基于多输入多输出神经模糊系统的工程药物设计

C. Grosan, A. Abraham, S. Tigan
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引用次数: 6

摘要

本文提出了一个多输入多输出(MIMO)神经模糊模型。药物设计是当前药物研究领域的一个难题。通过设计药物,我们意味着选择药物配方的一些变量(输入),以获得药物的最佳特性(输出)。为了解决这一问题,我们提出了一种神经模糊模型,并将其性能与人工神经网络进行了比较。本研究使用了从罗马尼亚克卢日-纳波卡药学院药学技术实验室获得的实验数据。其思想是建立一个多输入-多输出神经模糊模型来描述输入和输出之间的依赖关系。建立了一阶Takagi-Sugeno型模糊推理系统,并利用神经网络学习技术对其进行微调。采用Bootstrap技术生成更多的数据样本,由于实验成本和实验时间的限制,实验数据的数量减少。我们用这种方法对某些药物参数得到了较好的估计。实验结果表明,该方法是有效的
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Engineering Drug Design Using a Multi-Input Multi-Output Neuro-Fuzzy System
This article presents a multi-input multi-output (MIMO) neuro-fuzzy model for a pharmaceutical research problem. Designing drugs is a current problem in the pharmaceutical research domain. By designing a drug we mean to choose some variables of drug formulation (inputs), for obtaining optimal characteristics of drug (outputs). To solve such a problem we propose a neuro-fuzzy model and the performance is compared with artificial neural networks. This research used the experimental data obtained from the Laboratory of Pharmaceutical Techniques of the Faculty of Pharmacy in Cluj-Napoca, Romania. The idea is to build a multi-input - multi-output neuro-fuzzy model depicting the dependence between inputs and outputs. A first order Takagi-Sugeno type fuzzy inference system is developed and it is fine tuned using neural network learning techniques. Bootstrap techniques were used to generate more samples of data and the number of experimental data is reduced due to the costs and time durations of experimentations. We obtain in this way a better estimation of some drug parameters. Experiment results indicate that the proposed method is efficient
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