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Uninformative variable elimination for improvement of successive projections algorithm on spectral multivariable selection with different calibration algorithms for the rapid and non-destructive determination of protein content in dried laver

机译:无信息变量消除,用于连续投影算法对光谱多变量选择的改进,具有不同的校正算法,可以快速,无损地确定干紫菜中的蛋白质含量

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The potential of using partial least square based uninformative variable elimination algorithm (UVEPLS) on successive projections algorithm (SPA) for spectral multivariable selection was evaluated. A case study was done on the visible and shortwave-near infrared (Vis-SNIR) spectroscopy for the rapid and non-destructive determination of protein content in dried laver. Three calibration algorithms, namely multiple linear regression (MLR), partial least square regression (PLS) and least-square support vector machine (LS-SVM), were used for the model establishment based on the selected variables of SPA, UVEPLS and UVEPLS-SPA, respectively. A total of 175 samples were prepared for the calibration (n = 117) and prediction (n = 58) sets. The performances of different pretreatments were compared. Both linear calibration algorithms of MLR and PLS and non-linear calibration algorithms of LS-SVM with linear kernel and RBF kernel obtained similar results based on certain variable selection strategies of SPA, UVEPLS and UVEPLS-SPA. The average improvement percentage of RPD values of four calibration algorithms was 38.66% by calculating SPA on UVEPLS processed variables. Therefore there was much improvement of using UVEPLS on SPA spectral multivariable selection with both linear and nonlinear calibration algorithms in this case. Moreover, the RPD values of both linear and non-linear models based on the thirteen selected variables of UVEPLS-SPA show that coarse quantitative predictions of the protein determination in dried laver is possible based on Vis-SNIR spectra. We hope that the results obtained in this study will help both further chemometric (multivariate selection and calibration analysis) investigations and investigations in the sphere of applied vibrational (Near infrared, Mid-infrared and Raman) spectroscopy of sophisticated multicomponent systems...
机译:评估了在连续投影算法(SPA)上使用基于偏最小二乘的无信息变量消除算法(UVEPLS)进行频谱多变量选择的潜力。对可见光和短波近红外(Vis-SNIR)光谱进行了案例研究,以快速无损测定干紫菜中的蛋白质含量。根据SPA,UVEPLS和UVEPLS-S的选定变量,使用三种校准算法,即多元线性回归(MLR),偏最小二乘回归(PLS)和最小二乘支持向量机(LS-SVM)进行模型建立。 SPA,分别。总共准备了175个样品用于校准(n = 117)和预测(n = 58)组。比较了不同预处理的性能。基于SPA,UVEPLS和UVEPLS-SPA的某些变量选择策略,MLR和PLS的线性校准算法以及具有线性核和RBF核的LS-SVM的非线性校准算法均获得了相似的结果。通过对UVEPLS处理变量进行SPA计算,四种校准算法的RPD值平均提高百分比为38.66%。因此,在这种情况下,将UVEPLS与线性和非线性校准算法一起用于SPA光谱多变量选择有很多改进。此外,基于UVEPLS-SPA的13个选定变量的线性和非线性模型的RPD值均表明,基于Vis-SNIR光谱,干燥紫菜中蛋白质测定的粗定量预测是可能的。我们希望本研究中获得的结果将有助于进一步的化学计量学(多变量选择和校准分析)研究,以及复杂的多组分系统的振动光谱(近红外,中红外和拉曼光谱)的应用领域。

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