Zheng Xiaochun, Chen Li, Li Xin, Zhang Dequan
Institute of Food Science and Technology, Chinese Academy of Agriculture Sciences, Key Laboratory of Agro-Products Quality and Safety Control in Storage and Transport Process, Ministry of Agriculture and Rural Affairs, Beijing 100193, China.
Foods. 2023 Jan 8;12(2):300. doi: 10.3390/foods12020300.
The potential of four dimension reduction methods for near-infrared spectroscopy was investigated, in terms of predicting the protein, fat, and moisture contents in lamb meat. With visible/near-infrared spectroscopy at 400-1050 nm and 900-1700 nm, respectively, calibration models using partial least squares regression (PLSR) or multiple linear regression (MLR) between spectra and quality parameters were established and compared. The MLR prediction models for all three quality parameters based on the wavelengths selected by stepwise regression achieved the best results in the spectral region of 400-1050 nm. As for the spectral region of 900-1700 nm, the PLSR prediction model based on the raw spectra or high-correlation spectra achieved better results. The results of this study indicate that sampling interval shortening and of peak-to-trough jump features are worthy of further study, due to their great potential in explaining the quality parameters.
研究了四种降维方法在近红外光谱分析中预测羊肉蛋白质、脂肪和水分含量的潜力。分别利用400 - 1050 nm和900 - 1700 nm的可见/近红外光谱,建立并比较了使用偏最小二乘回归(PLSR)或多元线性回归(MLR)建立的光谱与品质参数之间的校准模型。基于逐步回归选择的波长建立的所有三个品质参数的MLR预测模型在400 - 1050 nm光谱区域取得了最佳结果。对于900 - 1700 nm光谱区域,基于原始光谱或高相关光谱的PLSR预测模型取得了更好的结果。本研究结果表明,采样间隔缩短和峰谷跳跃特征因其在解释品质参数方面的巨大潜力而值得进一步研究。