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Amperometric glucose sensor based on catalytic reduction of dissolved oxygen at soluble carbon nanofiber

机译:基于可溶性碳纳米纤维催化还原溶解氧的安培型葡萄糖传感器

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This work shows excellent catalytic activity of soluble carbon nanofiber (CNF), which was obtained with a simple nitric acid treatment, toward the electroreduction of dissolved oxygen at a low operating potential. Thus the CNF was applied in the construction of amperometric biosensors for oxidase substrates using glucose oxidase as a model. The good dispersion of CNF led to convenient preparation and acceptable repeatability of the proposed sensors. UV-vis spectra, Fourier transform infrared spectra, X-ray photoelectron spectra and titration curves demonstrated that the good dispersion resulted from the large numbers of surface oxygen-rich groups produced in the treatment process. The membrane of CNF showed good stability and provided fast response to dissolved oxygen with a linear range from 0.1 to 78 mu M and detection limit of 0.07 mu M. The proposed glucose biosensor could monitor glucose ranging from 10 to 350 mu M with detection limit of 2.5 mu M and sensitivity of 36.3 nA cm(-2) mu M-1. The coefficients of variation for intra-assay were 4.7 and 3.2% at glucose concentrations of 20 and 210 mu M, respectively. The use of a low operating potential (-0.3 V) and Nafion membrane produced good selectivity toward the glucose detection. CNF-based biosensors would provide wide range of bioelectrochemical applications in different fields. (c) 2007 Elsevier B.V. All rights reserved.
机译:这项工作表明,通过简单的硝酸处理获得的可溶性碳纳米纤维(CNF)在低工作电位下对溶解氧的电还原具有出色的催化活性。因此,使用葡萄糖氧化酶作为模型,将CNF用于氧化酶底物的安培生物传感器的构建。 CNF的良好分散性使得准备的传感器和所提出的传感器的可接受的重复性成为可能。紫外可见光谱,傅立叶变换红外光谱,X射线光电子能谱和滴定曲线表明,良好的分散性是由处理过程中产生的大量表面富氧基团产生的。 CNF膜表现出良好的稳定性,对溶解氧具有快速响应,线性范围为0.1至78μM,检测限为0.07μM。拟议的葡萄糖生物传感器可监测10至350μM的葡萄糖,检测限为2.5μM和36.3 nA cm(-2)μM-1的灵敏度。葡萄糖浓度分别为20和210μM时,批内分析的变异系数分别为4.7%和3.2%。使用低工作电势(-0.3 V)和Nafion膜对葡萄糖检测具有良好的选择性。基于CNF的生物传感器将在不同领域提供广泛的生物电化学应用。 (c)2007 Elsevier B.V.保留所有权利。

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