材料科学
纳米团簇
石墨烯
纤维
制作
纳米技术
基质(水族馆)
拉曼散射
等离子体子
检出限
拉曼光谱
光电子学
化学
复合材料
病理
医学
地质学
物理
替代医学
色谱法
光学
海洋学
作者
Xin Liu,Alei Dang,Tiehu Li,Yiting Sun,Tung‐Chun Lee,Weibin Deng,Shaoheng Wu,Amir Zada,Ting-kai Zhao,Hao Li
出处
期刊:ACS Sensors
[American Chemical Society]
日期:2023-03-03
卷期号:8 (3): 1287-1298
被引量:76
标识
DOI:10.1021/acssensors.2c02808
摘要
High sensitivity, good signal repeatability, and facile fabrication of flexible surface enhanced Raman scattering (SERS) substrates are common pursuits of researchers for the detection of probe molecules in a complex environment. However, fragile adhesion between the noble-metal nanoparticles and substrate material, low selectivity, and complex fabrication process on a large scale limit SERS technology for wide-ranging applications. Herein, we propose a scalable and cost-effective strategy to a fabricate sensitive and mechanically stable flexible Ti3C2Tx MXene@graphene oxide/Au nanoclusters (MG/AuNCs) fiber SERS substrate from wet spinning and subsequent in situ reduction processes. The use of MG fiber provides good flexibility (114 MPa) and charge transfer enhancement (chemical mechanism, CM) for a SERS sensor and allows further in situ growth of AuNCs on its surface to build highly sensitive hot spots (electromagnetic mechanism, EM), promoting the durability and SERS performance of the substrate in complex environments. Therefore, the formed flexible MG/AuNCs-1 fiber exhibits a low detection limit of 1 × 10–11 M with a 2.01 × 109 enhancement factor (EFexp), signal repeatability (RSD = 9.80%), and time retention (remains 75% after 90 days of storage) for R6G molecules. Furthermore, the l-cysteine-modified MG/AuNCs-1 fiber realized the trace and selective detection of trinitrotoluene (TNT) molecules (0.1 μM) via Meisenheimer complex formation, even by sampling the TNT molecules at a fingerprint or sample bag. These findings fill the gap in the large-scale fabrication of high-performance 2D materials/precious-metal particle composite SERS substrates, with the expectation of pushing flexible SERS sensors toward wider applications.
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