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苦荞淀粉特性变异分析及近红外快速无损检测模型的构建

Variation Analysis of Starch Properties in Tartary Buckwheat and Construction of Near-Infrared Models for Rapid Non-Destructive Detection.

作者信息

Zhu Liwei, Liu Fei, Du Qianxi, Shi Taoxiong, Deng Jiao, Li Hongyou, Cai Fang, Meng Ziye, Chen Qingfu, Zhang Jieqiong, Huang Juan

机构信息

Research Center of Buckwheat Industry Technology, College of Life Science, Guizhou Normal University, Guiyang 550025, China.

Guizhou Provincial Agricultural Technology Extension Station, Guiyang 550001, China.

出版信息

Plants (Basel). 2024 Aug 3;13(15):2155. doi: 10.3390/plants13152155.

Abstract

Due to the requirements for quality testing and breeding Tartary buckwheat ( Gaerth), it is necessary to find a method for the rapid detection of starch content in Tartary buckwheat. To obtain samples with a continuously distributed chemical value, stable Tartary buckwheat recombinant inbred lines were used. After scanning the near-infrared spectra of whole grains, we employed conventional methods to analyze the contents of Tartary buckwheat. The results showed that the contents of total starch, amylose, amylopectin, and resistant starch were 532.1-741.5 mg/g, 176.8-280.2 mg/g, 318.8-497.0 mg/g, and 45.1-105.2 mg/g, respectively. The prediction model for the different starch contents in Tartary buckwheat was established using near-infrared spectroscopy (NIRS) in combination with chemometrics. The Kennard-Stone algorithm was used to split the training set and the test set. Six different methods were used to preprocess the spectra in the wavenumber range of 4000-12,000 cm. The Competitive Adaptive Reweighted Sampling algorithm was then used to extract the characteristic spectra, and the prediction model was built using the partial least squares method. Through a comprehensive analysis of each parameter of the model, the best model for the prediction of each nutrient was determined. The correlation coefficient of calibration (Rc) and the correlation coefficient of prediction (Rp) of the best models for total starch and amylose were greater than 0.95, and the Rc and Rp of the best models for amylopectin and resistant starch were also greater than 0.93. The results showed that the NIRS-based prediction model fulfilled the requirement for the rapid determination of Tartary buckwheat starch, thus providing an effective technical approach for the rapid and non-destructive testing of starch content in the food science and agricultural industry.

摘要

由于苦荞(鞑靼荞麦)品质检测和育种的需求,有必要找到一种快速检测苦荞淀粉含量的方法。为了获得化学值连续分布的样本,使用了稳定的苦荞重组自交系。在扫描全谷物的近红外光谱后,我们采用常规方法分析苦荞的含量。结果表明,总淀粉、直链淀粉、支链淀粉和抗性淀粉的含量分别为532.1 - 741.5毫克/克、176.8 - 280.2毫克/克、318.8 - 497.0毫克/克和45.1 - 105.2毫克/克。结合化学计量学,利用近红外光谱(NIRS)建立了苦荞不同淀粉含量的预测模型。采用肯纳德 - 斯通算法划分训练集和测试集。使用六种不同方法对4000 - 12000厘米波数范围内的光谱进行预处理。然后使用竞争自适应重加权采样算法提取特征光谱,并采用偏最小二乘法建立预测模型。通过对模型各参数的综合分析,确定了每种营养成分预测的最佳模型。总淀粉和直链淀粉最佳模型的校准相关系数(Rc)和预测相关系数(Rp)大于0.95,支链淀粉和抗性淀粉最佳模型的Rc和Rp也大于0.93。结果表明,基于近红外光谱的预测模型满足苦荞淀粉快速测定的要求,从而为食品科学和农业行业中淀粉含量的快速无损检测提供了一种有效的技术途径。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/59cc/11314173/db7b2bd88efd/plants-13-02155-g001.jpg

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