Jiang Hongzhe, Zhou Yu, Zhang Cong, Yuan Weidong, Zhou Hongping
Jiangsu Co-Innovation Center of Efficient Processing and Utilization of Forest Resources, Nanjing Forestry University, Nanjing 210037, China.
College of Mechanical and Electronic Engineering, Nanjing Forestry University, Nanjing 210037, China.
Foods. 2023 Jul 29;12(15):2882. doi: 10.3390/foods12152882.
The objective of this study was to evaluate the performance of near-infrared spectroscopy (NIRS) systems operated in dual band for the non-destructive measurement of the fat, protein, collagen, ash, and Na contents of soy sauce stewed meat (SSSM). Spectra in the waveband ranges of 650-950 nm and 960-1660 nm were acquired from vacuum-packed ready-to-eat samples that were purchased from 97 different brands. Partial least squares regression (PLSR) was employed to develop models predicting the five critical quality parameters. The results showed the best predictions were for the fat (R = 0.808; RMSEP = 2.013 g/kg; RPD = 1.666) and protein (R = 0.863; RMSEP = 3.372 g/kg; RPD = 1.863) contents, while barely sufficient performances were found for the collagen (R = 0.524; RMSEP = 1.970 g/kg; RPD = 0.936), ash (R = 0.384; RMSEP = 0.524 g/kg; RPD = 0.953), and Na (R = 0.242; RMSEP = 2.097 g/kg; RPD = 1.042) contents of the SSSM. The quality of the content predicted by the spectrum of 960-1660 nm was generally better than that for the 650-950 nm range, which was retained in the further prediction of fat and protein. To simplify the models and make them practical, regression models were established using a few wavelengths selected by the random frog (RF) or regression coefficients (RCs) method. Consequently, ten wavelengths (1048 nm, 1051 nm, 1184 nm, 1191 nm, 1222 nm, 1225 nm, 1228 nm, 1450 nm, 1456 nm, 1510 nm) selected by RF and eight wavelengths (1019 nm, 1097 nm, 1160 nm, 1194 nm, 1245 nm, 1413 nm, 1441 nm, 1489 nm) selected by RCs were individually chosen for the fat and protein contents to build multi-spectral PLSR models. New models led to the best predictive ability of R, RMSEP, and RPD of 0.812 and 0.855, 1.930 g/kg and 3.367 g/kg, and 1.737 and 1.866, respectively. These two simplified models both yielded comparable performances to their corresponding full-spectra models, demonstrating the effectiveness of these selected variables. The overall results indicate that NIRS, especially in the spectral range of 960-1660 nm, is a potential tool in the rapid estimation of the fat and protein contents of SSSM, while not providing particularly good prediction statistics for collagen, ash, and Na contents.
本研究的目的是评估双波段近红外光谱(NIRS)系统对酱油炖肉(SSSM)中脂肪、蛋白质、胶原蛋白、灰分和钠含量进行无损测量的性能。从97个不同品牌购买的真空包装即食样品中获取了650 - 950 nm和960 - 1660 nm波段范围内的光谱。采用偏最小二乘回归(PLSR)建立预测五个关键质量参数的模型。结果表明,对脂肪(R = 0.808;RMSEP = 2.013 g/kg;RPD = 1.666)和蛋白质(R = 0.863;RMSEP = 3.372 g/kg;RPD = 1.863)含量的预测效果最佳,而对SSSM中胶原蛋白(R = 0.524;RMSEP = 1.970 g/kg;RPD = 0.936)、灰分(R = 0.384;RMSEP = 0.524 g/kg;RPD = 0.953)和钠(R = 0.242;RMSEP = 2.097 g/kg;RPD = 1.042)含量的预测性能勉强足够。960 - 1660 nm光谱预测的含量质量通常优于650 - 950 nm范围,在脂肪和蛋白质的进一步预测中保留了该范围。为简化模型并使其具有实用性,使用随机蛙跳(RF)或回归系数(RCs)方法选择的几个波长建立了回归模型。因此,分别选择RF方法选出的十个波长(1048 nm, 1051 nm, 1184 nm, 1191 nm, 1222 nm, 1225 nm, 1228 nm, 1450 nm, 1456 nm, 1510 nm)和RCs方法选出的八个波长(1019 nm, 1097 nm, 1160 nm, 1194 nm, 1245 nm, 1413 nm, 1441 nm, 1489 nm)用于脂肪和蛋白质含量,构建多光谱PLSR模型。新模型的R、RMSEP和RPD预测能力最佳,分别为0.812和0.855、1.930 g/kg和3.367 g/kg、1.737和1.866。这两个简化模型的性能与其相应的全光谱模型相当,证明了这些选定变量的有效性。总体结果表明,NIRS,尤其是在960 - 1660 nm光谱范围内,是快速估算SSSM中脂肪和蛋白质含量的潜在工具,但对胶原蛋白、灰分和钠含量的预测统计结果不太理想。