Analyzing protein concentration from intact wheat caryopsis using hyperspectral reflectance

IF 5.2 2区 农林科学 Q1 AGRICULTURE, MULTIDISCIPLINARY
Xiaomei Zhang, Xiaoxiang Hou, Yiming Su, XiaoBin Yan, Xingxing Qiao, Wude Yang, Meichen Feng, Huihua Kong, Zhou Zhang, Fahad Shafiq, Wenjie Han, Guangxin Li, Ping Chen, Chao Wang
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引用次数: 0

Abstract

Background

Winter wheat grain samples from 185 sites across southern Shanxi region were processed and analyzed using a non-destructive approach. For this purpose, spectral data and protein content of grain and grain powder were obtained. After combining six types of preprocessed spectra and four types of multivariate statistical models, a relationship between hyperspectral datasets and grain protein is presented.

Results

It was found that the hyperspectral reflectance of winter wheat grain and powder was positively correlated with the protein contents, which provide the possibility for hyperspectral quantitative assessment. The spectral characteristic bands of protein content in winter wheat extracted based on the SPA algorithm were proved to be around 350–430 nm; 851–1154 nm; 1300–1476 nm; and 1990–2050 nm. In powder samples, SG-BPNN had the best monitoring effect, with the accuracy of Rv2 = 0.814, RMSEv = 0.024 g/g, and RPDv = 2.318. While in case of grain samples, the SG-SVM model exhibited the best monitoring effect, with the accuracy of Rv2 = 0.789, RMSEv = 0.026 g/g, and RPDv = 2.177.

Conclusions

Based on the experimental findings, we propose that a combination of spectral pretreatment and multivariate statistical modeling is helpful for the non-destructive and rapid estimation of protein content in winter wheat.

Graphical Abstract

利用高光谱反射率分析完整小麦颖果的蛋白质浓度
采用非破坏性方法对陕南地区185个地点的冬小麦样品进行了处理和分析。为此,获得了籽粒和籽粒粉的光谱数据和蛋白质含量。结合6种预处理光谱和4种多元统计模型,提出了高光谱数据集与谷物蛋白质的关系。结果发现冬小麦籽粒和粉的高光谱反射率与蛋白质含量呈正相关,为高光谱定量评价提供了可能。结果表明,基于SPA算法提取的冬小麦蛋白质含量光谱特征波段在350 ~ 430 nm左右;851 - 1154海里;1300 - 1476海里;和1990-2050 nm。在粉末样品中,SG-BPNN监测效果最好,Rv2 = 0.814, RMSEv = 0.024 g/g, RPDv = 2.318。而对于粮食样本,SG-SVM模型监测效果最好,Rv2 = 0.789, RMSEv = 0.026 g/g, RPDv = 2.177。结论基于实验结果,将光谱预处理与多元统计建模相结合,可以实现冬小麦蛋白质含量的无损快速估算。图形抽象
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来源期刊
Chemical and Biological Technologies in Agriculture
Chemical and Biological Technologies in Agriculture Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
6.80
自引率
3.00%
发文量
83
审稿时长
15 weeks
期刊介绍: Chemical and Biological Technologies in Agriculture is an international, interdisciplinary, peer-reviewed forum for the advancement and application to all fields of agriculture of modern chemical, biochemical and molecular technologies. The scope of this journal includes chemical and biochemical processes aimed to increase sustainable agricultural and food production, the evaluation of quality and origin of raw primary products and their transformation into foods and chemicals, as well as environmental monitoring and remediation. Of special interest are the effects of chemical and biochemical technologies, also at the nano and supramolecular scale, on the relationships between soil, plants, microorganisms and their environment, with the help of modern bioinformatics. Another special focus is the use of modern bioorganic and biological chemistry to develop new technologies for plant nutrition and bio-stimulation, advancement of biorefineries from biomasses, safe and traceable food products, carbon storage in soil and plants and restoration of contaminated soils to agriculture. This journal presents the first opportunity to bring together researchers from a wide number of disciplines within the agricultural chemical and biological sciences, from both industry and academia. The principle aim of Chemical and Biological Technologies in Agriculture is to allow the exchange of the most advanced chemical and biochemical knowledge to develop technologies which address one of the most pressing challenges of our times - sustaining a growing world population. Chemical and Biological Technologies in Agriculture publishes original research articles, short letters and invited reviews. Articles from scientists in industry, academia as well as private research institutes, non-governmental and environmental organizations are encouraged.
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