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Pure Component Selectivity Analysis of Multivariate Calibration Models from Near-Infrared Spectra

机译:基于近红外光谱的多元校正模型的纯组分选择性分析

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摘要

A novel procedure is proposed as a method to characterize the chemical basis of selectivity for multivariate calibration models. This procedure involves submitting pure component spectra of both the target analyte and suspected interferences to the calibration model in question. The resulting model output is analyzed and interpreted in terms of the relative contribution of each component to the predicted analyte concentration. The utility of this method is illustrated by an analysis of calibration models for glucose, sucrose, and maltose. Near-infrared spectra are collected over the 5000-4000-cm~(-1) spectral range for a set of ternary mixtures of these sugars. Partial leastsquares (PLS) calibration models are generated for each component, and these models provide selective responses for the targeted analytes with standard errors of prediction ranging from 0.2 to 0.7 mM over the concentration range of 0.5-50 mM. The concept of the proposed pure component selectivity analysis is illustrated with these models. Results indicate that the net analyte signal is solely responsible for the selectivity of each individual model. Despite strong spectral overlap for these simple carbohydrates, calibration models based on the PLS algorithm provide sufficient selectivity to distinguish these commonly used sugars. The proposed procedure demonstrates conclusively that no component of the sucrose or maltose spectrum contributes to the selective measurement of glucose. Analogous conclusions are possible for the sucrose and maltose calibration models.
机译:提出了一种新颖的方法作为表征多元校准模型选择性化学基础的方法。此过程涉及将目标分析物和疑似干扰物的纯组分光谱提交给所涉及的校准模型。根据每种组分对预测的分析物浓度的相对贡献,分析和解释最终的模型输出。通过分析葡萄糖,蔗糖和麦芽糖的校准模型可以说明该方法的实用性。这些糖的一组三元混合物在5000-4000-cm-1的光谱范围内收集了近红外光谱。为每个组分生成偏最小二乘(PLS)校准模型,并且这些模型在0.5-50 mM的浓度范围内为目标分析物提供选择性响应,标准预测误差为0.2至0.7 mM。这些模型说明了提出的纯组分选择性分析的概念。结果表明净分析物信号完全负责每个单独模型的选择性。尽管这些简单的碳水化合物有很强的光谱重叠,但基于PLS算法的校准模型仍具有足够的选择性来区分这些常用的糖。所提出的程序最终证明,蔗糖或麦​​芽糖光谱中没有任何成分有助于葡萄糖的选择性测量。对于蔗糖和麦芽糖校准模型,类似的结论是可能的。

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