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The use of artificial neural networks for the selection of the most appropriate formulation and processing variables in order to predict the in vitro dissolution of sustained release minitablets

机译:使用人工神经网络选择最合适的制剂和加工变量以预测缓释小片的体外溶出度

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摘要

The objective of this work was to apply artificial neural networks (ANNs) to examine the relative importance of various factors, both formulation and process, governing the in-vitro dissolution from enteric-coated sustained release (SR) minitablets. Input feature selection (IFS) algorithms were used in order to give an estimate of the relative importance of the various formulation and processing variables in determining minitablet dissolution rate. Both forward and backward stepwise algorithms were used as well as genetic algorithms. Networks were subsequently trained using the back propagation algorithm in order to check whether or not the IFS process had correctly located any unimportant inputs. IFS gave consistent rankings for the importance of the various formulation and processing variables in determining the release of drug from minitablets. Consistent ranking was achieved for both indices of the release process; ie, the time taken for release to commence through the enteric coat (Tlag) and that for the drug to diffuse through the SR matrix of the minitablet into the dissolution medium (T90-10). In the case of the Tlag phase, the main coating parameters, along with the original batch blend size and the blend time with lubricant, were found to have most influence. By contrast, with the T90-10 phase, the amounts of matrix forming polymer and direct compression filler were most important. In the subsequent training of the ANNs, removal of inputs regarded as less important led to improved network performance. ANNs were capable of ranking the relative importance of the various formulations and processing variables that influenced the release rate of the drug from minitablets. This could be done for all main stages of the release process. Subsequent training of the ANN verified that removal of less relevant inputs from the training process led to an improved performance from the ANN.
机译:这项工作的目的是应用人工神经网络(ANN)来检查各种因素的相对重要性,包括配方和工艺,以控制肠溶衣缓释(SR)微型片剂的体外溶出度。使用输入特征选择(IFS)算法来估算各种配方和加工变量在确定小片溶出度时的相对重要性。前进和后退逐步算法以及遗传算法都被使用。随后使用反向传播算法对网络进行了训练,以检查IFS进程是否正确定位了任何不重要的输入。 IFS对各种配方和加工变量在确定微片中药物释放的重要性方面给出了一致的排名。释放过程的两个指标均达到了一致的排名;也就是说,通过肠溶衣开始释放所需的时间(Tlag),以及药物通过微型片剂的SR基质扩散到溶出介质中所需的时间(T90-10)。在Tlag相的情况下,发现主要的涂层参数,原始的批料混合尺寸以及与润滑剂的混合时间影响最大​​。相反,在T90-10相中,形成基质的聚合物和直接压缩填料的量最为重要。在随后的人工神经网络训练中,删除输入的重要性不那么重要,从而改善了网络性能。人工神经网络能够对影响微片中药物释放速率的各种配方和加工变量的相对重要性进行排名。这可以在发布过程的所有主要阶段完成。随后对ANN进行的培训证明,从培训过程中删除不太相关的输入会导致ANN的性能得到改善。

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