Grgić Filip, Jurina Tamara, Valinger Davor, Gajdoš Kljusurić Jasenka, Jurinjak Tušek Ana, Benković Maja
Faculty of Food Technology and Biotechnology, University of Zagreb, Pierottijeva ul. 6, 10000 Zagreb, Croatia.
Micromachines (Basel). 2022 Oct 31;13(11):1876. doi: 10.3390/mi13111876.
There is increased interest in the food industry for emulsions as delivery systems to preserve the stability of sensitive biocompounds with the aim of improving their bioavailability, solubility, and stability; maintaining their texture; and controlling their release. Emulsification in continuously operated microscale devices enables the production of emulsions of controllable droplet sizes and reduces the amount of emulsifier and time consumption, while NIR, as a nondestructive, noninvasive, fast, and efficient technique, represents an interesting aspect for emulsion investigation. The aim of this work was to predict the average Feret droplet diameter of oil-in-water and oil-in-aqueous mint extract emulsions prepared in a continuously operated microfluidic device with different emulsifiers (PEG 1500, PEG 6000, and PEG 20,000) based on the combination of near-infrared (NIR) spectra with chemometrics (principal component analysis (PCA) and partial least-squares (PLS) regression) and artificial neural network (ANN) modeling. PCA score plots for average preprocessed NIR spectra show the specific grouping of the samples into three groups according to the emulsifier used, while the PCA analysis of the emulsion samples with different emulsifiers showed the specific grouping of the samples based on the amount of emulsifier used. The developed PLS models had higher values for oil-in-water emulsions, ranging from 0.6863 to 0.9692 for calibration, 0.5617 to 0.8740 for validation, and 0.4618 to 0.8692 for prediction, than oil-in-aqueous mint extract emulsions, with values that were in range of 0.8109-0.8934 for calibration, 0.5017-0.6620, for validation and 0.5587-0.7234 for prediction. Better results were obtained for the developed nonlinear ANN models, which showed values in the range of 0.9428-0.9917 for training, 0.8515-0.9294 for testing, and 0.7377-0.8533 for the validation of oil-in-water emulsions, while for oil-in-aqueous mint extract emulsions values were higher, in the range of 0.9516-0.9996 for training, 0.9311-0.9994 for testing, and 0.8113-0.9995 for validation.
食品工业对乳液作为递送系统的兴趣日益增加,其目的是保持敏感生物化合物的稳定性,以提高其生物利用度、溶解度和稳定性;维持其质地;并控制其释放。在连续操作的微尺度装置中进行乳化能够生产出液滴尺寸可控的乳液,并减少乳化剂用量和时间消耗,而近红外光谱(NIR)作为一种无损、非侵入性、快速且高效的技术,是乳液研究的一个有趣方面。这项工作的目的是基于近红外(NIR)光谱与化学计量学(主成分分析(PCA)和偏最小二乘法(PLS)回归)以及人工神经网络(ANN)建模的组合,预测在连续操作的微流控装置中使用不同乳化剂(聚乙二醇1500、聚乙二醇6000和聚乙二醇20000)制备的水包油乳液和薄荷提取物水包油乳液的平均费雷特液滴直径。平均预处理近红外光谱的PCA得分图显示,根据所使用的乳化剂,样品被具体分为三组,而对使用不同乳化剂的乳液样品进行的PCA分析表明,样品根据乳化剂用量进行了具体分组。所开发的PLS模型对水包油乳液具有更高的值,校准值范围为0.6863至0.9692,验证值范围为0.5617至0.8740,预测值范围为0.4618至0.8692,高于薄荷提取物水包油乳液,其校准值范围为0.8109 - 0.8934,验证值范围为0.5017 - 0.6620,预测值范围为0.5587 - 0.7234。所开发的非线性ANN模型获得了更好的结果,其显示水包油乳液训练值范围为0.9428 - 0.9917,测试值范围为0.8515 - 0.9294,验证值范围为0.7377 - 0.8533,而对于薄荷提取物水包油乳液,其值更高,训练值范围为0.9516 - 0.9996,测试值范围为0.9311 - 0.9994,验证值范围为0.8113 - 0.9995。