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A bootstrap-based strategy for spectral interval selection in PLS regression

机译:PLS回归中的基于引导策略的频谱间隔选择

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摘要

Bootstrap-based methods have been applied for spectral variable selection in near (NIR) and mid-infrared (MIR) spectroscopy applications. In this paper, an extension of those methods for the selection of spectral intervals instead of single spectral variables is proposed. This approach, interval partial least square (PLS)-Bootstrap (iPLS-Bootstrap), was compared against the PLS-Bootstrap method and the use of the whole spectral region for model development. These methods were tested on a NIR spectral dataset obtained from at-line monitoring of an industrial fermentation process, by correlating the spectra with the concentration of the active pharmaceutical ingredient (API). The performance of the models was evaluated based on the predictive ability for both cross-validation and external validation. For the dataset used, iPLS-Bootstrap enabled to improve the model predictive ability, with a greater impact on external validation. The decrease observed in RMSEP relative to the full-spectrum and PLS-Bootstrap model was, respectively, 14 and 6%.
机译:基于引导的方法已应用于近(NIR)和中红外(MIR)光谱应用中的光谱变量选择。在本文中,提出了这些方法的扩展,用于选择光谱间隔而不是单谱变量的选择。将这种方法,间隔部分最小二乘(PLS)-BOOTSTRAP(IPLS-BOOTSTRAP)与PLS-Bootstrap方法进行比较,并使用整个光谱区域进行模型开发。通过将光谱与活性药物成分(API)的浓度相关联,在从工业发酵过程的达线监测获得的NIR光谱数据集上测试这些方法。根据交叉验证和外部验证的预测能力评估模型的性能。对于使用的数据集,IPLS-Bootstrap启用以提高模型预测能力,对外部验证产生更大的影响。 RMSEP相对于全频谱和PLS-Bootstrap模型中观察到的减少分别为14和6%。

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