Haruna Suleiman A, Li Huanhuan, Wei Wenya, Geng Wenhui, Yao-Say Solomon Adade Selorm, Zareef Muhammad, Ivane Ngouana Moffo A, Chen Quansheng
School of Food and Biological Engineering, Jiangsu University, Zhenjiang, 212013, P. R. China.
Department of Food Science and Technology, Kano University of Science and Technology, Wudil, P. M. B 3244, Kano, Kano State, Nigeria.
Anal Methods. 2022 Aug 11;14(31):2989-2999. doi: 10.1039/d2ay00875k.
Given the nutritional importance of peanuts, this study examined the free amino acid (FAA) and crude protein (CP) content in raw peanut seeds. Near-infrared spectroscopy (NIRS) was employed in combination with variable selection algorithms after successful reference data analysis using colorimetric and Kjeldahl methods. Ensuing the application of partial least squares (PLS) as a full spectral model, the genetic algorithm (GA), bootstrapping soft shrinkage (BOSS), uninformative variable elimination (UVE), and random frog (RF) models were tested and assessed. A comparison of correlation coefficients of prediction (), root mean square error of prediction (RMSEP), and residual predictive deviation (RPD) was performed to appraise the performance of the built models. Using RF-PLS, an unsurpassed outcome was achieved for FAA ( = 0.937, RPD = 3.38) and CP ( = 0.9261, RPD = 3.66). These findings demonstrated that NIR in combination with RF-PLS could be utilized for quantitative, rapid, and nondestructive prediction of FAA and CP in raw peanut seed samples.
鉴于花生的营养重要性,本研究检测了生花生种子中的游离氨基酸(FAA)和粗蛋白(CP)含量。在使用比色法和凯氏定氮法成功进行参考数据分析后,将近红外光谱(NIRS)与变量选择算法结合使用。在应用偏最小二乘法(PLS)作为全光谱模型之后,对遗传算法(GA)、自助软收缩(BOSS)、无信息变量消除(UVE)和随机蛙跳(RF)模型进行了测试和评估。通过比较预测相关系数()、预测均方根误差(RMSEP)和剩余预测偏差(RPD)来评估所构建模型的性能。使用RF-PLS,FAA(= 0.937,RPD = 3.38)和CP(= 0.9261,RPD = 3.66)取得了无与伦比的结果。这些发现表明,近红外光谱结合RF-PLS可用于生花生种子样品中FAA和CP的定量、快速和无损预测。