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电子鼻:一种用于分析糖尿病和肺癌患者呼吸的非侵入性技术。

Electronic nose: a non-invasive technology for breath analysis of diabetes and lung cancer patients.

机构信息

Biomedical and Electronic (10-6-10-9) Engineering Systems Laboratory, Department of Electronic Systems Engineering, Indian Institute of Science, Bangalore, 560012, India.

出版信息

J Breath Res. 2019 Mar 6;13(2):024001. doi: 10.1088/1752-7163/aafc77.

Abstract

In human exhaled breath, more than 3000 volatile organic compounds (VOCs) are found, which are directly or indirectly related to internal biochemical processes in the body. Electronic noses (E-noses) could play a potential role in screening/analyzing various respiratory and systemic diseases by studying breath signatures. An E-nose integrates a sensor array and an artificial neural network that responds to specific patterns of VOCs, and thus can act as a non-invasive technology for disease monitoring. The gold standard blood glucose monitoring test for diabetes diagnostics is invasive and highly uncomfortable. This contributes to the massive need for technologies which are non-invasive and can be used as an alternative to blood measurements for glucose detection. While lung cancer is one of the deadliest cancers with the highest death rate and an extremely high yearly global burden, the conventional diagnosis means, such as sputum cytology, chest radiography, or computed tomography, do not support wide-range population screening. A few standard non-invasive techniques, such as mass spectrometry and gas chromatography, are expensive, non-portable, and require skilled personnel for operation and are again not suitable for large-scale screening. Breath contains markers for both diabetes and lung cancer along with markers for several diseases and thus, a non-invasive technique such as the E-nose would greatly improve analysis procedures over existing invasive methods. This review shows the state-of-the-art technologies for VOC detection and machine learning approaches for two clinical models: diabetes and lung cancer detection.

摘要

在人体呼出的气体中,发现了 3000 多种挥发性有机化合物(VOCs),这些化合物直接或间接地与体内的生化过程有关。电子鼻(E-nose)可以通过研究呼吸特征,在筛选/分析各种呼吸和系统性疾病方面发挥潜在作用。电子鼻将传感器阵列和人工神经网络集成在一起,对特定的 VOC 模式做出响应,因此可以作为一种非侵入性技术用于疾病监测。糖尿病诊断的金标准血糖监测测试具有侵入性且非常不适,这导致人们对非侵入性技术的需求巨大,这些技术可以替代血液测量来检测血糖。虽然肺癌是死亡率最高、全球负担极重的致命癌症之一,但常规诊断方法,如痰细胞学检查、胸部 X 线摄影或计算机断层扫描,不支持广泛的人群筛查。少数标准的非侵入性技术,如质谱和气相色谱,价格昂贵、不便于携带,并且需要熟练的人员进行操作,因此也不适合大规模筛查。呼吸中不仅含有糖尿病和肺癌的标志物,还含有多种疾病的标志物,因此,像电子鼻这样的非侵入性技术将大大改善现有的侵入性方法的分析程序。本文综述了两种临床模型(糖尿病和肺癌检测)中用于 VOC 检测和机器学习方法的最新技术。

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