Yilin Dong , Jiaying Hu , Jiali Jin , Haibo Zhou , Shaoyue Jin , Danting Yang
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引用次数: 0
摘要
表面增强拉曼散射因其高灵敏度、快速、非破坏性和成本效益高而在医药和食品领域有着广泛的应用。机器学习的集成利用了 SERS 的自主学习能力和出色的数据处理能力,实现了准确、灵敏的定性和定量分析,从而增强了 SERS 的实际应用。本综述首先介绍了 SERS,然后讨论了数据收集和预处理、特征提取以及机器学习模型中的算法。然后,它探讨了 ML 辅助 SERS 在食品安全方面的最新应用,重点是检测添加剂、识别细菌和分析内部成分。在生物医学分析领域,综述涵盖了 DNA、微生物、生物标记物识别以及生物液体和药物分析方面的进展。最后,报告对当前的研究进行了总结,并对 ML 辅助 SERS 在这些领域的未来应用进行了展望。
Advances in machine learning-assisted SERS sensing towards food safety and biomedical analysis
Surface-enhanced Raman scattering, has extensive applications in the fields of medicine and food due to its high-sensitivity, speed, non-destructive nature, and cost-effectiveness. The integration of machine learning enhances the practical application of SERS by leveraging its autonomous learning capabilities and exceptional data processing power to achieve accurate and sensitive qualitative and quantitative analysis. This review commences with an introduction to SERS and progresses through discussions on data collection and pre-processing, feature extraction, and algorithms in machine learning models. It then examines the recent application of ML-assisted SERS in food safety, focusing on detecting additives, identifying bacteria, and analyzing internal components. In the realm of biomedical analysis, the review covers advancements in identifying DNA, microorganisms, biomarkers, and analyzing biological fluids and drugs. Finally, it provides a summary of current research and offers perspectives on the future application of ML-assisted SERS in these fields.
期刊介绍:
TrAC publishes succinct and critical overviews of recent advancements in analytical chemistry, designed to assist analytical chemists and other users of analytical techniques. These reviews offer excellent, up-to-date, and timely coverage of various topics within analytical chemistry. Encompassing areas such as analytical instrumentation, biomedical analysis, biomolecular analysis, biosensors, chemical analysis, chemometrics, clinical chemistry, drug discovery, environmental analysis and monitoring, food analysis, forensic science, laboratory automation, materials science, metabolomics, pesticide-residue analysis, pharmaceutical analysis, proteomics, surface science, and water analysis and monitoring, these critical reviews provide comprehensive insights for practitioners in the field.