Budevska Boiana O, Sum Stephen T, Jones Todd J
DuPont, Crop Protection, Stine-Haskell Research Center, Newark, Delaware 19711, USA.
Appl Spectrosc. 2003 Feb;57(2):124-31. doi: 10.1366/000370203321535015.
The chemometric techniques of multivariate curve resolution (MCR) are aimed at extracting the spectra and concentrations of individual components present in mixtures using a minimum set of initial assumptions. We present results from the application of alternating least squares (ALS) based MCR to the analysis of hyperspectral images of in situ biological material. The spectra of individual pure components were mathematically extracted and then identified by searching the spectra against a commercial library. No prior information about the chemical composition of the material was used in the data analysis. The spectra recovered by ALS-MCR analysis of an FT-IR microspectroscopic image of an 8-micron-cornkernel section matched very well the spectra of the corn storage protein, zein, and starch. Through the application of MCR, we were able to show the presence of a second spectrally different protein, which could not be easily seen using univariate analysis. These results demonstrate the value of multivariate curve resolution techniques for the analysis of biological tissue. The value of principal components analysis (PCA) for hyperspectral image analysis is also discussed.
多元曲线分辨(MCR)的化学计量学技术旨在使用最少的初始假设集来提取混合物中各个成分的光谱和浓度。我们展示了基于交替最小二乘法(ALS)的MCR在原位生物材料高光谱图像分析中的应用结果。通过数学方法提取了各个纯成分的光谱,然后通过与商业谱库比对光谱来进行识别。数据分析中未使用关于材料化学成分的先验信息。对8微米玉米粒切片的傅里叶变换红外显微光谱图像进行ALS-MCR分析所恢复的光谱与玉米贮藏蛋白、玉米醇溶蛋白和淀粉的光谱非常匹配。通过应用MCR,我们能够显示出另一种光谱不同的蛋白质的存在,而单变量分析则不容易看出这种蛋白质。这些结果证明了多元曲线分辨技术在生物组织分析中的价值。还讨论了主成分分析(PCA)在高光谱图像分析中的价值。