Paraben Exposure Related To Purine Metabolism and Other Pathways Revealed by Mass Spectrometry-Based Metabolomics

对羟基苯甲酸酯 代谢组学 尿 化学 代谢途径 嘌呤代谢 生物监测 色谱法 尼泊金甲酯 尼泊金丙酯 三级四极质谱仪 新陈代谢 防腐剂 质谱法 药理学 生物化学 选择性反应监测 环境化学 食品科学 串联质谱法 医学
作者
Hongzhi Zhao,Yuanyuan Zheng,Lin Zhu,Xiang Li,Yanqiu Zhou,Jiufeng Li,Jing Fang,Shunqing Xu,Wei Xia,Zongwei Cai
出处
期刊:Environmental Science & Technology [American Chemical Society]
卷期号:54 (6): 3447-3454 被引量:44
标识
DOI:10.1021/acs.est.9b07634
摘要

Parabens are widely used as common preservatives in the pharmaceutical and cosmetic industries. Exposure to parabens has been found to be associated with metabolic alterations of human and an increased risk of metabolic disease, such as diabetes. However, limited information is available about metabolic pathways related to paraben exposure. In this study, three parabens were determined in the urine samples of 88 pregnant women by using ultrahigh-performance liquid chromatography coupled with triple quadrupole mass spectrometry (UHPLC-QqQ MS). The samples were divided into different groups based on tertile distribution of urinary paraben concentrations. Metabolic profiling of the 88 urine samples was performed by using UHPLC coupled with Orbitrap high-resolution MS. Differential metabolites were screened by comparing the profiles of urine samples from different paraben-exposure groups. The identified metabolites included purines, acylcarnitines, etc., revealing that metabolic pathways such as purine metabolism, fatty acid β-oxidation, and other pathways were disturbed by parabens. Eighteen and three metabolites were correlated (Spearman correlation analysis, p < 0.05) with the exposure levels of methyparaben and propylparaben, respectively. This is the first MS-based nontargeted metabolomics study on pregnant women with paraben exposure. The findings reveal the potential health risk of exposure to parabens and might help one to understand the link between paraben exposure and some metabolic diseases.
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