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Carboxylic Acid-Functionalized, Graphitic Layer-Coated Three-Dimensional SERS Substrate for Label-Free Analysis of Alzheimer's Disease Biomarkers

Nano Letters(2020)SCI 1区SCI 2区

Korea Adv Inst Sci & Technol

Cited 77|Views21
Abstract
Surface-enhanced Raman spectroscopy (SERS)-based protein analysis is a promising alternative to existing early stage diagnoses. However, SERS research conducted thus far accompanies challenges such as nonuniformity of plasmonic nanostructures, irregular coating of analytes, and denaturation of proteins, which seriously limit the practicability of suggested approaches. Here, we introduce a carboxylic acid-functionalized and graphitic nanolayer-coated three-dimensional SERS substrate (CGSS) fabricated by sequential nanotransfer printing. The substrate consists of well-defined, uniform gold nanowire arrays for effective Raman signal enhancement and a strong protein-immobilization layer. With an enhancement factor (EF) of 5.5 × 105, on par with the highest ever reported values, the CGSS allows the detection of protein conformational changes and the determination of protein concentration via Raman measurements. Exploiting the CGSS, we successfully measured the SERS spectra of Alzheimer's biomarkers, tau protein and amyloid β, based on which secondary structural changes were analyzed quantitatively.
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SERS,3D SERS substrate,Alzheimer's biomarkers,Amyloid beta,Tau proteins
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要点】:本文提出了一种新型的三维SERS基底,通过功能化羧酸和石墨纳米层,实现了对阿尔茨海默症生物标志物的无标记分析,具有极高的信号增强因子和蛋白质固定性能。

方法】:通过顺序纳米转移印刷技术制备了羧酸功能化且石墨纳米层涂覆的三维SERS基底(CGSS),该基底包含均匀的金纳米线阵列和强大的蛋白质固定层。

实验】:使用CGSS成功测量了阿尔茨海默症生物标志物tau蛋白和淀粉样β的SERS光谱,并根据光谱分析了蛋白质的二级结构变化,实验中使用的数据集未明确提及,但结果表现出5.5 × 10^5的增强因子。