Olakanmi Sunday J, Jayas Digvir S, Paliwal Jitendra, Chaudhry Muhammad Mudassir Arif, Findlay Catherine Rui Jin
Department of Biosystems Engineering, University of Manitoba, 75 Chancellors Circle, Winnipeg, MB R3T 5V6, Canada.
President's Office, University of Lethbridge, 4401 University Drive West, Lethbridge, AB T1K 3M4, Canada.
Foods. 2024 Jan 11;13(2):231. doi: 10.3390/foods13020231.
As the demand for alternative protein sources and nutritional improvement in baked goods grows, integrating legume-based ingredients, such as fava beans, into wheat flour presents an innovative alternative. This study investigates the potential of hyperspectral imaging (HSI) to predict the protein content (short-wave infrared (SWIR) range)) of fava bean-fortified bread and classify them based on their color characteristics (visible-near-infrared (Vis-NIR) range). Different multivariate analysis tools, such as principal component analysis (PCA), partial least square discriminant analysis (PLS-DA), and partial least square regression (PLSR), were utilized to assess the protein distribution and color quality parameters of bread samples. The result of the PLS-DA in the SWIR range yielded a classification accuracy of ˃99%, successfully classifying the samples based on their protein contents (low protein and high protein). The PLSR model showed an RMSEC of 0.086% and an RMSECV of 0.094%. Also, the external validation resulted in an RMSEP of 0.064%. The PLSR model possessed the capability to efficiently predict the protein content of the bread samples. The results suggest that HSI can be successfully used to classify bread samples based on their protein content and for the prediction of protein composition. Hyperspectral imaging can therefore be reliably implemented for the quality monitoring of baked goods in commercial bakeries.
随着烘焙食品中对替代蛋白质来源和营养改善的需求不断增长,将基于豆类的成分(如蚕豆)融入小麦粉中提供了一种创新的选择。本研究调查了高光谱成像(HSI)预测蚕豆强化面包蛋白质含量(短波红外(SWIR)范围)并根据其颜色特征(可见-近红外(Vis-NIR)范围)对其进行分类的潜力。利用不同的多元分析工具,如主成分分析(PCA)、偏最小二乘判别分析(PLS-DA)和偏最小二乘回归(PLSR),来评估面包样品的蛋白质分布和颜色质量参数。PLS-DA在SWIR范围内的结果产生了大于99%的分类准确率,成功地根据蛋白质含量(低蛋白和高蛋白)对样品进行了分类。PLSR模型的RMSEC为0.086%,RMSECV为0.094%。此外,外部验证的RMSEP为0.064%。PLSR模型具有有效预测面包样品蛋白质含量的能力。结果表明,HSI可以成功地用于根据面包样品的蛋白质含量对其进行分类以及预测蛋白质组成。因此,高光谱成像可以可靠地用于商业面包店烘焙食品的质量监测。