| Literature DB >> 24971808 |
Xiaowei Huang1, Xiaobo Zou2, Jiewen Zhao1, Jiyong Shi1, Xiaolei Zhang1, Zhihua Li1, Lecheng Shen1.
Abstract
Yao-meat is a traditional Chinese salted meat. Total volatile basic nitrogen content (TVB-N), total viable bacterial count (TVC), and residual nitrite (RN) level are important indexes of freshness for Yao-meat. This paper attempted the feasibility to determine TVB-N content, TVC and RN level in Yao-meat by a colorimetric sensor array chip. A color change profile for each sample was obtained by differentiating the image of sensor array before and after exposure to Yao-meat's volatile organic compounds. Genetic algorithm partial least squares regression (GA-PLS) was proposed to build the relationship between the TVB-N content, TVC, RN and the color change profiles of sensor array, and to select informative chemically responsive dyes for the three quality parameters. The GA-PLS models were achieved with RTVB-N=0.812, RTVC=0.856, RRN=0.855, in prediction set. This study demonstrated that colorimetric sensory array with GA-PLS algorithm could be used successfully to analyze the quality of Chinese traditional Yao-meat.Entities:
Keywords: Colorimetric sensor array chip; Genetic algorithm partial least squares regression; Quality parameters; Yao-meat
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Year: 2014 PMID: 24971808 DOI: 10.1016/j.meatsci.2014.05.033
Source DB: PubMed Journal: Meat Sci ISSN: 0309-1740 Impact factor: 5.209