Mrkonjić Živan, Rakić Dušan, Takači Aleksandar, Kaplan Muammer, Teslić Nemanja, Zeković Zoran, Lazarević Ivana, Pavlić Branimir
Faculty of Technology, University of Novi Sad, Bulevar Cara Lazara 1, 21000 Novi Sad, Serbia.
TUBITAK Marmara Research Centre, Institute of Chemical Technology, P.O. Box 21, Gebze 41470, Kocaeli, Turkey.
Foods. 2022 Apr 19;11(9):1184. doi: 10.3390/foods11091184.
The aim of this study was to valorize L. herbal dust, the particular fraction distinguished as industrial waste from filter-tea production. This work demonstrated comparable analysis considering model fitting, influence analysis and optimization of microwave-assisted extraction (MAE) of bioactive compounds from the aforementioned herbal dust using face-centered central composite experimental design within the response surface methodology (RSM), as well as artificial neural networks (ANN). In order to increase yield and amount of compounds of interest and minimize solvent, time and energy consumption, the ethanol concentration (45, 60 and 75%), extraction time (5, 12.5 and 20 min), liquid-solid ratio (10, 20 and 30 mL/g) and irradiation power (400, 600 and 800 W) were used as independent variables. Total extraction yield (Y), total phenols yield (TP), as well as antioxidant activity parameters obtained by DPPH and ABTS assays, were selected as responses. It could be concluded that the MAE technique is an efficient approach for the extraction of biologically active compounds from herbal dust, which represents a high-value source of natural antioxidants with great potential for further use in various forms within different branches of industry.
本研究的目的是评估茶末,这一从袋泡茶生产中分离出来的特殊工业废料。本研究工作采用响应面法(RSM)中的面心中央复合实验设计以及人工神经网络(ANN),对从上述茶末中微波辅助提取(MAE)生物活性化合物进行了模型拟合、影响分析和优化,并展示了相关可比分析。为了提高目标化合物的产量和含量,并减少溶剂、时间和能源消耗,将乙醇浓度(45%、60%和75%)、提取时间(5分钟、12.5分钟和20分钟)、液固比(10毫升/克、20毫升/克和30毫升/克)和辐照功率(400瓦、600瓦和800瓦)用作自变量。选择总提取率(Y)、总酚产率(TP)以及通过DPPH和ABTS测定获得的抗氧化活性参数作为响应指标。可以得出结论,微波辅助提取技术是从茶末中提取生物活性化合物的有效方法,茶末是天然抗氧化剂的高价值来源,在不同工业领域具有以各种形式进一步利用的巨大潜力。