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

Author:

Kim Jun Young12,Koh Eun Hye1,Yang Jun‐Yeong1,Mun Chaewon1,Lee Seunghun13,Lee Hyoyoung4,Kim Jaewoo4,Park Sung‐Gyu1,Kang Mijeong2,Kim Dong‐Ho13,Jung Ho Sang135ORCID

Affiliation:

1. Department of Nano‐Bio Convergence Korea Institute of Materials Science (KIMS) Changwon Gyeongnam 51508 Republic of Korea

2. Department of Cogno‐Mechatronics Engineering College of Nanoscience and Nanotechnology Pusan National University Busan 46241 Republic of Korea

3. Advanced Materials Engineering University of Science and Technology (UST) Yuseong‐gu Daejeon 34113 Republic of Korea

4. Eco‐Innovation Convergence Research Center KOTITI Testing & Research Institute Seongnam 13202 Republic of Korea

5. School of Convergence Science and Technology Medical Science and Engineering POSTECH Pohang Kyungbuk 37673 Republic of Korea

Abstract

AbstractMicroplastics (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.

Funder

Korea Institute of Materials Science

Korea Dementia Research Center

Publisher

Wiley

Subject

Electrochemistry,Condensed Matter Physics,Biomaterials,Electronic, Optical and Magnetic Materials

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