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Evaluation of the Bitterness of Traditional Chinese Medicines using an E-Tongue Coupled with a Robust Partial Least Squares Regression Method

机译:电子舌与稳健的偏最小二乘回归方法相结合的中药苦味评价

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摘要

To accurately, safely, and efficiently evaluate the bitterness of Traditional Chinese Medicines (TCMs), a robust predictor was developed using robust partial least squares (RPLS) regression method based on data obtained from an electronic tongue (e-tongue) system. The data quality was verified by the Grubb’s test. Moreover, potential outliers were detected based on both the standardized residual and score distance calculated for each sample. The performance of RPLS on the dataset before and after outlier detection was compared to other state-of-the-art methods including multivariate linear regression, least squares support vector machine, and the plain partial least squares regression. Both R2 and root-mean-squares error (RMSE) of cross-validation (CV) were recorded for each model. With four latent variables, a robust RMSECV value of 0.3916 with bitterness values ranging from 0.63 to 4.78 were obtained for the RPLS model that was constructed based on the dataset including outliers. Meanwhile, the RMSECV, which was calculated using the models constructed by other methods, was larger than that of the RPLS model. After six outliers were excluded, the performance of all benchmark methods markedly improved, but the difference between the RPLS model constructed before and after outlier exclusion was negligible. In conclusion, the bitterness of TCM decoctions can be accurately evaluated with the RPLS model constructed using e-tongue data.
机译:为了准确,安全和有效地评估中药(TCM)的苦味,基于从电子舌(电子舌)系统获得的数据,使用鲁棒的偏最小二乘(RPLS)回归方法开发了鲁棒的预测器。数据质量已通过Grubb的测试验证。此外,基于为每个样本计算的标准化残差和分数距离,可以检测到潜在的异常值。将RPLS在异常检测之前和之后在数据集上的性能与其他最新技术进行了比较,这些方法包括多元线性回归,最小二乘支持向量机和纯局部最小二乘回归。记录每个模型的交叉验证(CV)的R 2 和均方根误差(RMSE)。通过四个潜在变量,针对基于包含异常值的数据集构建的RPLS模型,获得了0.3916的稳健RMSECV值(苦味值介于0.63至4.78之间)。同时,使用其他方法构建的模型计算出的RMSECV大于RPLS模型。在排除了六个离群值之后,所有基准方法的性能均得到显着改善,但是离群值排除前后构建的RPLS模型之间的差异可以忽略不计。综上所述,采用电子舌数据建立的RPLS模型可以准确地评价中药汤的苦味。

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