Improved GA combined with GDBP algorithm for forecasting releasing behaviors of drug carrier

Li Mao, Deyu Qi, Xiaoxi Li
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引用次数: 1

Abstract

The bioadhesive drug delivery systems using satrch-based colon-targeted drug carriers have drawn great attention in the field of pharmaceutical science in resent years. A Neural Network (NN) prediction model was developed based on hibrid method of improved genetic algorithms (GA) and conjugate gradient algorithm for backpropagation(GDBP) NN according to key factors that affect releasing behaviors of satrch-based colon-targeted drug carrier. In particular, function approximation capability and high efficciency of GDBP NN is used to simulate nonlinear relation between key factors and drug carrier releasing behaviors. Futhermore, the simulation results indicate that compared with traditional GA-BP NN, training efficiency of GA-GDBP NN has been greatly improved. Consequently, the model finds a new way to predict drug carrier releasing behaviors and instructs factors seting in real experiments.
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改进遗传算法结合GDBP算法预测药物载体的释放行为
近年来,基于结肠靶向药物载体的生物黏附给药系统受到了药学领域的广泛关注。针对影响结肠靶向药物载体释放行为的关键因素,基于改进遗传算法(GA)和反向传播共轭梯度算法(GDBP)神经网络的混合方法,建立了神经网络预测模型。特别是利用GDBP神经网络的函数逼近能力和高效率来模拟关键因素与药物载体释放行为之间的非线性关系。仿真结果表明,与传统的GA-BP神经网络相比,GA-GDBP神经网络的训练效率有了很大提高。因此,该模型为预测药物载体释放行为提供了一种新的方法,并为实际实验中的因素设置提供了指导。
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