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An Efficient Approach for Lipase-Catalyzed Synthesis of Retinyl Laurate Nutraceutical by Combining Ultrasound Assistance and Artificial Neural Network Optimization

机译:超声辅助和人工神经网络优化相结合的脂肪酶催化合成月桂酸视黄酯营养食品的高效方法

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摘要

Although retinol is an important nutrient, retinol is highly sensitive to oxidation. At present, some ester forms of retinol are generally used in nutritional supplements because of its stability and bioavailability. However, such esters are commonly synthesized by chemical procedures which are harmful to the environment. Thus, this study utilized a green method using lipase as a catalyst with sonication assistance to produce a retinol derivative named retinyl laurate. Moreover, the process was optimized by an artificial neural network (ANN). First, a three-level-four-factor central composite design (CCD) was employed to design 27 experiments, which the highest relative conversion was 82.64%. Further, the optimal architecture of the CCD-employing ANN was developed, including the learning Levenberg-Marquardt algorithm, the transfer function (hyperbolic tangent), iterations (10,000), and the nodes of the hidden layer (6). The best performance of the ANN was evaluated by the root mean squared error (RMSE) and the coefficient of determination (R2) from predicting and observed data, which displayed a good data-fitting property. Finally, the process performed with optimal parameters actually obtained a relative conversion of 88.31% without long-term reactions, and the lipase showed great reusability for biosynthesis. Thus, this study utilizes green technology to efficiently produce retinyl laurate, and the bioprocess is well established by ANN-mediated modeling and optimization.
机译:尽管视黄醇是重要的营养素,但视黄醇对氧化高度敏感。目前,由于其稳定性和生物利用度,一些酯形式的视黄醇通常用于营养补品中。但是,这些酯通常通过对环境有害的化学方法合成。因此,这项研究利用一种绿色方法,将脂肪酶用作具有超声辅助作用的催化剂,以生产一种名为月桂酸视黄酯的视黄醇衍生物。此外,该过程通过人工神经网络(ANN)进行了优化。首先,采用三级四因子中心复合设计(CCD)设计了27个实验,相对转化率最高为82.64%。此外,还开发了采用CCD的人工神经网络的最佳架构,包括学习Levenberg-Marquardt算法,传递函数(双曲正切),迭代(10,000)和隐藏层的节点(6)。通过预测和观察数据的均方根误差(RMSE)和确定系数(R 2 )来评估ANN的最佳性能,这显示出良好的数据拟合性能。最后,使用最佳参数进行的过程实际上没有相对的长期转化就可达到88.31%的相对转化率,并且脂肪酶具有很高的生物合成可重复使用性。因此,这项研究利用绿色技术有效地生产了月桂酸视黄酯,并且通过ANN介导的建模和优化很好地建立了生物过程。

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