哮喘
医学
代谢组学
代谢物
泌尿系统
代谢组
尿囊素
纵向研究
尿
喘息
尿素循环
内科学
生理学
免疫学
病理
生物信息学
生物化学
生物
精氨酸
氨基酸
作者
Chih‐Yung Chiu,Gigin Lin,Mei‐Ling Cheng,Meng‐Han Chiang,Ming‐Han Tsai,Kuan‐Wen Su,Man‐Chin Hua,Sui‐Ling Liao,Shen‐Hao Lai,Tsung‐Chieh Yao,Kuo‐Wei Yeh,Jing‐Long Huang
摘要
Abstract Background Several metabolites and altered metabolic pathways have been reported to be associated with asthma. However, longitudinal analysis of the dynamics of metabolites contributing to the development of asthma has not yet been fully clarified. Methods We sought to identify the metabolic mechanisms underlying asthma development in early childhood. Thirty children with asthma and paired healthy controls from a prospective birth cohort were enrolled. Time series analysis of urinary metabolites collected at ages 1, 2, 3, and 4 years was assessed using 1 H nuclear magnetic resonance (NMR) spectroscopy coupled with partial least squares discriminant analysis (PLS‐DA). Metabolites identified were studied in relation to changes over time in a linear mixed model for repeated measures. Results A total of 172 urine samples collected from the enrolled children were analyzed. Urinary metabolomics identified four metabolites significantly associated with childhood asthma development, with longitudinal analysis. Among them, dimethylamine, a metabolite produced by intestinal bacteria, appeared to shift from higher to lower level during asthma development. A persistent lower level of 1‐methylnicotinamide and allantoin was found in children with asthma, with a peak difference at age 3 years ( P = .032 and P = .021, respectively). Furthermore, a significant inverse correlation was found between allantoin and house dust mite sensitization (Spearman’s r = −.297 P = .035). Conclusions Longitudinal urinary metabolomic profiling provides a link of microbe‐environment interactions in the development of childhood asthma. 1‐Methylnicotinamide and allantoin may participate in allergic reactions in response to allergen exposure, potentially serving as specific biomarkers for asthma.
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