Surface‐Enhanced Raman Scattering Imaging Assisted by Machine Learning Analysis: Unveiling Pesticide Molecule Permeation in Crop Tissues

Surface‐enhanced Raman scattering (SERS) imaging technology faces significant technical bottlenecks in ensuring balanced spatial resolution, preventing image bias induced by substrate heterogeneity, accurate quantitative analysis, and substrate preparation that enhances Raman signal strength on a gl...

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Veröffentlicht in:Advanced Science 2024-08, Vol.11 (32), p.e2405416-n/a
Hauptverfasser: Wang, Xiaotong, Sun, Xiaomeng, Liu, Zhehan, Zhao, Yue, Wu, Guangrun, Wang, Yunpeng, Li, Qian, Yang, Chunjuan, Ban, Tao, Liu, Yu, Huang, Jian‐an, Li, Yang
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Sprache:eng
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Zusammenfassung:Surface‐enhanced Raman scattering (SERS) imaging technology faces significant technical bottlenecks in ensuring balanced spatial resolution, preventing image bias induced by substrate heterogeneity, accurate quantitative analysis, and substrate preparation that enhances Raman signal strength on a global scale. To systematically solve these problems, artificial intelligence techniques are applied to analyze the signals of pesticides based on 3D and dynamic SERS imaging. Utilizing perovskite/silver nanoparticles composites (CaTiO3/Ag@BONPs) as enhanced substrates, enabling it not only to cleanse pesticide residues from the surface to pulp of fruits and vegetables, but also to investigate the penetration dynamics of an array of pesticides (chlorpyrifos, thiabendazole, thiram, and acetamiprid). The findings challenge existing paradigms, unveiling a previously unnoticed weakening process during pesticide invasion and revealing the surprising permeability of non‐systemic pesticides. Of particular note is easy to overlook that the combined application of pesticides can inadvertently intensify their invasive capacity due to pesticide interactions. The innovative study delves into the realm of pesticide penetration, propelling a paradigm shift in the understanding of food safety. Meanwhile, this strategy provides strong support for the cutting‐edge application of SERS imaging technology and also brings valuable reference and enlightenment for researchers in related fields. Artificial intelligence techniques are presented as the first‐ever application to analyze images, pioneering an innovative, visualization strategy for pesticide penetration based on 3D and dynamic SERS imaging with perovskite/silver nanoparticles composites (CaTiO3/Ag@BONPs). The permeation of a series of pesticides (chlorpyrifos, thiabendazole, thiram, and acetamiprid) is investigated and quantitatively analyzed to achieve rapid identification and prediction of pesticide spectra.
ISSN:2198-3844
2198-3844
DOI:10.1002/advs.202405416