4.5 Article

Identification of biomarker sets for predicting the efficacy of sublingual immunotherapy against pollen-induced allergic rhinitis

Journal

INTERNATIONAL IMMUNOLOGY
Volume 29, Issue 6, Pages 291-300

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/intimm/dxx034

Keywords

AdaBoost; cluster analysis; cytokines; Japanese cedar pollen

Categories

Funding

  1. Tokyo Metropolitan Government
  2. Japan Society for the Promotion of Science (KAKENHI) [15K08626]
  3. Kurozumi Medical Foundation
  4. Japan Allergy Foundation
  5. Grants-in-Aid for Scientific Research [15K08626] Funding Source: KAKEN

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Sublingual immunotherapy (SLIT) is effective against allergic rhinitis, although a substantial proportion of individuals is refractory. Herein, we describe a predictive modality to reliably identify SLIT non-responders (NRs). We conducted a 2-year clinical study in 193 adult patients with Japanese cedar pollinosis, with biweekly administration of 2000 Japanese allergy units of cedar pollen extract as the maintenance dose. After identifying high-responder (HR) patients with improved severity scores and NR patients with unchanged or exacerbated symptoms, differences in 33 HR and 34 NR patients were evaluated in terms of peripheral blood cellular profiles by flow cytometry and serum factors by ELISA and cytokine bead array, both pre-and post-SLIT. Improved clinical responses were seen in 72% of the treated patients. Pre-therapy IL-12p70 and post-therapy IgG1 serum levels were significantly different between HR and NR patients, although these parameters alone failed to distinguish NR from HR patients. However, the analysis of serum parameters in the pre-therapy samples with the Adaptive Boosting (AdaBoost) algorithm distinguished NR patients with high probability within the training data set. Cluster analysis revealed a positive correlation between serum T(h)1/T(h)2 cytokines and other cytokines/chemokines in HR patients after SLIT. Thus, processing of pre-therapy serum parameters with AdaBoost and cluster analysis can be reliably used to develop a prediction method for HR/NR patients.

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