Gendrin Christelle, Roggo Yves, Collet Christophe
F. Hoffmann-La Roche A.G., Basel, Switzerland; LSIIT - UMR CNRS 7005, Strasbourg University, 67000 Strasbourg, France.
Talanta. 2007 Oct 15;73(4):733-41. doi: 10.1016/j.talanta.2007.04.054. Epub 2007 May 10.
Near-infrared imaging systems simultaneously record spectral and spatial information. Each measurement generates a data cube containing several thousand spectra. Chemometric methods are therefore required to extract qualitative and quantitative information. The aim of this study was to determine the feasibility of quantifying active pharmaceutical ingredient (API) and excipient content in pharmaceutical formulations using hyperspectral imaging. Two kinds of tablets with a range of API content were analysed: a binary mixture of API and cellulose, and a pharmaceutical formulation with seven different compounds. Two pixel sizes, 10mum/pixel and 40mum/pixel, were compared, together with two types of spectral pretreatment: standard normal variate (SNV) normalization and Savitzky-Golay smoothing. Two methods of extracting concentrations were compared: the partial least squares 2 (PLS2) algorithm, which predicts the content of several compounds simultaneously, and the multivariate classical least squares (CLS) algorithm based on pure compound reference spectra without calibration. Best content predictions were achieved using 40mum/pixel resolution and the PLS2 method with SNV normalized spectra. However, the CLS method extracted distribution maps with higher contrast and was less sensitive to noisy spectra and outliers; its API predictions were also highly correlated to real content, indicating the feasibility of predicting API content using hyperspectral imaging without calibration.
近红外成像系统可同时记录光谱信息和空间信息。每次测量都会生成一个包含数千个光谱的数据立方体。因此,需要采用化学计量学方法来提取定性和定量信息。本研究的目的是确定使用高光谱成像技术对药物制剂中的活性药物成分(API)和辅料含量进行定量分析的可行性。分析了两种具有不同API含量的片剂:API与纤维素的二元混合物,以及含有七种不同化合物的药物制剂。比较了两种像素大小,即10μm/像素和40μm/像素,以及两种光谱预处理方法:标准正态变量(SNV)归一化和Savitzky-Golay平滑处理。比较了两种提取浓度的方法:可同时预测几种化合物含量的偏最小二乘法2(PLS2)算法,以及基于纯化合物参考光谱且无需校准的多元经典最小二乘法(CLS)算法。使用40μm/像素分辨率以及采用SNV归一化光谱的PLS2方法可实现最佳的含量预测。然而,CLS方法提取的分布图对比度更高,对噪声光谱和异常值不太敏感;其对API的预测结果也与实际含量高度相关,这表明无需校准即可使用高光谱成像技术预测API含量的可行性。