Yang Ha-Eun, Kim Nam-Wook, Lee Hong-Gu, Kim Min-Jee, Sang Wan-Gyu, Yang Changju, Mo Changyeun
Department of Interdisciplinary Program in Smart Agriculture, Kangwon National University, Chuncheon, Republic of Korea.
Agriculture and Life Sciences Research Institute, Kangwon National University, Chuncheon, Republic of Korea.
Front Plant Sci. 2024 Jul 31;15:1398762. doi: 10.3389/fpls.2024.1398762. eCollection 2024.
Rice is a staple crop in Asia, with more than 400 million tons consumed annually worldwide. The protein content of rice is a major determinant of its unique structural, physical, and nutritional properties. Chemical analysis, a traditional method for measuring rice's protein content, demands considerable manpower, time, and costs, including preprocessing such as removing the rice husk. Therefore, of the technology is needed to rapidly and nondestructively measure the protein content of paddy rice during harvest and storage stages. In this study, the nondestructive technique for predicting the protein content of rice with husks (paddy rice) was developed using near-infrared spectroscopy and deep learning techniques. The protein content prediction model based on partial least square regression, support vector regression, and deep neural network (DNN) were developed using the near-infrared spectrum in the range of 950 to 2200 nm. 1800 spectra of the paddy rice and 1200 spectra from the brown rice were obtained, and these were used for model development and performance evaluation of the developed model. Various spectral preprocessing techniques was applied. The DNN model showed the best results among three types of rice protein content prediction models. The optimal DNN model for paddy rice was the model with first-order derivative preprocessing and the accuracy was a coefficient of determination for prediction, R = 0.972 and root mean squared error for prediction, RMSEP = 0.048%. The optimal DNN model for brown rice was the model applied first-order derivative preprocessing with R = 0.987 and RMSEP = 0.033%. These results demonstrate the commercial feasibility of using near-infrared spectroscopy for the non-destructive prediction of protein content in both husked rice seeds and paddy rice.
水稻是亚洲的主要粮食作物,全球每年的消费量超过4亿吨。水稻的蛋白质含量是其独特的结构、物理和营养特性的主要决定因素。化学分析是测量水稻蛋白质含量的传统方法,需要大量人力、时间和成本,包括去除稻壳等预处理。因此,需要一种技术来在收获和储存阶段快速、无损地测量水稻的蛋白质含量。在本研究中,利用近红外光谱和深度学习技术开发了预测带壳水稻(稻谷)蛋白质含量的无损技术。基于偏最小二乘回归、支持向量回归和深度神经网络(DNN)的蛋白质含量预测模型,利用950至2200nm范围内的近红外光谱进行了开发。获得了1800个稻谷光谱和1200个糙米光谱,并将其用于所开发模型的模型开发和性能评估。应用了各种光谱预处理技术。DNN模型在三种水稻蛋白质含量预测模型中表现出最佳结果。稻谷的最佳DNN模型是采用一阶导数预处理的模型,预测决定系数R = 0.972,预测均方根误差RMSEP = 0.048%。糙米的最佳DNN模型是采用一阶导数预处理的模型,R = 0.987,RMSEP = 0.033%。这些结果证明了使用近红外光谱对糙米种子和稻谷中的蛋白质含量进行无损预测的商业可行性。