Quadram Institute Bioscience, Norwich Research Park, Colney, Norwich NR4 7UQ, UK.
Centre National de l'Energie des Sciences et des Techniques Nucléaires (CNESTEN) Rabat, Morocco.
Food Chem. 2022 Feb 15;370:131333. doi: 10.1016/j.foodchem.2021.131333. Epub 2021 Oct 5.
Low field (60 MHz) H NMR spectroscopy was used to analyse a large (n = 410) collection of edible oils, including olive and argan, in an authenticity screening scenario. Experimental work was carried out on multiple spectrometers at two different laboratories, aiming to explore multivariate model stability and transfer between instruments. Three modelling methods were employed: Partial Least Squares Discriminant Analysis, Random Forests, and a One Class Classification approach. Clear inter-instrument differences were observed between replicated data collections, sufficient to compromise effective transfer of models based on raw data between instruments. As mitigations to this issue, various data pre-treatments were investigated: Piecewise Direct Standardisation, Standard Normal Variates, and Rank Transformation. Datasets comprised both phase corrected and magnitude spectra, and it was found that that the latter spectral form may offer some advantages in the context of pattern recognition and classification modelling, particularly when used in combination with the Rank Transformation pre-treatment.
低场(60MHz)核磁共振波谱法被用于在真实性筛选场景中分析大量(n=410)食用油脂,包括橄榄油和阿甘油。实验工作在两个不同实验室的多台光谱仪上进行,旨在探索多变量模型稳定性和仪器间的转移。采用了三种建模方法:偏最小二乘判别分析、随机森林和单类分类方法。在重复数据采集之间观察到了明显的仪器间差异,足以影响基于原始数据在仪器之间有效转移模型。作为对此问题的缓解,研究了各种数据预处理方法:分段直接标准化、标准正态变量和秩变换。数据集包括相位校正和幅度谱,研究发现,在后一种谱形式下,在模式识别和分类建模方面可能具有某些优势,特别是与秩变换预处理结合使用时。