| Literature DB >> 24128487 |
Li-Guo Zhang1, Xin Zhang, Li-Jun Ni, Zhi-Bin Xue, Xin Gu, Shi-Xin Huang.
Abstract
More than 800 representative milk samples, which consisted of 287 raw cow milk samples from different pastures surrounding Shanghai of China and 526 adulteration milk samples containing different pseudo proteins and thickeners, were collected and designed to demonstrate a method for rapidly discriminating adulterated milks based on near infrared (NIR) spectra. The NIR classification models were built by two non-linear supervised pattern recognition methods of improved support vector machine (I-SVM) and improved and simplified K nearest neighbours (IS-KNN). Uniform design theory was applied to optimize the parameters of SVM and thus the computation amount was reduced 90%. Both two methods exhibit good adaptability in discriminating adulterated milks from raw cow milks. Further investigation showed that the correction ratio for discriminating milk samples increased with the increasing of adulteration solutions' level in the adulterated milk. The concentration of adulterants is an important factor of influencing milk discrimination results of the NIR pattern recognition models. The results demonstrated the usefulness of NIR spectra combined with non-linear pattern recognition methods as an objective and rapid method for the authentication of complicated raw cow milks.Entities:
Keywords: Improved and simplified K nearest neighbours; Improved support vector machine; Near infrared spectroscopy; Rapid identification of adulterated cow milks; Uniform design
Mesh:
Year: 2013 PMID: 24128487 DOI: 10.1016/j.foodchem.2013.08.064
Source DB: PubMed Journal: Food Chem ISSN: 0308-8146 Impact factor: 7.514