Graphical abstract<'/> Exhaled breath analysis using electronic nose and gas chromatography-mass spectrometry for non-invasive diagnosis of chronic kidney disease, diabetes mellitus and healthy subjects
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Exhaled breath analysis using electronic nose and gas chromatography-mass spectrometry for non-invasive diagnosis of chronic kidney disease, diabetes mellitus and healthy subjects

机译:使用电子鼻和气相色谱-质谱法进行呼气分析,用于非侵入性诊断慢性肾脏病,糖尿病和健康受试者

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Graphical abstractDisplay OmittedHighlightsE-nose and GC/Q-TOF-MS were employed to investigate breath of CKD, DM and HS.GC/Q-TOF-MS detected special breath VOCs with high concentrations for each case.E-nose could characterize breath patterns of CKD, DM as well as HSHC and HSLC.Eight new cases, i.e. 2 CKD, 2 DM, 2 HSHC and 2 HSLC were successfully identified.Significant correlation was obtained between breath VOCs and urinary creatinine.AbstractBreath Volatile Organic Compounds (VOC’s) analysis is a non-invasive tool to assess information about health status. This study aims to investigate exhaled breath of Chronic Kidney Disease (CKD), Diabetes Mellitus (DM) and Healthy Subjects (HS), using electronic nose (e-nose) and Gas Chromatography Quadrupole Time-Of-Flight Mass spectrometry (GC/Q-TOF-MS). Breath samples were collected from 44 volunteers containing 14 females and 30 males. Urine samples were also collected to measure Creatinine Level (CL) by UV–vis Spectrophotometry as reference method. GC/Q-TOF-MS was used to identify volatile organic compounds that were detected in the exhaled breath of CKD, DM, and healthy subjects at different CL concentrations. The e-nose dataset was treated with Principal Component Analysis (PCA), Support Vector Machines (SVMs), Hierarchical Cluster Analysis (HCA) and Partial Least Squares-regression (PLS-regression). PLS model revealed a relationship between breath and urinary CL. The presented results show that e-nose based on chemical gas sensors in combination with pattern recognition methods could constitute the basis of inexpensive and non-invasive diagnosis to distinguish between breath of CKD, DM patients and healthy controls based on breath VOC’s analysis.
机译: 图形摘要 < ce:simple-para>省略显示 突出显示 电子鼻和使用GC / Q-TOF-MS调查CKD,DM和HS的呼吸。 GC / Q-TOF-MS检测到高浓度的特殊呼吸挥发性有机化合物 电子鼻可以表征CKD,DM以及HSHC和HSLC的呼吸模式。 成功识别出8个新病例,即2个CKD,2个DM,2个HSHC和2个HSLC。 呼吸中的挥发性有机化合物与尿肌酐之间存在显着相关性。 摘要 呼吸挥发性有机化合物(VOC)分析是一项评估健康状况信息的非侵入性工具。本研究旨在通过电子鼻(电子鼻)和气相色谱四极杆飞行时间质谱(GC / Q)研究慢性肾脏病(CKD),糖尿病(DM)和健康受试者(HS)的呼气。 -TOF-MS)。从44名志愿者中收集了呼吸样本,其中包括14名女性和30名男性。还收集了尿液样品,以紫外可见分光光度法作为参考方法来测定肌酐水平(CL)。 GC / Q-TOF-MS用于鉴定在不同CL浓度的CKD,DM和健康受试者的呼气中检测到的挥发性有机化合物。使用主成分分析(PCA),支持向量机(SVM),层次聚类分析(HCA)和偏最小二乘回归(PLS-regression)处理电子鼻数据集。 PLS模型揭示了呼吸与尿液CL之间的关系。结果表明,基于化学气体传感器的电子鼻与模式识别方法相结合,可以构成廉价且无创的诊断基础,从而基于呼吸VOC分析来区分CKD,DM患者的呼吸和健康对照。

著录项

  • 来源
    《Sensors and Actuators》 |2018年第3期|178-188|共11页
  • 作者单位

    Sensor Electronic & Instrumentation Group, Moulay Ismaïl University, Faculty of Sciences, Department of Physics, Zitoune,Biotechnology Agroalimentary and Biomedical Analysis Group, Moulay Ismaïl University, Faculty of Sciences, Department of Biology, Zitoune;

    Sensor Electronic & Instrumentation Group, Moulay Ismaïl University, Faculty of Sciences, Department of Physics, Zitoune,Biotechnology Agroalimentary and Biomedical Analysis Group, Moulay Ismaïl University, Faculty of Sciences, Department of Biology, Zitoune;

    Sensor Electronic & Instrumentation Group, Moulay Ismaïl University, Faculty of Sciences, Department of Physics, Zitoune,Biotechnology Agroalimentary and Biomedical Analysis Group, Moulay Ismaïl University, Faculty of Sciences, Department of Biology, Zitoune;

    Biotechnology Agroalimentary and Biomedical Analysis Group, Moulay Ismaïl University, Faculty of Sciences, Department of Biology, Zitoune;

    Department of Electronics, Electrical and Automatic Engineering, Rovira i Virgili University;

    Sensor Electronic & Instrumentation Group, Moulay Ismaïl University, Faculty of Sciences, Department of Physics, Zitoune;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Breath analysis; Electronic nose; Chemometrics; Gas chromatography quadrupole time-of-flight mass spectrometry; Chronic kidney diseases; Diabetes mellitus;

    机译:呼吸分析;电子鼻;化学计量学;气相色谱四极杆飞行时间质谱;慢性肾脏病;糖尿病;

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