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使用人工神经网络对具有速释和缓释特性的时间依赖性片剂进行优化和评估。

Optimization and evaluation of time-dependent tablets comprising an immediate and sustained release profile using artificial neural network.

作者信息

Xie Huijun, Gan Yong, Ma Suwei, Gan Li, Chen Qinghua

机构信息

Institute of Materia Medica, Shanghai Institute for Biological Sciences, Chinese Academy of Sciences, Shanghai, P. R. China.

出版信息

Drug Dev Ind Pharm. 2008 Apr;34(4):363-72. doi: 10.1080/03639040701657701.

Abstract

The aim of this work was to optimize time-dependent tablets using artificial neural network (ANN). The time-dependent tablet consisted of a tablet core, which contained sustained release pellets (70% isosorbide-5-mononitrate [5-ISMN]), immediate release granules (30% 5-ISMN), superdisintegrating agent (sodium carboxymethylstarch, CMS-Na), and other excipients, surrounded by a coating layer composed of a water-insoluble ethylcellulose and a water-soluble channeling agent. The chosen independent variables, i.e., X(1) coating level of tablets, X(2) coating level of pellets, and X(3) CMS-Na level, were optimized with a three-factor, three-level Box-Behnken design. Data were analyzed for modeling and optimizing the release profile using ANN. Response surface plots were used to relate the dependent and the independent variables. The optimized values for the factors X(1)-X(3) were 4.1, 14.1, and 29.8%, respectively. Optimized formulations were prepared according to the factor combinations dictated by ANN. In each case, the observed drug release data of the optimized formulations were close to the predicted release pattern. An in vitro model for predicting the effect of food on release behavior of optimized products was used in this study. It was concluded that neural network technique could be particularly suitable in the pharmaceutical technology of time-dependent dosage forms where systems were complex and nonlinear relationships often existed between the independent and the dependent variables.

摘要

本研究旨在利用人工神经网络(ANN)优化定时释放片剂。定时释放片剂由片芯组成,片芯包含缓释微丸(70%的5-单硝酸异山梨酯[5-ISMN])、速释颗粒(30%的5-ISMN)、超级崩解剂(羧甲基淀粉钠,CMS-Na)和其他辅料,其外包有一层由水不溶性乙基纤维素和水溶性通道剂组成的包衣层。通过三因素、三水平的Box-Behnken设计对选定的自变量,即X(1)片剂包衣水平、X(2)微丸包衣水平和X(3) CMS-Na水平进行优化。使用ANN对数据进行分析以建立模型并优化释放曲线。响应面图用于关联因变量和自变量。因素X(1)-X(3)的优化值分别为4.1%、14.1%和29.8%。根据ANN确定的因素组合制备优化后的制剂。在每种情况下,优化制剂的实测药物释放数据均接近预测的释放模式。本研究使用了一种体外模型来预测食物对优化产品释放行为的影响。得出的结论是,神经网络技术可能特别适用于定时剂型的制药技术,因为在这种技术中,系统复杂,自变量和因变量之间往往存在非线性关系。

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