首页> 外文期刊>Journal of chromatography, B. Analytical technologies in the biomedical and life sciences >Development of accurate classification method based on the analysis of volatile organic compounds from human exhaled air
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Development of accurate classification method based on the analysis of volatile organic compounds from human exhaled air

机译:基于人体呼出空气中挥发性有机物分析的精确分类方法的发展

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摘要

Analysis of exhaled air leads to the development of fast accurate and non-invasive diagnostics. A comprehensive analysis of the entire range of volatile organic compounds (VOCs) in exhaled air samples will enable the identification of VOCs unique for certain patient groups. This study demonstrates proof of principle of our developed method tested on a smokingon-smoking study population. Thermal desorption and gas chromatography coupled to time-of-flight mass spectrometry were used to analyse exhaled air samples. The VOC profiles obtained from each individual were combined into one final database based on similarity of mass spectra and retention indexes (RI), which offers the possibility for a reliable selection of compounds of interest. As proof of principle we correctly classified all subjects from population of smoking (N = 11) and non-smoking (N = 11) based on the VOC profiles available in their exhaled air. Support vector machine (SVM) analysis identified 4 VOCs as biomarkers of recent exposure to cigarette smoke: 2,5-dimethyl hexane, dodecane, 2,5-dimethylfuran and 2-methylfuran. This approach contributes to future development of fast, accurate and non-invasive diagnostics of inflammatory diseases including pulmonary diseases. (c) 2007 Elsevier B.V. All rights reserved.
机译:呼出空气的分析导致了快速准确,无创诊断的发展。全面分析呼出空气样本中的挥发性有机化合物(VOC)的全部范围,将能够识别某些患者组独有的VOC。这项研究证明了我们对吸烟/非吸烟研究人群进行测试的方法的原理性证明。使用热脱附和气相色谱-飞行时间质谱法分析呼出的空气样品。根据质谱和保留指数(RI)的相似性,将从每个人获得的VOC谱图合并到一个最终数据库中,这为可靠地选择目标化合物提供了可能性。作为原则上的证明,我们根据呼出气中可用的VOC曲线对吸烟(N = 11)和非吸烟(N = 11)人群进行了正确分类。支持向量机(SVM)分析确定了4种VOC作为最近暴露于香烟烟雾的生物标志物:2,5-二甲基己烷,十二烷,2,5-二甲基呋喃和2-甲基呋喃。这种方法有助于对包括肺部疾病在内的炎性疾病进行快速,准确和非侵入性的诊断。 (c)2007 Elsevier B.V.保留所有权利。

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