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Table 1. The variables used in this study, described in more detail in
the supplementary file. AR- allergic rhinitis, AD- atopic dermatitis,
FVC- forced vital capacity, SPT- skin prick test, IgE- immunoglobulin E,
ENT- ear/nose/throat, GLCCI1 - glucocorticoid induced 1,TBX21 - t-box 21, CRHR1 - corticotropin releasing hormone
receptor 1, ADRB2 - beta-2 adrenergic receptor, MMP9 -
matrix metalloproteinase-9.