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Rapid Identification of Nine Easily Confused Mineral Traditional Chinese Medicines Using Raman Spectroscopy Based on Support Vector Machine

机译:基于支持向量机的拉曼光谱法快速鉴定九种容易混淆的矿物中药

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Mineral traditional Chinese medicines (TCMs) are natural minerals, mineral processing products, and some fossils of animals or animal bones that can be used as medicines. Mineral TCMs are a characteristic part of TCMs and play a unique role in the development of TCMs. Mineral TCMs are usually identified according to their morphological properties such as shape, color, or smell, but it is difficult to separate TCMs that are similar in appearance or smell. In this study, the feasibility of using Raman spectroscopy combined with support vector machine (SVM) for rapid identification of nine easily confused mineral TCMs, i.e., borax, gypsum fibrosum, natrii sulfas exsiccatus, natrii sulfas, alumen, sal ammoniac, quartz, calcite, and yellow croaker otolith, was investigated. Initially, two methods, characteristic intensity data extraction and principal component analysis (PCA), were performed to reduce the dimensionality of spectral data. The identification model was subsequently built by the SVM algorithm. The 3-fold cross validation (3-CV) accuracy of the SVM model established based on extracting characteristic intensity data from spectra pretreated by first derivation was 98.61%, and the prediction accuracies of the training set and validation set were 100%. As for the PCA-SVM model, when the spectra pretreated by vector normalization and the number of principal components (NPC) is 7, the 3-CV accuracy and prediction accuracies all reached 100%. Both models have good performance and strong prediction capacity. These results demonstrate that Raman spectroscopy combined with a powerful SVM algorithm has great potential for providing an effective and accurate identification method for mineral TCMs.
机译:矿物中药(TCMS)是天然矿物质,矿物加工产品,以及可用作药物的一些动物或动物骨骼。矿物TCMS是TCMS的特征部分,在TCMS的发展中发挥着独特作用。通常根据它们的形态学性质如形状,颜色或气味鉴定矿物TCM,但是难以将类似于外观或气味的TCM分离。在这项研究中,使用拉曼光谱与支持向量机(SVM)的可行性进行快速鉴定九种容易混淆的矿物TCMS,即硼砂,石膏纤维,Natrii Sulfas Exsiccatus,Natrii Sulfas,Alumen,Sal氨,石英,方解石和黄叉铲欧特洛塞特进行了研究。最初,进行了两种方法,特征强度数据提取和主成分分析(PCA)以降低光谱数据的维度。随后由SVM算法构建识别模型。基于第一次推导预处理的光谱提取特征强度数据建立的3倍交叉验证(3-CV)精度为98.61%,训练集和验证集的预测精度为100%。至于PCA-SVM模型,当通过向量标准化进行预处理的光谱和主成分(NPC)的数量为7时,3-CV精度和预测精度均达到100%。这两种型号都具有良好的性能和强烈的预测能力。这些结果表明,拉曼光谱与强大的SVM算法相结合,具有提供有效和准确的矿物TCMS识别方法的潜力。

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