Identifying Baicalin Concentration in Scutellaria Spray Drying Powder With Disturbed Terahertz Spectra Based on Gaussian Mixture Model.

IF 2.3 3区 化学 Q3 CHEMISTRY, ANALYTICAL
Journal of Analytical Methods in Chemistry Pub Date : 2024-11-20 eCollection Date: 2024-01-01 DOI:10.1155/jamc/3858763
Yizhang Li, Xiaodi Dong, Guiyun Cao, Yongbin Guo, Zhongmin Wang, Xiuwei Yang, Dongyue Han, Zhaoqing Meng
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Abstract

Baicalin concentration is concerned in manufacture of scutellaria spray drying powder as a traditional Chinese medicine, and the quality control based on high-performance liquid chromatography is inconvenience. In this study, terahertz time domain spectroscopy was employed to achieve quality control of scutellaria spray drying powder; however, an acute difficulty was found that terahertz spectra overlapped due to the disturbance in both content matrix and measurement error. In this study, similar terahertz spectra of scutellaria spray drying powder were classified with the help of Gaussian mixture model and built a classifier based on probability feature instead of spectral features conventionally employed in previous investigations. To explore the feasibility of GMM, principal component analysis was given, indicating that it is possible to train GMM with original features and proper principal components. Probable advantage of training GMM based on PCA feature was discussed and so it was with the capacity of the model to identify the linear combined spectra by comparing the performance of GMM and a decision tree model. Above all, the reason why GMM shows potential in the analysis of TCM terahertz spectra was illustrated by comparing the thought of discriminative model and generative model. This study implied that generative model may have natural advantage of overcoming the inherent disturbance of terahertz spectroscopy, which would be promising in future studies.

基于高斯混合模型的干扰太赫兹光谱鉴别黄芩喷雾干燥剂中黄芩苷的含量。
中药黄芩喷雾干燥粉生产中涉及黄芩苷的浓度问题,采用高效液相色谱法进行质量控制不方便。本研究采用太赫兹时域光谱技术对黄芩喷雾干燥粉进行质量控制;然而,由于含量矩阵的干扰和测量误差的影响,太赫兹光谱的重叠出现了严重的困难。本研究利用高斯混合模型对黄芩喷雾干燥粉的相似太赫兹光谱进行分类,建立了基于概率特征的分类器,取代了以往研究中常用的光谱特征。为了探索GMM的可行性,给出了主成分分析,表明用原始特征和合适的主成分训练GMM是可能的。通过比较GMM和决策树模型的性能,讨论了基于PCA特征训练GMM的可能优势,以及模型识别线性组合谱的能力。最后,通过对判别模型和生成模型思想的比较,说明了GMM在中医太赫兹光谱分析中具有潜力的原因。本研究表明,生成模型在克服太赫兹光谱固有干扰方面具有天然优势,在未来的研究中具有广阔的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Analytical Methods in Chemistry
Journal of Analytical Methods in Chemistry CHEMISTRY, ANALYTICAL-ENGINEERING, CIVIL
CiteScore
4.80
自引率
3.80%
发文量
79
审稿时长
6-12 weeks
期刊介绍: Journal of Analytical Methods in Chemistry publishes papers reporting methods and instrumentation for chemical analysis, and their application to real-world problems. Articles may be either practical or theoretical. Subject areas include (but are by no means limited to): Separation Spectroscopy Mass spectrometry Chromatography Analytical Sample Preparation Electrochemical analysis Hyphenated techniques Data processing As well as original research, Journal of Analytical Methods in Chemistry also publishes focused review articles that examine the state of the art, identify emerging trends, and suggest future directions for developing fields.
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