Dulf Eva-H, Vodnar Dan C, Danku Alex, Martău Adrian Gheorghe, Teleky Bernadette-Emőke, Dulf Francisc V, Ramadan Mohamed Fawzy, Crisan Ovidiu
Faculty of Automation and Computer Science, Technical University of Cluj-Napoca, Cluj-Napoca, Romania.
Institute of Life Sciences, University of Agricultural Sciences and Veterinary Medicine, Cluj-Napoca, Romania.
Front Bioeng Biotechnol. 2022 Jun 23;10:888827. doi: 10.3389/fbioe.2022.888827. eCollection 2022.
To improve food production fermentation with co-cultures of microorganisms (e.g., multiple lactic acid bacteria-LAB strains), one must fully understand their metabolism and interaction patterns in various conditions. For example, LAB can bring added quality to bread by releasing several bioactive compounds when adding soy flour to wheat flour, thus revealing the great potential for functional food development. In the present work, the fermentation of three soy and wheat flour mixtures is studied using single cultures and co-cultures of and . Bio-chemical processes often require a significant amount of time to obtain the optimal amount of final product; creating a mathematical model can gain important information and aids in the optimization of the process. Consequently, mathematical modeling is used to optimize the fermentation process by following these LAB's growth kinetics and viability. The present work uses both multiple regression and artificial neural networks (ANN) to obtain the necessary mathematical model, useful in both prediction and process optimization. The main objective is to find a model with optimal performances, evaluated using an ANOVA test. To validate each obtained model, the simulation results are compared with the experimental data.
为了通过微生物共培养(例如多种乳酸菌菌株)来提高食品产量,必须充分了解它们在各种条件下的代谢和相互作用模式。例如,当在小麦粉中添加大豆粉时,乳酸菌可以通过释放几种生物活性化合物来提高面包的品质,从而揭示了功能性食品开发的巨大潜力。在本研究中,使用单一培养物和两种乳酸菌的共培养物研究了三种大豆粉和小麦粉混合物的发酵过程。生化过程通常需要大量时间才能获得最佳量的最终产物;建立数学模型可以获取重要信息并有助于优化该过程。因此,通过跟踪这些乳酸菌的生长动力学和活力,使用数学建模来优化发酵过程。本研究使用多元回归和人工神经网络(ANN)来获得必要的数学模型,该模型在预测和过程优化中均有用。主要目标是找到一个具有最佳性能的模型,并使用方差分析(ANOVA)测试进行评估。为了验证每个获得的模型,将模拟结果与实验数据进行比较。