3D Spiky Needle‐Clustered Ag@Au Plasmonic Nanoarchitecture for Highly Sensitive and Machine Learning‐Assisted Detection of Multiple Hazardous Molecules

Author:

Seo Hyo Jeong12,Kim Jun Young12,Yang Jun‐Yeong1,Mun Chaewon1,Lee Seunghun13,Koh Eun Hye1,Linh Vo Thi Nhat1,Kang Mijeong2,Jung Ho Sang134ORCID

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 (PNU) Busan 46241 Republic of Korea

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

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

Abstract

AbstractTo develop a field applicable hazardous molecular detection system, highly sensitive and multiplex detection capability is required for practical utilization. Here, a paper‐based 3D spiky needle‐clustered gold grown on silver (Ag@Au) plasmonic nanoarchitecture (3D‐SNCP) is fabricated through whole solution process. The developed substrate is investigated by scanning electron microscopy (SEM), transmission electron microscopy (TEM) and X‐ray diffraction (XRD) to find out morphological development mechanism. Also, finite‐domain time difference (FDTD) simulation is conducted for the observation of electromagnetic field (E‐field) distribution. After surface‐enhanced Raman scattering (SERS) characterization, the 3D‐SNCP is utilized for ultra‐sensitive and multiplex hazardous molecular detection, such as bipyridine pesticides including paraquat (PQ), diquat (DQ), and difenzoquat (DIF). Then, each of pesticide molecular Raman signals are trained by a machine learning technique of multinomial logistic regression (MLR), followed by multiplex classificationf of blank, PQ, DQ, DIF, and four mixture types of each pesticide, spiked in real agricultural matrix. The developed 3D‐SNCP substrate combined with the machine learning method successfully verifies the multiple pesticides and it is expected to be applied for various hazardous molecular detection in much complicated matrix environments.

Funder

National Research Foundation

National Research Council of Science and Technology

Korea Institute of Materials Science

Publisher

Wiley

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