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Modeling and Optimization of Microbial Hyaluronic Acid Production by Streptococcus zooepidemicus Using Radial Basis Function Neural Network Coupling Quantum-Behaved Particle Swarm Optimization Algorithm

机译:径向基函数神经网络耦合量子行为粒子群算法在兽疫链球菌生产微生物透明质酸中的建模与优化

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摘要

Hyaluronic acid (HA) is a natural biopolymer with unique physiochemical and biological properties and finds a wide range of applications in biomedical and cosmetic fields. It is important to increase HA production to meet the increasing HA market demand. This work is aimed to model and optimize the amino acids addition to enhance HA production of Streptococcus zooepidemicus with radial basis function (RBF) neural network coupling quantum-behaved particle swarm optimization (QPSO) algorithm. In the RBF-QPSO approach, RBF neural network is used as a bioprocess modeling tool and QPSO algorithm is applied to conduct the optimization with the established RBF neural network black model as the objective function. The predicted maximum HA yield was 6.92 g/L under the following conditions: arginine 0.062 g/L, cysteine 0.036 g/L, and lysine 0.043 g/L. The optimal amino acids addition allowed HA yield increased from 5.0 gIL of the control to 6.7 gIL in the validation experiments. Moreover, the modeling and optimization capacity of the RBF-QPSO approach was compared with that of response surface methodology (RSM). It was indicated that the RBF-QPSO approach gave a slightly better modeling and optimization result compared with RSM. The developed RBF-QPSO approach in this work may be helpful for the modeling and optimization of the other multivariate, nonlinear, time-variant bioprocesses.
机译:透明质酸(HA)是一种具有独特的理化和生物学特性的天然生物聚合物,在生物医学和化妆品领域具有广泛的应用。重要的是要增加HA生产,以满足不断增长的HA市场需求。这项工作旨在通过径向基函数(RBF)神经网络耦合量子行为粒子群优化(QPSO)算法来建模和优化氨基酸添加,以提高兽疫链球菌的HA产生。在RBF-QPSO方法中,将RBF神经网络用作生物过程建模工具,并使用QPSO算法以已建立的RBF神经网络黑色模型为目标函数进行优化。在以下条件下,预计的最大HA产量为6.92 g / L:精氨酸0.062 g / L,半胱氨酸0.036 g / L和赖氨酸0.043 g / L。在验证实验中,最佳氨基酸添加使得HA产量从对照的5.0 gIL增加到6.7 gIL。此外,将RBF-QPSO方法的建模和优化能力与响应面方法(RSM)进行了比较。结果表明,与RSM相比,RBF-QPSO方法提供了更好的建模和优化结果。在这项工作中开发的RBF-QPSO方法可能有助于其他多元,非线性,时变生物过程的建模和优化。

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