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摘要:
[Objectives] This study was conducted to solve the problems of complex near-infrared spectrum information of soybean lysine, serious collinearity and insufficient predictive ability of full-spectrum modeling. [Methods] A new variable selection method, i.e., variable combination model population analysis method, was used to select characteristic wavelengths of soybean lysine near infrared spectra. The binary matrix sampling strategy and exponential decay function were used at first to delete the variables providing no information and select the near-infrared characteristic wavelengths of soybean lysine, which were then combined the partial least square method to establish a prediction model. Compared with other variable selection methods, the Monte Carlo variable combination model population analysis method selected the least wavelength points and the model had the strongest predictive ability. The variable combination model population analysis method adopting the binary matrix sampling strategy made up for the shortcomings of the single Monte Carlo sampling method. [Results] The experimental results showed that the Monte Carlo variable combination model population analysis algorithm could better select the characteristic wavelengths of soybean lysine NIR spectra and improve the reliability of the prediction model. However, in general, the accuracy of the lysine prediction model is not satisfactory, and it needs to be further reconstructed and optimized in future research work. The reason might be that the determination accuracy of the chemical value of lysine content was insufficient, or it might be caused by the poor absorption of the hydrogen-containing group of lysine in the near-infrared spectrum region and the poor correlation with proteins. [Conclusions] This study provides a reference for soybean high-lysine breeding.
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篇名 Research on Variable Selection of Protein in Soy Lysine Spectroscopy Based on Latent Projective Graph
来源期刊 农业生物技术:英文版 学科 数学
关键词 SOYBEAN LYSINE Near infrared spectrum Population analysis
年,卷(期) 2021,(1) 所属期刊栏目
研究方向 页码范围 103-108
页数 6页 分类号 O15
字数 语种
DOI
五维指标
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研究主题发展历程
节点文献
SOYBEAN
LYSINE
Near
infrared
spectrum
Population
analysis
研究起点
研究来源
研究分支
研究去脉
引文网络交叉学科
相关学者/机构
期刊影响力
农业生物技术:英文版
双月刊
2164-4993
合肥市农科南路40号省农科院老水产所30
出版文献量(篇)
766
总下载数(次)
7
总被引数(次)
0
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