Detection of Methylparaben in Cosmetics by Poly L–Lysine/Reduced Graphene Oxide-Based Sensor

D. Nguyen, Tran Thanh Tam Toan
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引用次数: 8

Abstract

In this study, a PoL/RGO material was successfully synthesized and employed to modify the working electrode for determining MPB in medication products through voltammetric techniques. The structure of the nanocomposite was characterized by UV–vis and FT-IR spectrum and its application to the MPB electrochemical detection was tested by the CV and DPV techniques. In the result, the modified PoL-RGO/GCE electrode exhibited a superior response toward MPB by applying the DPV method, compares to using the bare GCE, with a limit of detection (LOD), a limit of quantification (LOQ) is 0.20 μM and 0.70 μM, respectively and the concentration ranging from 1 to 200 μM. In addition, the repeatability (RSD of 2.2, 1.6, 1.4 for 5, 50 and 100 μM MPB, respectively), and the reproducibility (RSD of 4.7%) of the technique were examined as well. This illustrates the performance of the electrochemical sensor was statistically investigated by the CV and DPV methods demonstrating accuracy comparable to other analytical methods as well as indicating that MPB can be determined in cosmetics with high recovery ranging from 97% to 104.3%.
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聚l -赖氨酸/还原氧化石墨烯传感器检测化妆品中对羟基苯甲酸甲酯
在本研究中,成功合成了一种PoL/RGO材料,并将其用于修饰工作电极,通过伏安技术测定药物产品中的MPB。采用紫外可见光谱和傅里叶变换红外光谱对纳米复合材料的结构进行了表征,并利用CV和DPV技术对其在MPB电化学检测中的应用进行了测试。结果表明,DPV法修饰的PoL-RGO/GCE电极对MPB的响应优于裸GCE,检测限(LOD)和定量限(LOQ)分别为0.20 μM和0.70 μM,浓度范围为1 ~ 200 μM。此外,对该方法的重复性(在5、50和100 μM MPB条件下RSD分别为2.2、1.6和1.4)和重现性(RSD为4.7%)进行了检验。这表明,通过CV和DPV方法对电化学传感器的性能进行了统计调查,显示出与其他分析方法相当的准确性,并且表明可以在化妆品中检测MPB,回收率在97%至104.3%之间。
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