利用金属氧化物化学电阻传感器进行呼气指纹分析,对不同临床状态的患者进行分类和监测

O. Zaim, F. Ajana, Naoual Lagdali, I. Benelbarhdadi, N. El Bari, B. Bouchikhi
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引用次数: 0

摘要

基于呼气分析的无创方法的健康状态监测因其简单,不需要熟练的医务人员而引起了人们的极大兴趣。本研究的目的是通过使用一系列金属氧化物化学电阻传感器来区分糖尿病(DM)、肾功能衰竭(RF)、肝硬化(LCi)和健康对照组(HC)患者组的呼气样本。采用电子鼻对HC (n=10)、DM (n=6)、RF (n=11)和LCi (n=11)患者的呼吸样本进行分析,并使用化学计量学技术进行分类,即判别函数分析(DFA)和支持向量机(svm)。因此,DFA在HC、DM、RF和LCi患者的呼吸样本数据点之间表现出良好的辨别能力。支持向量机方法对所分析的四组进行识别的成功率为96.49%。根据这些结果,我们可以说,提出的电子鼻技术表明,基于呼气分析的一种简单、经济、无创的方法可以被认为是一种可靠的疾病诊断筛查工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exhaled breath-print analysis by using metal oxide chemoresistive sensors for classifying and monitoring patients with different clinical states
Health status monitoring based on non-invasive methodology through exhaled breath analysis has raised great interest, due to its easiness that does not require skilled medical personnel. The aim of the present study is to discriminate between exhaled breath samples of patients' groups with Diabetes Mellitus (DM), Renal Failure (RF), Liver Cirrhosis (LCi), and Healthy Controls (HC), by using an array of metal oxide chemoresistive sensors. Breath samples collected from HC (n=10), DM (n=6), RF (n=11), and LCi (n=11) patients were analyzed by the electronic nose (e-nose), and classification was performed using chemometric techniques namely: Discriminant Function Analysis (DFA) and Support Vector Machines (SVMs). As result, DFA has shown good discrimination between data-points of breath samples related to HC, DM, RF, and LCi patients. The SVMs method reached a 96.49% success rate for the recognition of the analyzed four groups. In the light of these results, we can state that the presented e-nose technology demonstrates that a simple, cost-effective, and non-invasive approach based on exhaled breath analysis could be considered a reliable screening tool for diseases diagnosis.
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