Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
1250727 | Vibrational Spectroscopy | 2009 | 5 Pages |
Abstract
A universal NIR model for identification of 24 types of penicillins for injection has been developed. A total of 194 batches of 24 products from 87 manufacturers in China were used in the study. The classification model is a principal component analysis (PCA) based model consisting of a primary identification library with four sub-libraries. The spectral frequency regions used were 6000-6400Â cmâ1 and 8400-8900Â cmâ1 in the main library, 6000-6800Â cmâ1 in sub-library 1, 4100-12,000Â cmâ1 in sub-libraries 2 and 3, and 6200-6400Â cmâ1 and 4700-5000Â cmâ1 in sub-library 4. The data preprocessing method is the first derivative with nine-point smoothing followed by vector normalization. The distances between spectra were calculated using factors 2-5 for the primary identification library, factors 4-7 for sub-library 1, and factor 2 for sub-libraries 2-4. The specificity of the model was validated, and it had a correct identification rate of approximately 99%. This study has not only confirmed, but also improved the strategy described in our early report (Chong et al. (2009) [11]) to build such a library for the identification of different medicines by NIR.
Keywords
Related Topics
Physical Sciences and Engineering
Chemistry
Analytical Chemistry
Authors
Xiao-Meng Chong, Chang-Qin Hu, Yan-chun Feng, Huan-Huan Pang,