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Investigation of Chemometric Instrumental Transfer Methods for High-Resolution NMR

机译:高分辨率NMR化学计量学仪器转移方法的研究

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The implementation of direct standardization (DS), piecewise direct standardization (PDS), and double-window piecewise direct standardization (DWPDS) instrumental transfer techniques for high-resolution ~(1)H NMR spectral data was explored. The ability to transfer a multivariate calibration model developed for a "master or target" NMR instrument configuration to seven different ("secondary") NMR instrument configurations was measured. Partial least-squares (PLS) calibration of glucose, glycine, and citrate metabolite relative concentrations in model mixtures following mapping of the secondary instrumental configurations using DS, PDS, or DW-PDS instrumental transfer allowed the performance of the different transfer methods to be assessed. Results from these studies suggest that DS and PDS transfer techniques produce similar improvements in the error of prediction compared to each other and provide a significant improvement over standard spectral preprocessing techniques including reference deconvolution and spectral binning. The DS instrumental transfer method produced the largest percent improvement in the predictions of concentrations for these model mixtures but, in general, required that additional transfer calibration standards be used. Limitations of the different instrumental transfer methods with respect to sample subset selection are also discussed.
机译:探索了实现高分辨率〜(1)H NMR光谱数据的直接标准化(DS),分段直接标准化(PDS)和双窗口分段直接标准化(DWPDS)仪器转移技术的实现。测量了将为“主或目标” NMR仪器配置开发的多元校准模型转换为七个不同(“次级”)NMR仪器配置的能力。使用DS,PDS或DW-PDS仪器转移进行二级仪器配置图谱绘制后,模型混合物中葡萄糖,甘氨酸和柠檬酸盐代谢物相对浓度的偏最小二乘(PLS)校准允许评估不同转移方法的性能。这些研究的结果表明,与彼此相比,DS和PDS传输技术在预测误差方面产生了类似的改善,并且比标准光谱预处理技术(包括参考反卷积和光谱合并)提供了显着改善。在这些模型混合物的浓度预测中,DS仪器转移方法产生了最大的百分比提高,但总的来说,需要使用额外的转移校准标准液。还讨论了关于样品子集选择的不同仪器转移方法的局限性。

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