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QCL 红外光谱结合机器学习可作为一种有用的工具,用于对不同品牌的对乙酰氨基酚片剂进行分类。

QCL Infrared Spectroscopy Combined with Machine Learning as a Useful Tool for Classifying Acetaminophen Tablets by Brand.

机构信息

Mechanical Engineering Program, School of Engineering, Universidad Tecnológica de Bolívar, Parque Industrial y Tecnológico Carlos Vélez Pombo, Cartagena 130001, Colombia.

Chemistry Program, Department of Natural and Exact Sciences, San Pablo Campus, University of Cartagena, Cartagena 130015, Colombia.

出版信息

Molecules. 2024 Jul 28;29(15):3562. doi: 10.3390/molecules29153562.

Abstract

The development of new methods of identification of active pharmaceutical ingredients (API) is a subject of paramount importance for research centers, the pharmaceutical industry, and law enforcement agencies. Here, a system for identifying and classifying pharmaceutical tablets containing acetaminophen (AAP) by brand has been developed. In total, 15 tablets of 11 brands for a total of 165 samples were analyzed. Mid-infrared vibrational spectroscopy with multivariate analysis was employed. Quantum cascade lasers (QCLs) were used as mid-infrared sources. IR spectra in the spectral range 980-1600 cm were recorded. Five different classification methods were used. First, a spectral search through correlation indices. Second, machine learning algorithms such as principal component analysis (PCA), support vector classification (SVC), decision tree classifier (DTC), and artificial neural network (ANN) were employed to classify tablets by brands. SNV and first derivative were used as preprocessing to improve the spectral information. Precision, recall, specificity, F1-score, and accuracy were used as criteria to evaluate the best SVC, DEE, and ANN classification models obtained. The IR spectra of the tablets show characteristic vibrational signals of AAP and other APIs present. Spectral classification by spectral search and PCA showed limitations in differentiating between brands, particularly for tablets containing AAP as the only API. Machine learning models, specifically SVC, achieved high accuracy in classifying AAP tablets according to their brand, even for brands containing only AAP.

摘要

开发新的活性药物成分 (API) 识别方法是研究中心、制药行业和执法机构的首要任务。在这里,开发了一种用于识别和分类含对乙酰氨基酚 (AAP) 的药物片剂的系统,共分析了 11 个品牌的 15 片,共 165 个样本。采用了具有多变量分析的中红外振动光谱。量子级联激光器 (QCL) 被用作中红外源。记录了光谱范围在 980-1600 cm 之间的 IR 光谱。使用了五种不同的分类方法。首先,通过相关指数进行光谱搜索。其次,使用主成分分析 (PCA)、支持向量分类 (SVC)、决策树分类器 (DTC) 和人工神经网络 (ANN) 等机器学习算法按品牌对片剂进行分类。采用 SNV 和一阶导数作为预处理以提高光谱信息。使用精度、召回率、特异性、F1 分数和准确性作为评估获得的最佳 SVC、DTE 和 ANN 分类模型的标准。片剂的 IR 光谱显示出 AAP 和其他 API 存在的特征振动信号。通过光谱搜索和 PCA 进行的光谱分类在区分品牌方面存在局限性,特别是对于仅含有 AAP 的片剂。机器学习模型,特别是 SVC,在根据品牌对 AAP 片剂进行分类方面取得了很高的准确性,即使是对于仅含有 AAP 的品牌也是如此。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ab0c/11313707/17a202f66ef9/molecules-29-03562-g001.jpg

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