3D Plasmonic Gold Nanopocket Structure for SERS Machine Learning-Based Microplastic Detection

IF 18.5 1区 材料科学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Jun Young Kim, Eun Hye Koh, Jun-Yeong Yang, Chaewon Mun, Seunghun Lee, Hyoyoung Lee, Jaewoo Kim, Sung-Gyu Park, Mijeong Kang, Dong-Ho Kim, Ho Sang Jung
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Abstract

Microplastics (MPs) are present not only in the environment but also in drinking water, food, and consumer products. These MPs being toxic, carcinogenic, endocrine disrupting, and genetic risk creators cause several diseases. Despite various approaches, the development of onsite applicable, facile, and quick MP detection methods is still challenging. Here, 3D-plasmonic gold nanopocket (3D-PGNP) nanoarchitecture is formed on a paper substrate for simultaneous MP filtration and detection. The paper-based 3D-PGNP is integrated with a syringe filter device, and then, MP-containing solutions are injected through the syringe. Subsequent detection of the MPs using the surface-enhanced Raman scattering (SERS) successfully identifies the MPs without pretreatment. The interface and volumetric hotspot generation of 3D-PGNP around the captured MPs significantly improves the sensitivity, which is confirmed by finite-difference time-domain simulation. Then, the SERS mapping images obtained from a portable Raman spectrometer are transformed into digital signals via machine learning (ML) technique to identify and quantify the MP distribution. The developed SERS-ML-based MP detection method is applied for mixture MPs and for real matrix samples, demonstrating that the method provides improved accuracy. This system is expected to be used for various MPs detection and for environmentally hazardous substances, such as bacteria, viruses, and fungi.

Abstract Image

用于基于 SERS 机器学习的微塑料检测的三维等离子体金纳米口袋结构
微塑料(MPs)不仅存在于环境中,也存在于饮用水、食品和消费品中。这些微塑料具有毒性、致癌性、内分泌干扰性和遗传风险性,可导致多种疾病。尽管有多种方法,但开发现场适用、简便快捷的 MP 检测方法仍具有挑战性。在此,我们在纸基底上形成了三维质子金纳米袋(3D-PGNP)纳米结构,用于同时过滤和检测 MP。纸基 3D-PGNP 与注射器过滤装置集成,然后通过注射器注入含有 MP 的溶液。随后使用表面增强拉曼散射(SERS)检测 MP,无需预处理即可成功识别 MP。捕获的 MPs 周围的 3D-PGNP 的界面和体积热点生成大大提高了灵敏度,这一点已通过有限差分时域仿真得到证实。然后,通过机器学习(ML)技术将便携式拉曼光谱仪获得的 SERS 绘图图像转化为数字信号,以识别和量化 MP 分布。所开发的基于 SERS-ML 的 MP 检测方法被应用于混合 MP 和真实基质样品,结果表明该方法提高了准确性。该系统有望用于各种 MPs 检测以及细菌、病毒和真菌等环境危害物质的检测。
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来源期刊
Advanced Functional Materials
Advanced Functional Materials 工程技术-材料科学:综合
CiteScore
29.50
自引率
4.20%
发文量
2086
审稿时长
2.1 months
期刊介绍: Firmly established as a top-tier materials science journal, Advanced Functional Materials reports breakthrough research in all aspects of materials science, including nanotechnology, chemistry, physics, and biology every week. Advanced Functional Materials is known for its rapid and fair peer review, quality content, and high impact, making it the first choice of the international materials science community.
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