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Discrimination of tomatoes bred by spaceflight mutagenesis using visibleear infrared spectroscopy and chemometrics

机译:使用可见/近红外光谱和化学计量学对通过航天诱变育种的西红柿进行区分

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Visibleear infrared spectroscopy (Vis/NIR) based on sensitive wavelengths (SWs) and chemometrics was proposed to discriminate different tomatoes bred by spaceflight mutagenesis from their leafs or fruits (green or mature). The tomato breeds were mutant M-1, M-2 and their parent. Partial least squares (PLS) analysis and least squares-support vector machine (LS-SVM) were implemented for calibration models. PLS analysis was implemented for calibration models with different wavebands including the visible region (400-700 nm) and the near infrared region (700-1000 nm). The best PLS models were achieved in the visible region for the leaf and green fruit samples and in the near infrared region for the mature fruit samples. Furthermore, different latent variables (4-8 LVs for leafs, 5-9 LVs for green fruits, and 4-9 LVs for mature fruits) were used as inputs of LS-SVM to develop the LV-LS-SVM models with the grid search technique and radial basis function (RBF) kernel. The optimal LV-LS-SVM models were achieved with six LVs for the leaf samples, seven LVs for green fruits, and six LVs for mature fruits, respectively, and they outperformed the PLS models. Moreover, independent component analysis (ICA) was executed to select several SWs based on loading weights. The optimal LS-SVM model was achieved with SWs of 550-560 nm, 562-574 nm, 670-680 nm and 705-715 nm for the leaf samples; 548-556 nm, 559-564 nm, 678-685 nm and 962-974 nm for the green fruit samples; and 712-718 nm, 720-729 nm, 968-978 nm and 820-830 nm for the mature fruit samples. All of them had better performance than PLS and LV-LS-SVM, with the parameters of correlation coefficient (r(p)), root mean square error of prediction (RMSEP) and bias of 0.9792, 0.2632 and 0.0901 based on leaf discrimination, 0.9837, 0.2783 and 0.1758 based on green fruit discrimination, 0.9804, 0.2215 and -0.0035 based on mature fruit discrimination, respectively. The overall results indicated that ICA was an effective way for the selection of SWs, and the Vis/NIR combined with LS-SVM models had the capability to predict the different breeds (mutant M-1, mutant M-2 and their parent) of tomatoes from leafs and fruits. (C) 2015 Elsevier B.V. All rights reserved.
机译:提出了基于敏感波长(SWs)和化学计量学的可见/近红外光谱(Vis / NIR),以区分通过航天诱变培育的不同番茄的叶子或果实(绿色或成熟)。番茄品种是突变体M-1,M-2及其亲本。偏最小二乘(PLS)分析和最小二乘支持向量机(LS-SVM)已实现用于校准模型。对具有不同波段的校准模型实施了PLS分析,包括可见区(400-700 nm)和近红外区(700-1000 nm)。叶片和绿色水果样品的可见区域和成熟水果样品的近红外区域均获得了最佳的PLS模型。此外,将不同的潜在变量(叶子的4-8 LV,绿色水果的5-9 LV和成熟水果的4-9 LV)用作LS-SVM的输入,以使用网格开发LV-LS-SVM模型搜索技术和径向基函数(RBF)内核。最佳的LV-LS-SVM模型分别以叶子样品的6个LV,绿色水果的7个LV和成熟果实的6个LV实现,其性能优于PLS模型。此外,还执行了独立成分分析(ICA)以根据负载权重选择多个SW。叶片样品的SW分别为550-560 nm,562-574 nm,670-680 nm和705-715 nm,从而获得了最佳的LS-SVM模型;绿色水果样品为548-556 nm,559-564 nm,678-685 nm和962-974 nm;成熟水果样品的712-718 nm,720-729 nm,968-978 nm和820-830 nm。它们均具有比PLS和LV-LS-SVM更好的性能,其相关系数(r(p)),预测的均方根误差(RMSEP)和基于叶片辨别力的偏差为0.9792、0.2632和0.0901,根据绿色水果判别,分别为0.9837、0.2783和0.1758,根据成熟水果判别分别为0.9804、0.2215和-0.0035。总体结果表明,ICA是选择SW的有效方法,Vis / NIR与LS-SVM模型结合具有预测不同品种(突变M-1,突变M-2及其亲本)的能力。西红柿从叶子和果实。 (C)2015 Elsevier B.V.保留所有权利。

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