From Drifting Polyaniline Sensor to Accurate Sensor Array for Breath Analysis

Paul Le Maout, J. Wojkiewicz, N. Redon, C. Lahuec, F. Seguin, Laurent Dupont, Alexander Pud, S. Mikhaylov
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引用次数: 2

Abstract

Kidney failure is a critical chronic disease, defined as the irreversible loss of kidney functions. It has been shown that this pathology is associated with an increase of ammonia concentration in breath. Measuring it with a handheld system is a simple way for a noninvasive and early diagnostic. The idea of this paper is to measure the concentration of ammonia in a concentration range of human breath (500 ppb-2100 ppb) with humidity using a network of 11 different nanocomposite sensors. To overcome sensor weaknesses (sensor drift and sensitivity to humidity), the electronic nose principles are applied. Polyaniline-based nanocomposites with titanium dioxide, chitosan and carbon nanotubes are used to provide different sensitivities and response times and thus associate a single pattern to a concentration range. Several classifiers are then investigated and recursive feature elimination algorithm are used to select the most relevant features and sensors while improving the measurement accuracy. Diagnosis accuracy reaches 91% with the combination of feature selection and Support Vector Machine algorithm.
从漂移聚苯胺传感器到精确传感器阵列的呼吸分析
肾衰竭是一种严重的慢性疾病,定义为肾功能不可逆转的丧失。研究表明,这种病理与呼吸中氨浓度的增加有关。用手持系统测量是一种简单的无创早期诊断方法。这篇论文的想法是使用由11个不同的纳米复合传感器组成的网络来测量人类呼吸浓度范围内(500 ppb-2100 ppb)的氨浓度。为了克服传感器的缺点(传感器漂移和对湿度的敏感性),应用了电子鼻原理。以二氧化钛、壳聚糖和碳纳米管为基础的聚苯胺基纳米复合材料可提供不同的灵敏度和响应时间,从而将单一模式与浓度范围联系起来。然后研究了几种分类器,并使用递归特征消除算法来选择最相关的特征和传感器,同时提高了测量精度。特征选择与支持向量机算法相结合,诊断准确率达到91%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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