| Literature DB >> 30263443 |
Da-Shuai Xie1, Wei Peng1, Jun-Cheng Chen2, Liang Li1, Chong-Bo Zhao1, Shi-Long Yang1, Min Xu1, Chun-Jie Wu1, Li Ai1.
Abstract
Hawthorn (CFS) has commonly been applied as an important traditional Chinese medicine and food for thousands of years. The raw material of CFS is commonly processed by stir-frying to obtain yellow (CFY), dark brown (CFD), and carbon dark (CFC) colored products, which are used for different clinical uses. In this study, an intelligent sensory system (ISS) was used to obtain the color, gas, and flavor samples data, which were further employed to develop a novel and accurate method for the identification of CFS and its processed products using principal component analysis. Moreover, this research developed a model of an artificial neural network, which could be used to predict the total organic acid, total flavonoids, citric acid, hyperin, and 5-hydroxymethyl furfural via determination of the color, odor, and taste of a sample. In conclusion, the ISS and the artificial neural network are useful tools for rapid, accurate, and effective discrimination of CFS and its processed products.Entities:
Keywords: Hawthorn; artificial neural networks; discrimination; intelligent sensory system
Year: 2016 PMID: 30263443 PMCID: PMC6049249 DOI: 10.1007/s10068-016-0239-8
Source DB: PubMed Journal: Food Sci Biotechnol ISSN: 1226-7708 Impact factor: 2.391