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Fast Identification of Bacteria for Quality Control of Drinking Water through a Static Headspace Sampler Coupled to a Sensory Perception System

机译:通过与传感感知系统耦合的静态顶空进样器快速识别用于饮用水质量控制的细菌

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摘要

The aim of this study was to develop and implement a methodology composed by a Static Head-Space-Sampler (SHS) coupled to a Sensory Perception System (SPS) for the extraction of Volatile Organic Compounds (VOC’s) emitted by bacterial species in the water. The SPS was performed by means of a chamber of 16 Metal-Oxide-Semiconductor (MOS) gas sensors and a software with pattern recognition methods for the detection and identification of bacteria. At first, the tests were conducted from the sterile and polluted water with the Escherichia coli bacteria and modifying the incubation temperatures (50 °C, 70 °C and 90 °C), with the objective to obtain an optimal temperature for the distinguishing of species. Furthermore, the capacity of the methodology to distinguish the important compounds was assessed, in this case, E. coli and other bacteria like Pseudomonas aeruginosa and Klebsiella oxytoca, which formed similar analytes. The validation of the proposed methodology was done by acquiring water samples from different unitary operations of an aqueduct of the municipality of Toledo (North of Santander, Colombia), which were analyzed by the membrane filter technique in the laboratories of the University of Pamplona, along with the SHS-SPS system. The results showed that it was possible to distinguish polluted water samples in a fast way through the sensory measurement equipment using pattern recognition techniques such as Principal Component Analysis (PCA), Discriminant Function Analysis (DFA) and a probabilistic neural network (PNN), where a 95% of differentiation was obtained through PCA and 100% of the classification with DFA. The PNN network achieved the 86.6% of success rate with the cross-validation technique “leave one out”.
机译:这项研究的目的是开发和实施一种方法,该方法由静态顶空进样器(SHS)与感官感知系统(SPS)耦合,用于提取水中细菌物种释放的挥发性有机化合物(VOC)。 。通过16个金属氧化物半导体(MOS)气体传感器的腔室和带有模式识别方法的软件来检测和识别细菌,从而执行SPS。首先,在无菌和污水中用大肠杆菌进行测试,并修改孵育温度(50°C,70°C和90°C),目的是获得用于区分物种的最佳温度。此外,评估了区分重要化合物的方法学能力,在这种情况下,大肠杆菌和其他细菌(如铜绿假单胞菌和产酸克雷伯菌)形成了类似的分析物。所提出方法的验证是通过从托莱多市(哥伦比亚桑坦德市以北)的渡槽的不同单元操作中采集水样完成的,并通过膜过滤技术在潘普洛纳大学实验室中进行了分析。使用SHS-SPS系统。结果表明,使用模式识别技术(例如主成分分析(PCA),判别函数分析(DFA)和概率神经网络(PNN)),可以通过感官测量设备快速区分受污染的水样本。通过PCA获得了95%的分化,而通过DFA获得了100%的分类。 PNN网络通过交叉验证技术“ leave one out”获得了86.6%的成功率。

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