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Application of the Electronic Nose Technique to Differentiation between Model Mixtures with COPD Markers

机译:电子鼻技术在COPD标记物模型区分中的应用

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The paper presents the potential of an electronic nose technique in the field of fast diagnostics of patients suspected of Chronic Obstructive Pulmonary Disease (COPD). The investigations were performed using a simple electronic nose prototype equipped with a set of six semiconductor sensors manufactured by FIGARO Co. They were aimed at verification of a possibility of differentiation between model reference mixtures with potential COPD markers (N,N-dimethylformamide and N,N-dimethylacetamide). These mixtures contained volatile organic compounds (VOCs) such as acetone, isoprene, carbon disulphide, propan-2-ol, formamide, benzene, toluene, acetonitrile, acetic acid, dimethyl ether, dimethyl sulphide, acrolein, furan, propanol and pyridine, recognized as the components of exhaled air. The model reference mixtures were prepared at three concentration levels—10 ppb, 25 ppb, 50 ppb v/v—of each component, except for the COPD markers. Concentration of the COPD markers in the mixtures was from 0 ppb to 100 ppb v/v. Interpretation of the obtained data employed principal component analysis (PCA). The investigations revealed the usefulness of the electronic device only in the case when the concentration of the COPD markers was twice as high as the concentration of the remaining components of the mixture and for a limited number of basic mixture components.
机译:本文介绍了电子鼻技术在快速诊断疑似慢性阻塞性肺疾病(COPD)患者中的潜力。研究是使用简单的电子鼻原型进行的,该原型配备了一组由FIGARO Co.制造的六个半导体传感器。它们的目的是验证具有潜在COPD标记物(N,N-二甲基甲酰胺和N, N-二甲基乙酰胺)。这些混合物包含公认的挥发性有机化合物(VOC),例如丙酮,异戊二烯,二硫化碳,丙-2-醇,甲酰胺,苯,甲苯,乙腈,乙酸,二甲醚,二甲基硫醚,丙烯醛,呋喃,丙醇和吡啶作为呼出空气的成分。除COPD标记物外,每种成分的模型参考混合物均以三种浓度水平(10 ppb,25 ppb,50 ppb v / v)制备。混合物中COPD标志物的浓度为0 ppb至100 ppb v / v。对获得的数据的解释采用主成分分析(PCA)。研究表明,仅当COPD标记物的浓度是混合物中其余成分的浓度的两倍高且碱性混合物成分数量有限时,电子设备才有用。

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