Department of Metrology and Optoelectronics, Faculty of Electronics, Telecommunications and Informatics, Gdańsk University of Technology, 80233 Gdańsk, Poland.
Sensor Electronic & Instrumentation Group, Faculty of Sciences, Department of Physics, Moulay Ismaïl University of Meknes, B.P. 11201, Zitoune, Meknes 50050, Morocco.
Sensors (Basel). 2020 May 7;20(9):2666. doi: 10.3390/s20092666.
Here we present a proof-of-concept study showing the potential of a chemical gas sensors system to identify the patients with alveolar echinococcosis disease through exhaled breath analysis. The sensors system employed comprised an array of three commercial gas sensors and a custom gas sensor based on WO nanowires doped with gold nanoparticles, optimized for the measurement of common breath volatile organic compounds. The measurement setup was designed for the concomitant measurement of both sensors DC resistance and AC fluctuations during breath samples exposure. Discriminant Function Analysis classification models were built with features extracted from sensors responses, and the discrimination of alveolar echinococcosis was estimated through bootstrap validation. The commercial sensor that detects gases such as alkane derivatives and ethanol, associated with lipid peroxidation and intestinal gut flora, provided the best classification (63.4% success rate, 66.3% sensitivity and 54.6% specificity) when sensors' responses were individually analyzed, while the model built with the AC features extracted from the responses of the cross-reactive sensors array yielded 90.2% classification success rate, 93.6% sensitivity and 79.4% specificity. This result paves the way for the development of a noninvasive, easy to use, fast and inexpensive diagnostic test for alveolar echinococcosis diagnosis at an early stage, when curative treatment can be applied to the patients.
在这里,我们展示了一项概念验证研究,该研究表明化学气体传感器系统通过分析呼出气,有可能识别出患有泡型包虫病的患者。所采用的传感器系统包括三个商业气体传感器阵列和一个基于掺杂金纳米粒子的 WO 纳米线的定制气体传感器,该传感器针对常见的呼出气挥发性有机化合物的测量进行了优化。测量设置旨在同时测量传感器在暴露于呼吸样本时的直流电阻和交流波动。通过自举验证,从传感器响应中提取特征构建判别函数分析分类模型,估计肺泡棘球蚴病的鉴别。当单独分析传感器的响应时,检测烷烃衍生物和乙醇等气体的商业传感器(与脂质过氧化和肠道菌群有关)提供了最佳的分类(成功率 63.4%,灵敏度 66.3%,特异性 54.6%),而从交叉反应传感器阵列的响应中提取的 AC 特征构建的模型则产生了 90.2%的分类成功率、93.6%的灵敏度和 79.4%的特异性。这一结果为开发一种非侵入性、易于使用、快速且廉价的诊断测试铺平了道路,可用于在早期阶段诊断泡型包虫病,此时可以对患者进行治愈性治疗。