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首页> 外文期刊>Acta Biochimica Polonica >The use of infrared spectroscopy and artificial neural networks for detection of uropathogenic Escherichia coli strains' susceptibility to cephalothin*
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The use of infrared spectroscopy and artificial neural networks for detection of uropathogenic Escherichia coli strains' susceptibility to cephalothin*

机译:使用红外光谱法和人工神经网络检测尿毒症性大肠杆菌菌株对头孢菌素的敏感性*

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摘要

Background & Aims: Infrared spectroscopy is an increasingly common method for bacterial strains' testing. For the analysis of bacterial IR spectra, advanced mathematical methods such as artificial neural networks must be used. The combination of these two methods has been used previously to analyze taxonomic affiliation of bacteria. The aim of this study was the classification of Escherichia coli strains in terms of susceptibility/resistance to cephalothin on the basis of their infrared spectra. The infrared spectra of 109 uropathogenic E. coli strains were measured. These data are used for classification of E. coli strains by using designed artificial neural networks. Results: The most efficient artificial neural networks classify the E. coli sensitive/resistant strains with an error of 5%. Conclusions: Bacteria can be classified in terms of their antibiotic susceptibility by using infrared spectroscopy and artificial neural networks.
机译:背景与目的:红外光谱法是一种越来越普遍的细菌菌株检测方法。为了分析细菌的红外光谱,必须使用先进的数学方法,例如人工神经网络。这两种方法的组合先前已用于分析细菌的分类学隶属关系。这项研究的目的是根据其红外光​​谱对头孢菌素的敏感性/耐药性对大肠埃希菌菌株进行分类。测量了109个尿路致病性大肠杆菌菌株的红外光谱。通过使用设计的人工神经网络,将这些数据用于大肠杆菌菌株的分类。结果:最有效的人工神经网络将大肠杆菌敏感/耐药菌株分类,误差为5%。结论:可通过红外光谱和人工神经网络对细菌的敏感性进行分类。

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