结合机器学习算法的HS-GC-IMS罂粟壳类似物溯源与鉴别

IF 3.8 2区 化学 Q1 BIOCHEMICAL RESEARCH METHODS
Yinghua Qi, Junchao Ma, Mingyuan Lei, Hongbin Guo, Xuebo Li, Yuhao Song, Wenhui Lu, Xinhua Lv, Nianfeng Sun
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引用次数: 0

摘要

非法掺假一直是食品安全中的一个重要问题,成为法医学研究的热点。这种情况导致对有效探测和监测技术的需求增加。罂粟壳是毒品的重要来源,在与毒品有关的案件中,准确追踪和鉴定其类似物至关重要。本研究采用顶空-气相色谱-离子迁移谱法(HS-GC-IMS)对6种罂粟壳类似物(OPSA)中挥发性化合物的特征进行了表征,并通过集成机器学习算法建立了准确的来源溯源模型。共鉴定出213种挥发性化合物,其中酯类、酮类、醛类、醇类和烯烃是含量最多的化合物。此外,基于HS-GC-IMS数据集,建立了正交偏最小二乘判别分析(OPLS-DA)和随机森林模型两种有监督机器学习算法分类模型来预测OPSA的类别,并与无监督模型进行了比较。采用随机森林分类模型,识别出显著的挥发性化合物特征,提高了效率。此外,该模型的外袋误差值为0,表明该模型具有良好的OPSA跟踪和识别预测能力。我们的研究结果表明,HS-GC-IMS与机器学习的集成有望提高OPSA类别追踪和识别的效率和准确性,从而为诉讼和司法流程提供理论支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Traceability and discrimination of opium poppy shell analogues using HS-GC-IMS combined with machine learning algorithms.

Illegal adulteration has been a critical issue in food safety, emerging as a focal point in forensic science. This situation has led to an increased demand for effective detection and monitoring technologies. Opium poppy shells are a critical source of drugs, and the accurate tracing and identification of their analogues are essential in drug-related cases. The features of volatile compounds in six opium poppy shell analogues (OPSA) were characterized using headspace-gas chromatography-ion mobility spectrometry (HS-GC-IMS) in this study, and an accurate model for origin tracing was established through the integration of machine learning algorithms. A total of 213 volatile compounds were accurately identified, with esters, ketones, aldehydes, alcohols, and alkenes being the most abundant compounds. Additionally, two supervised machine learning algorithm classification models were established based on the HS-GC-IMS dataset to predict the categories of OPSA, including the orthogonal partial least squares discriminant analysis (OPLS-DA) and random forest models, and were subsequently compared with unsupervised models. By employing the random forest classification model, significant volatile compound characteristics were recognized, resulting in enhanced efficiency. Furthermore, the model achieved an out-of-bag (OOB) error value of 0, indicating excellent predictive capability for tracing and distinguishing OPSA. Our research findings indicate that the integration of HS-GC-IMS with machine learning is expected to enhance the efficiency and accuracy of tracing and identifying the categories of OPSA, thereby providing theoretical support for litigation and judicial processes.

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来源期刊
CiteScore
8.00
自引率
4.70%
发文量
638
审稿时长
2.1 months
期刊介绍: Analytical and Bioanalytical Chemistry’s mission is the rapid publication of excellent and high-impact research articles on fundamental and applied topics of analytical and bioanalytical measurement science. Its scope is broad, and ranges from novel measurement platforms and their characterization to multidisciplinary approaches that effectively address important scientific problems. The Editors encourage submissions presenting innovative analytical research in concept, instrumentation, methods, and/or applications, including: mass spectrometry, spectroscopy, and electroanalysis; advanced separations; analytical strategies in “-omics” and imaging, bioanalysis, and sampling; miniaturized devices, medical diagnostics, sensors; analytical characterization of nano- and biomaterials; chemometrics and advanced data analysis.
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