基于BP神经网络的牡蛎α葡萄糖苷酶抑制剂活性肽制备工艺优化
Optimization of enzymatic processing for α-glucosidase inhibitor active peptides from oyster based on BP neural network
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摘要: 为获得α-葡萄糖苷酶抑制率活性较好的活性肽,采用牡蛎为原料,选取中性蛋白酶和动物蛋白水解酶进行酶解。以牡蛎酶解活性肽的α-葡萄糖苷酶抑制率为评判指标,进行均匀设计实验,获得了酶解温度、加酶量和底物浓度三者与牡蛎活性肽α-葡萄糖苷酶抑制率之间的关系。将前三者作为BP神经网络的输入,后者作为输出设计神经网络,对牡蛎酶解过程进行模拟以及对牡蛎活性肽的活性进行预测,并得出最优酶解工艺参数。结果表明:酶解温度为55℃,酶解时间为5 h,加酶量为600 U/g,底物浓度为0.25 g/m L时,酶解产物的α-葡萄糖苷酶抑制率最大为89.22%。因此,利用BP神经网络可对牡蛎酶解非线性过程进行较好的模拟,并且对酶解产物的α-葡萄糖苷酶抑制率可进行较好预测,有利于牡蛎酶解活性肽的产业化制备。Abstract: In order to obtain active peptides with good activity of α-glucosidase inhibition, oyster was used as raw material, and neutral protease and animal proteolytic enzyme were selected for enzymolysis. The inhibition rate of oyster peptidesα-glucosidase was used as index to design the uniform design experiment.Results showed that the temperature of enzymolysis, the amount of enzyme and the concentration of substrate were correlated with the inhibitory rate of α-glucosidase. The three formers were used as inputs to the BP neural network and the latter was used as the output to develop neural network. The process of oyster enzymatic hydrolysis was simulated and the activity of oyster peptides was predicted.The optimal enzymolysis parameters were obtained. The results showed that the maximum inhibition rate of α-glucosidase was 89.22% when the enzymolysis temperature was 55 ℃, the enzymolysis time was 5 h, the enzyme concentration was 600 U/g, the substrate concentration was 0.25 g/m L. Therefore, BP neural network can be used to simulate the non-linear process of oyster enzymolysis, and the α-glucosidase inhibition rate of the hydrolyzate can be well predicted, which is favorable for the industrial production of oyster enzymatic peptides.