Multiplex Detection of Foodborne Pathogens using 3D Nanostructure Swab and Deep Learning‐Based Classification of Raman Spectra

Author:

Kang Hyunju12,Lee Junhyeong3,Moon Jeong14,Lee Taegu3,Kim Jueun56,Jeong Yeonwoo1,Lim Eun‐Kyung178,Jung Juyeon18,Jung Yongwon2,Lee Seok Jae6,Lee Kyoung G.6,Ryu Seunghwa3,Kang Taejoon18ORCID

Affiliation:

1. Bionanotechnology Research Center Korea Research Institute of Bioscience and Biotechnology (KRIBB) 125 Gwahak‐ro, Yuseong‐gu Daejeon 34141 Republic of Korea

2. Department of Chemistry Korea Advanced Institute of Science and Technology (KAIST) 291 Daehak‐ro, Yuseong‐gu Daejeon 34141 Republic of Korea

3. Department of Mechanical Engineering KAIST 291 Daehak‐ro, Yuseong‐gu Daejeon 34141 Republic of Korea

4. Department of Biomedical Engineering University of Connecticut Health Center Farmington CT 06032 USA

5. Department of Energy Resources and Chemical Engineering Kangwon National University 346 Jungang‐ro Samcheok Gangwon‐do 25913 Republic of Korea

6. Division of Nano‐Bio Sensors/Chips Development National NanoFab Center (NNFC) 291 Daehak‐ro, Yuseong‐gu Daejeon 34141 Republic of Korea

7. Department of Nanobiotechnology KRIBB School of Biotechnology University of Science and Technology (UST) 217 Gajeong‐ro, Yuseong‐gu Daejeon 34113 Republic of Korea

8. School of Pharmacy Sungkyunkwan University (SKKU) 2066 Seobu‐ro Suwon Gyeonggi‐do 16419 Republic of Korea

Abstract

AbstractProactive management of foodborne illness requires routine surveillance of foodborne pathogens, which requires developing simple, rapid, and sensitive detection methods. Here, a strategy is presented that enables the detection of multiple foodborne bacteria using a 3D nanostructure swab and deep learning‐based Raman signal classification. The nanostructure swab efficiently captures foodborne pathogens, and the portable Raman instrument directly collects the Raman signals of captured bacteria. a deep learning algorithm has been demonstrated, 1D convolutional neural network with binary labeling, achieves superior performance in classifying individual bacterial species. This methodology has been extended to mixed bacterial populations, maintaining accuracy close to 100%. In addition, the gradient‐weighted class activation mapping method is used to provide an investigation of the Raman bands for foodborne pathogens. For practical application, blind tests are conducted on contaminated kitchen utensils and foods. The proposed technique is validated by the successful detection of bacterial species from the contaminated surfaces. The use of a 3D nanostructure swab, portable Raman device, and deep learning‐based classification provides a powerful tool for rapid identification (≈5 min) of foodborne bacterial species. The detection strategy shows significant potential for reliable food safety monitoring, making a meaningful contribution to public health and the food industry.

Funder

Ministry of Trade, Industry and Energy

Publisher

Wiley

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