恒电位仪
生物传感器
葡萄糖氧化酶
安培法
血糖自我监测
注意事项
检出限
检测点注意事项
分析物
循环伏安法
材料科学
纳米技术
化学
色谱法
电极
电化学
医学
连续血糖监测
护理部
物理化学
内分泌学
血糖性
胰岛素
免疫学
作者
Artur Jędrzak,Maria Kuznowicz,Teofil Jesionowski
标识
DOI:10.1007/s10800-023-01937-5
摘要
Abstract In this work, the β-cyclodextrins (βCD) grafted on magnetite@polynorepinephrine (Fe 3 O 4 @PNE) nanomaterial with glucose oxidase (GOx) from Aspergillus niger was presented. The electroactive nanoplatform was used to construct rapid response and long-live time biosensor for qualitative and quantitative glucose determination. The nanomaterial was deposited on the screen-printed electrode (SPE) and integrated with the potentiostat in tandem with a portable devices. The methodology may affect its relatively low unit cost, miniaturization aspect, and electrode system integrity. The potential usage is intended for advanced diabetes care with a focus on the point-of-care testing idea. The cyclic voltammetry and amperometry were used for electrochemical characterization. The presented SPE/Fe 3 O 4 @PNE@βCD-GOx biosensor enabled measurements in a wide range of concentrations (0.1–30.0 mM), an enhanced sensitivity (204.82 µA mM − 1 cm − 2 ), a low limit of detection (3.2 µM), and a rapid response (2.6 s). Moreover, the proposed sensor achieved long-term stability, up to 11 months. Testing on real samples (human blood, human serum, infusion fluids) showed recovery in range from 95.5 to 98.6%. The outcomes demonstrated that this biosensor has great potential for use in determining the amount of glucose in a biological fluids and commercial products. The novelty of this work would largely consist of the possibility of qualitative and quantitative measurements of glucose in real human samples with a long time stability. This portable system enables mobile diagnostics tests including point-of-care testing idea. Due to the applied β-cyclodextrins on the surface of the novel polynorepinephrine biopolymer coating, selectivity, stability, and sensitivity were improved. Graphical Abstract
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