红外光谱法测定蚕豆中生物活性成分

Q1 Agricultural and Biological Sciences Legume Science Pub Date : 2023-08-17 DOI:10.1002/leg3.203
Joel B. Johnson, K. Walsh, M. Naiker
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引用次数: 0

摘要

蚕豆(Vicia Faba)在澳大利亚越来越受欢迎,部分原因是与其他粮食作物相比,其有益健康的化合物含量更高。本研究研究了红外光谱法预测蚕豆粉中抗氧化剂和酚类等生物活性化合物的含量。对60个蚕豆样本进行了校准模型,其中包括在1 年对于模型验证,使用了一个由不同年份生长的相同品种组成的独立测试集。近红外光谱(NIRS)显示出预测总酚含量的前景,R2pred为0.66,预测均方根误差(RMSEP)为76 mg/100 g.同样,铁还原抗氧化能力(衡量抗氧化活性的指标)的预测得出R2pred为0.59,RMSEP为87 mg/100 g.此外,使用移动窗口优化来确定用于预测这些分析物的最重要的波长区域。傅立叶变换红外光谱没有为所研究的分析物产生任何合适的模型。尽管开发的近红外光谱模型无法准确量化酚类或抗氧化剂的含量,但红外光谱似乎有助于快速区分含有高水平和低水平酚类或抗氧化化合物的样品。随着进一步的改进,该技术有可能应用于蚕豆种子中酚类含量或抗氧化能力的质量保证。
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Assessment of bioactive compounds in faba bean using infrared spectroscopy
Faba bean (Vicia faba) is growing in popularity in Australia, partly due to its higher levels of health‐benefiting compounds compared to other grain crops. This study investigated infrared spectroscopy for predicting levels of bioactive compounds such as antioxidants and phenolics in faba bean flour. Calibration models were performed on 60 samples of faba bean, comprising 10 varieties grown across two field locations in 1 year. For model validation, an independent test set comprising the same varieties grown in a different year was utilised. Near‐infrared spectroscopy (NIRS) showed promise for the prediction of total phenolic content, with an R2pred of 0.66 and root mean square error of prediction (RMSEP) of 76 mg/100 g. Similarly, prediction of ferric reducing antioxidant power, a measure of antioxidant activity, gave an R2pred of 0.59 and RMSEP of 87 mg/100 g. Additionally, moving window optimisation was used to determine the most important wavelength region for the prediction of these analytes. Fourier transform infrared spectroscopy did not yield any suitable models for the analytes investigated. Although the NIRS models developed were not capable of exactly quantifying phenolic or antioxidant content, infrared spectroscopy appears useful for rapidly discriminating between samples containing high and low levels of phenolics or antioxidant compounds. With further refinement, this technique could potentially be applied for the quality assurance of phenolic content or antioxidant capacity in faba bean seeds.
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来源期刊
Legume Science
Legume Science Agricultural and Biological Sciences-Plant Science
CiteScore
7.90
自引率
0.00%
发文量
32
审稿时长
6 weeks
期刊最新文献
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