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Quantification and handling of nonlinearity in Raman micro-spectrometry of pharmaceuticals

机译:拉曼微谱法中非线性的量化和处理药物的微谱法

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This work demonstrates how nonlinearity in Raman spectrometry of pharmaceuticals can be handled and accurate quantification can be achieved by applying certain chemometric methods including variable selection. Such approach proved to be successful even if the component spectra are very similar or spectral intensities of the constituents are strongly different. The relevant examples are: blends of two crystalline forms of carvedilol ("CRYST-PM" blend) and a three-component pharmaceutical model system ("PHARM-TM" blend). The widely used classical least squares regression (CLS) and partial least squares regression (PLS) quantification methods provided relatively poor root mean squared error of prediction (RMSEP) values: approximately 2-4% and 4-10% for CRYST-PM and PHARM-TM respectively. The residual plots of these models indicated the nonlinearity of the preprocessed data sets. More accurate quantitative results could be achieved with properly applied variable selection methods. It was observed that variable selection methods discarded the most intensive bands while less intensive ones were retained as the most informative spectral ranges. As a result not only the accuracy of concentration determination was enhanced, but the linearity of models was improved as well. This indicated that nonlinearity occurred especially at the intensive spectral bands. Other methods developed for handling nonlinearity were also capable of adapting to the spectral nature of both data sets. The RMSEP could be decreased this way to 1% in CRYST-PM and 3-6% in PHARM-TM. Raman maps with accurate real concentrations could be prepared this way. All quantitative models were compared by the non-parametric sum of ranking differences (SRD) method, which also proved that models based on variable selection or nonlinear methods provide better quantification. (C) 2016 Elsevier B.V. All rights reserved.
机译:这项工作表明,通过应用包括可变选择的某些化学计量方法,可以处理药物的拉曼光谱法的非线性如何处理和准确的定量。即使组分光谱非常相似或成分的光谱强度,这种方法也是成功的。相关实例是:两种结晶形式的卡维地洛(“结晶PM”混合物)和三组分药物模型系统(“药物TM”混合物)的共混物。广泛使用的经典最小二乘回归(CLS)和局部最小二乘回归(PLS)量化方法提供了预测(RMSEP)值的相对较差的根均方误差:结晶PM和Pharm的2-4%和4-10%分别为-tm。这些模型的剩余曲线表明预处理数据集的非线性。通过适当应用的可变选择方法可以实现更准确的定量结果。观察到,可变选择方法丢弃了最强烈的频段,而保留了较少的密集型频谱范围。结果不仅提高了浓度测定的准确性,而且还提高了模型的线性。这表明非线性尤其发生在密集的光谱带中。用于处理非线性的其他方法也能够适应两个数据集的光谱性质。 RMSEP可以将这种方式降低至1%的结晶PM和3-6%的药物TM。可以通过这种方式制备具有精确实际浓度的拉曼地图。通过非参数的排名差异(SRD)方法进行比较所有定量模型,这也证明了基于可变选择或非线性方法的模型提供了更好的量化。 (c)2016 Elsevier B.v.保留所有权利。

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