吞吐量
分级(工程)
光谱学
红外光谱学
红外线的
环境科学
计算机科学
材料科学
分析化学(期刊)
遥感
化学
光学
工程类
电信
物理
环境化学
地质学
土木工程
量子力学
有机化学
无线
作者
Jingwen Zhu,Guozhi Ji,Bingyu Chen,Bo Yan,Feiyue Ren,Ning Li,Xuchun Zhu,Shan He,Zhishen Mu,Hongzhi Liu
标识
DOI:10.3389/fnut.2024.1505407
摘要
Pea (Pisum sativum L.) is a nutrient-dense legume whose nutritional indicators influence its functional qualities. Traditional methods to identify these components and examine the relationships between their contents could be more laborious, hindering the quality assessment of the varieties of peas. This study conducted a statistical analysis of data about the sensory and physicochemical nutritional attributes of peas acquired using traditional techniques. Additionally, 90 sets of spectral data were obtained using a portable near-infrared spectrometer, which were then integrated with chemical values to create a near-infrared model for the basic ingredient content of peas. The correlation analysis revealed significant findings: pea starch displayed a substantial negative correlation with moisture, crude fiber, and crude protein, while showing a highly significant positive correlation with pea seed thickness. Furthermore, pea protein exhibited a significant positive correlation with crude fiber and crude fat. Cluster analysis classified all pea varieties into three distinct groups, successfully distinguishing those with elevated protein content, high starch content, and low-fat content. The combined contribution of PC1 and PC2 in the principal component analysis (PCA) was 51.2%. Partial least squares regression (PLSR) and other spectral preprocessing methods improved the predictive model, which performed well with an external dataset, with calibration coefficients of 0.89-0.99 and prediction coefficients of 0.71-0.88. This method enables growers and processors to efficiently analyze the composition of peas and evaluate crop quality, thereby enhancing food industry development.
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