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超声辅助与人工神经网络优化相结合用于脂肪酶催化合成视黄醇月桂酸酯类营养保健品的有效方法。

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

机构信息

Biotechnology Center, National Chung Hsing University, 250 Kuokuang Road, Taichung 40227, Taiwan.

Department of Chemical Engineering, National Chung Hsing University, 250 Kuo-Kuang Road, Taichung 40227, Taiwan.

出版信息

Molecules. 2017 Nov 15;22(11):1972. doi: 10.3390/molecules22111972.

Abstract

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 (²) 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.

摘要

虽然视黄醇是一种重要的营养物质,但它极易氧化。目前,由于其稳定性和生物利用度,一些视黄醇的酯类形式通常被用于营养补充剂。然而,这些酯类通常是通过化学方法合成的,对环境有害。因此,本研究利用脂肪酶作为催化剂,并辅以超声辅助的绿色方法,生产出一种名为视黄醇月桂酸酯的视黄醇衍生物。此外,该过程通过人工神经网络(ANN)进行了优化。首先,采用三水平四因素中心组合设计(CCD)设计了 27 个实验,最高相对转化率为 82.64%。进一步,开发了 CCD-ANN 的最佳结构,包括学习 Levenberg-Marquardt 算法、传递函数(双曲正切)、迭代次数(10,000)和隐藏层节点(6)。通过预测和观察数据的均方根误差(RMSE)和决定系数(²)来评估 ANN 的最佳性能,显示出良好的数据拟合特性。最后,在最优参数下进行的实际过程,无需长时间反应,即可获得 88.31%的相对转化率,并且脂肪酶在生物合成中具有很好的可重复使用性。因此,本研究利用绿色技术高效生产视黄醇月桂酸酯,并通过 ANN 介导的建模和优化建立了良好的生物工艺。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4393/6150370/803db3d8732b/molecules-22-01972-g001.jpg

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