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基于近红外光谱的药物分析单变量校准模型的开发。

Development of a univariate calibration model for pharmaceutical analysis based on NIR spectra.

作者信息

Blanco M, Cruz J, Bautista M

机构信息

Departament de Química, Unitat de Química Analítica, Universitat Autònoma de Barcelona, 08193, Bellaterra, Barcelona, Spain.

出版信息

Anal Bioanal Chem. 2008 Dec;392(7-8):1367-72. doi: 10.1007/s00216-008-2426-9. Epub 2008 Oct 15.

Abstract

Near-infrared spectroscopy (NIRS) has been widely used in the pharmaceutical field because of its ability to provide quality information about drugs in near-real time. In practice, however, the NIRS technique requires construction of multivariate models in order to correct collinearity and the typically poor selectivity of NIR spectra. In this work, a new methodology for constructing simple NIR calibration models has been developed, based on the spectrum for the target analyte (usually the active principle ingredient, API), which is compared with that of the sample in order to calculate a correlation coefficient. To this end, calibration samples are prepared spanning an adequate concentration range for the API and their spectra are recorded. The model thus obtained by relating the correlation coefficient to the sample concentration is subjected to least-squares regression. The API concentration in validation samples is predicted by interpolating their correlation coefficients in the straight calibration line previously obtained. The proposed method affords quantitation of API in pharmaceuticals undergoing physical changes during their production process (e.g. granulates, and coated and non-coated tablets). The results obtained with the proposed methodology, based on correlation coefficients, were compared with the predictions of PLS1 calibration models, with which a different model is required for each type of sample. Error values lower than 1-2% were obtained in the analysis of three types of sample using the same model; these errors are similar to those obtained by applying three PLS models for granules, and non-coated and coated samples. Based on the outcome, our methodology is a straightforward choice for constructing calibration models affording expeditious prediction of new samples with varying physical properties. This makes it an effective alternative to multivariate calibration, which requires use of a different model for each type of sample, depending on its physical presentation.

摘要

近红外光谱法(NIRS)因其能够近乎实时地提供有关药物的质量信息而在制药领域得到了广泛应用。然而,在实际应用中,NIRS技术需要构建多元模型以校正共线性以及近红外光谱通常较差的选择性。在本研究中,基于目标分析物(通常是活性成分,API)的光谱,开发了一种构建简单近红外校准模型的新方法,将其与样品光谱进行比较以计算相关系数。为此,制备了涵盖API适当浓度范围的校准样品并记录其光谱。通过将相关系数与样品浓度相关联而得到的模型进行最小二乘回归。通过在校准直线中内插验证样品的相关系数来预测其API浓度。所提出的方法能够对在生产过程中经历物理变化的药物(例如颗粒剂、包衣片和非包衣片)中的API进行定量。将基于相关系数的所提出方法得到的结果与PLS1校准模型的预测结果进行比较,对于每种类型的样品,PLS1校准模型都需要不同的模型。使用相同模型对三种类型的样品进行分析时,误差值低于1-2%;这些误差与通过对颗粒剂、非包衣片和包衣片应用三个PLS模型所得到的误差相似。基于这一结果,我们的方法是构建校准模型的直接选择,能够快速预测具有不同物理性质的新样品。这使其成为多元校准的有效替代方法,多元校准需要根据每种样品的物理形式使用不同的模型。

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