Roca-Nasser Esteban A, Medina-García Miriam, Martínez-Domingo Miguel A, Valero Eva M, Cuadros-Rodríguez Luis, Jiménez-Carvelo Ana M
Department of Analytical Chemistry, University of Granada, C/ Fuentenueva s/n, E-18071 Granada, Spain.
Department of Optics, University of Granada, C/ Fuentenueva s/n, E-18071 Granada, Spain.
Spectrochim Acta A Mol Biomol Spectrosc. 2025 Dec 15;343:126529. doi: 10.1016/j.saa.2025.126529. Epub 2025 Jun 7.
Ensuring the authenticity of commercial bread remains a critical concern because fraudulent cereal blends and the substitution of cheaper flours in premium bread can mislead consumers and compromise product integrity. This study describes a novel analytical methodology for the evaluation of oat flour content in cereal bread using the synergy between hyperspectral imaging, information theory, and chemometrics. By evaluating spectral data captured from hyperspectral imaging in short-wave infrared and visible-NIR ranges, Shannon's entropy and information index were employed as objective criteria for selecting the most informative spectral range, ensuring optimal classification performance. Multivariate methods such as partial least squares discriminant analysis and support vector machine were introduced to differentiate single cereal breads (wheat, spelt, oat, and rye) with an accuracy of up to 0.96. Moreover, a novel quantification approach based on previous methodologies (quantification based on pixel counting) was applied to indirectly estimate the proportion of oat flour in binary bread blends. Results show that integrating information theory with hyperspectral imaging can increase efficiency by guiding spectral selection and improving classification and quantification outcomes. This methodology offers a robust alternative for bread conformity assessment, addressing the lack of standardized post-production methods and the need to align with current regulatory frameworks.
确保商业面包的真实性仍然是一个关键问题,因为谷物掺假以及在优质面包中使用更便宜的面粉替代会误导消费者并损害产品完整性。本研究描述了一种新颖的分析方法,利用高光谱成像、信息论和化学计量学之间的协同作用来评估谷物面包中的燕麦粉含量。通过评估在短波红外和可见 - 近红外范围内从高光谱成像捕获的光谱数据,香农熵和信息指数被用作选择最具信息性光谱范围的客观标准,以确保最佳分类性能。引入了偏最小二乘判别分析和支持向量机等多元方法来区分单一谷物面包(小麦、斯佩尔特小麦、燕麦和黑麦),准确率高达0.96。此外,基于先前方法(基于像素计数的定量)应用了一种新颖的定量方法,以间接估计二元面包混合物中燕麦粉的比例。结果表明,将信息论与高光谱成像相结合可以通过指导光谱选择以及改善分类和定量结果来提高效率。这种方法为面包合格评定提供了一种可靠的替代方案,解决了缺乏标准化生产后方法以及与当前监管框架保持一致的需求。