffective group. Orthogonal partial least square-discriminate analysis (OPLS-DA) was performed to evaluate the metabolite differences between two groups. Sixty-eight patients completed the whole SLIT, 39 patients were categorized into effective group and 29 patients were classified into ineffective group. A total of 539 metabolites were obtained, and 197 of which were identified as known substances. Using these 197 known metabolites, the OPLS-DA results showed that effective group and ineffective group exhibited distinctive metabolite signatures and metabolic pathways. Six metabolites including lactic acid, ornithine, linolenic acid, creatinine, arachidonic acid and sphingosine were identified to exhibit good performance in predicting the efficacy of SLIT, and these metabolite changes mainly involved glycolysis and pyruvate metabolism, arginine and proline metabolism and fatty acid metabolism pathways. By metabolomics analysis, we identified several serum biomarkers that can reliably and accurately predict the efficacy of SLIT in AR patients. The discriminative metabolites and related metabolic pathways contributed to better understand the mechanisms of SLIT in AR patients. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
15675769
Volume :
90
Database :
Academic Search Index
Journal :
International Immunopharmacology
Publication Type :
Academic Journal
Accession number :
148075566
Full Text :
https://doi.org/10.1016/j.intimp.2020.107211