Department of Electronic and Electrical Engineering, University of Sheffield, S1 4DE, UK.
Talanta. 2020 May 1;211:120740. doi: 10.1016/j.talanta.2020.120740. Epub 2020 Jan 13.
This work contributes to the improvement of glucose quantification using near-infrared (NIR), mid-infrared (MIR), and combination of NIR and MIR absorbance spectroscopy by classifying the spectral data prior to the application of regression models. Both manual and automated classification are presented based on three homogeneous classes defined following the clinical definition of the glycaemic ranges (hypoglycaemia, euglycaemia, and hyperglycaemia). For the manual classification, partial least squares and principal component regressions are applied to each class separately and shown to lead to improved quantification results compared to when applying the same regression models for the whole dataset. For the automatic classification, linear discriminant analysis coupled with principal component analysis is deployed, and regressions are applied to each class separately. The results obtained are shown to outperform those of regressions for the entire dataset.
本工作通过在应用回归模型之前对光谱数据进行分类,为使用近红外(NIR)、中红外(MIR)和 NIR 与 MIR 吸收光谱组合进行葡萄糖定量分析做出了贡献。基于根据血糖范围的临床定义(低血糖、正常血糖和高血糖)定义的三个同质类别,提出了手动和自动分类方法。对于手动分类,分别将偏最小二乘和主成分回归应用于每个类别,并表明与将相同回归模型应用于整个数据集相比,可提高定量结果。对于自动分类,采用线性判别分析与主成分分析相结合,并分别对每个类别应用回归。结果表明,与整个数据集的回归相比,该方法的性能更优。