文献类型: 外文期刊
作者: Yang, Yang 1 ; Wang, Zhong-Yi 1 ; Ding, Qiang 1 ; Huang, Lan 1 ; Wang, Cheng 2 ; Zhu, Da-Zhou 2 ;
作者机构: 1.China Agr Univ, Coll Informat & Elect Engn, Beijing 100083, Peoples R China
2.Natl Engn Res Ctr Informat Technol Agr, Beijing 100097, Peoples R China
关键词: Moisture content; Bioelectrical impedance spectroscopy; Porcine meat
期刊名称:MATHEMATICAL AND COMPUTER MODELLING ( 影响因子:1.366; 五年影响因子:1.602 )
ISSN: 0895-7177
年卷期: 2013 年 58 卷 3-4 期
页码:
收录情况: SCI
摘要: Moisture content is one of the most important elements influencing the quality of porcine meat. However, in recent years, illegally water-injected meat has been discovered repeatedly in the Chinese market. It is well known that high moisture content allows microbes to multiply easily, which can affect people's health and causes major problems for the meat storage and processing industry. This research developed a rapid, low-cost method for measuring moisture content in porcine meat using bioelectrical impedance spectroscopy. Forty-four pieces of porcine longissimus dorsi muscle (LDM) were evaluated with a four-terminal electrode portable bioimpedance spectroscopy system. The samples were divided into a training set and a test set. Thirty samples were selected to be the training set to establish the model for the experiment. The results show good correlation (coefficient of determination R-2 = 0.802) between the impedance parameters and the moisture content value determined by standard chemical methods. Based on the model established using a linear prediction equation, we calculated the moisture content for the test set samples. Promising results were obtained for moisture content prediction of the samples, with R-2 = 0.879 for the test set. The method is thus shown to be feasible for moisture content prediction in porcine LDM, and is potentially useful for assessment and discrimination of meat quality. (C) 2012 Elsevier Ltd. All rights reserved.
- 相关文献
作者其他论文 更多>>
-
A Scalable and Robust Chloroplast Genotyping Solution: Development and Application of SNP and InDel Markers in the Maize Chloroplast Genome
作者:Wang, Rui;Yang, Yang;Tian, Hongli;Yi, Hongmei;Xu, Liwen;Ge, Jianrong;Zhao, Yikun;Wang, Lu;Wang, Fengge;Lv, Yuanda;Zhou, Shiliang
关键词:chloroplast; SNP; InDel; high throughput; genotyping; maize
-
Genome-wide analysis of MYB transcription factor family and AsMYB1R subfamily contribution to ROS homeostasis regulation in Avena sativa under PEG-induced drought stress
作者:Chen, Yang;Li, Aixue;Chen, Quan;Pan, Dayu;Guo, Rui;Zhang, Han;Wang, Cheng;Dong, Hongtu;Qiu, Chaoyang;Luo, Bin;Hou, Peichen;Chen, Yang;Li, Aixue;Chen, Quan;Pan, Dayu;Guo, Rui;Zhang, Han;Wang, Cheng;Dong, Hongtu;Qiu, Chaoyang;Luo, Bin;Hou, Peichen;Yun, Ping;Shabala, Lana;Shabala, Sergey;Shabala, Lana;Shabala, Sergey;Ahmed, Hassan Ahmed Ibraheem;Hu, Haiying;Peng, Yuanying;Chen, Yang
关键词:Avena sativa; Drought stress; MYB transcription factors; ROS
-
Development of surface molecular-imprinted electrochemical sensor for palmitic acid with machine learning assistance
作者:Zhang, Heng;Luo, Bin;Liu, Ke;Wang, Cheng;Hou, Peichen;Zhao, Chunjiang;Li, Aixue;Zhang, Heng
关键词:Molecularly imprinted polymer; Palmitic acid; Electrochemical sensor; Artificial neural network
-
Wheat Fusarium Head Blight Automatic Non-Destructive Detection Based on Multi-Scale Imaging: A Technical Perspective
作者:Feng, Guoqing;Gu, Ying;Wang, Cheng;Zhou, Yanan;Huang, Shuo;Luo, Bin;Feng, Guoqing;Gu, Ying;Wang, Cheng;Zhou, Yanan;Huang, Shuo;Luo, Bin;Feng, Guoqing;Wang, Cheng;Luo, Bin
关键词:wheat FHB; phenotyping; imaging technique; advanced technology
-
An Ultrasensitive Electrochemical Immunosensor for in Situ Detection of GABA in Plant Leaves
作者:Wu, Haotong;Wang, Yueyue;Wei, Qian;Luo, Bin;Wang, Cheng;Hou, Peichen;Li, Aixue
关键词:GABA; electrochemical; immunosensor; PDA; in vivo
-
Ultrasensitive molecular imprinted electrochemical sensor for in vivo determination of glycine betaine in plants
作者:Ai, Geng;Zhou, Yanan;Zhang, Heng;Wei, Qian;Luo, Bin;Wang, Cheng;Xue, Xuzhang;Li, Aixue;Ai, Geng;Xie, Yingge
关键词:Molecularly imprinted polymer; Glycine betaine; In vivo measurement; Electrochemical sensor
-
Segmentation of Wheat Lodging Areas from UAV Imagery Using an Ultra-Lightweight Network
作者:Feng, Guoqing;Wang, Cheng;Wang, Aichen;Gao, Yuanyuan;Luo, Bin;Feng, Guoqing;Wang, Cheng;Zhou, Yanan;Huang, Shuo;Luo, Bin;Feng, Guoqing;Wang, Cheng;Zhou, Yanan;Huang, Shuo;Luo, Bin
关键词:UAV; wheat lodging; lightweight; deep learning; improved U2NetP



