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Validation of chemometric models for the determination of deoxynivalenol on maize by mid-infrared spectroscopy

机译:中红外光谱法测定玉米中脱氧雪腐酚化学模型的验证

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摘要

Validation methods for chemometric models are presented, which are a necessity for the evaluation of model performance and prediction ability. Reference methods with known performance can be employed for comparison studies. Other validation methods include test set and cross validation, where some samples are set aside for testing purposes. The choice of the testing method mainly depends on the size of the original dataset. Test set validation is suitable for large datasets (>50), whereas cross validation is the best method for medium to small datasets (<50). In this study the K-nearest neighbour algorithm (KNN) was used as a reference method for the classification of contaminated and blank corn samples. A Partial least squares (PLS) regression model was evaluated using full cross validation. Mid-Infrared spectra were collected using the attenuated total reflection (ATR) technique and the fingerprint range (800–1800 cm−1) of 21 maize samples that were contaminated with 300 – 2600 µg/kg deoxynivalenol (DON) was investigated. Separation efficiency after principal component analysis/cluster analysis (PCA/CA) classification was 100%. Cross validation of the PLS model revealed a correlation coefficient of r=0.9926 with a root mean square error of calibration (RMSEC) of 95.01. Validation results gave an r=0.8111 and a root mean square error of cross validation (RMSECV) of 494.5 was calculated. No outliers were reported.
机译:提出了化学计量学模型的验证方法,这是评估模型性能和预测能力的必要条件。性能已知的参考方法可用于比较研究。其他验证方法包括测试集和交叉验证,其中一些样本留作测试用途。测试方法的选择主要取决于原始数据集的大小。测试集验证适用于大型数据集(> 50),而交叉验证是中小型数据集(<50)的最佳方法。在这项研究中,K近邻算法(KNN)被用作对受污染和空白玉米样品进行分类的参考方法。使用完全交叉验证对偏最小二乘(PLS)回归模型进行了评估。使用衰减全反射(ATR)技术收集中红外光谱,对21个受300 – 2600 µg / kg脱氧雪腐酚(DON)污染的玉米样品的指纹范围(800–1800 cm-1 )为调查。主成分分析/聚类分析(PCA / CA)分类后的分离效率为100%。 PLS模型的交叉验证显示相关系数为r = 0.9926,校准的均方根误差(RMSEC)为95.01。验证结果为r = 0.8111,交叉验证的均方根误差(RMSECV)为494.5。没有异常值的报道。

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