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Untargeted metabolic profiling of saliva by liquid chromatography-mass spectrometry for the identification of potential diagnostic biomarkers of asthma

机译:液相色谱-质谱法对唾液进行无针对性的代谢谱分析,以鉴定哮喘的潜在诊断生物标志物

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Current clinical tests employed to diagnose asthma are inaccurate and limited by their invasive nature. New metabolite profiling technologies offer an opportunity to improve asthma diagnosis using non-invasive sampling. A rapid analytical method for metabolite profiling of saliva is reported using ultra-high performance liquid chromatography combined with high resolution time-of-flight mass spectrometry (UHPLC-MS). The only sample pre-treatment required was protein precipitation with acetonitrile. The method has been applied to a pilot study of saliva samples obtained by passive drool from well phenotyped patients with asthma and healthy controls. Stepwise data reduction and multivariate statistical analysis was performed on the complex dataset obtained from the UHPLC-MS analysis to identify potential metabolomic biomarkers of asthma in saliva. Ten discriminant features were identified that distinguished between moderate asthma and healthy control samples with an overall recognition ability of 80% during training of the model and 97% for model cross-validation. The reported method demonstrates the potential for a non-invasive approach to the clinical diagnosis of asthma using mass spectrometry-based metabolic profiling of saliva.
机译:用于诊断哮喘的当前临床测试是不准确的,并且受其侵入性的限制。新的代谢物分析技术提供了使用无创采样改善哮喘诊断的机会。据报道,使用超高效液相色谱结合高分辨率飞行时间质谱(UHPLC-MS),可以快速分析唾液的代谢物谱。唯一需要的样品预处理是用乙腈沉淀蛋白质。该方法已应用于从被动流口水获得的良好表型哮喘患者和健康对照者的唾液样本的初步研究。对从UHPLC-MS分析获得的复杂数据集进行逐步数据减少和多元统计分析,以鉴定唾液中哮喘的潜在代谢组学生物标志物。鉴定出十个区分特征,这些特征可区分中度哮喘和健康对照样品,其在模型训练期间的总体识别能力为80%,对于模型交叉验证的总体识别能力为97%。报告的方法证明了使用基于质谱的唾液代谢谱分析对哮喘进行临床诊断的非侵入性方法的潜力。

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