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Prediction of the partition coefficients using QSPR modeling and simulation of paclitaxel release from the diffusion-controlled drug delivery devices

机译:QSPR释放从扩散控制药物递送装置预测分区系数的预测

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摘要

An in silico approach is proposed to first predict the partition coefficient of the model drug. paclitaxel, in different biocompatible and biodegradable polymer versus the blood plasma using artificial neural networks (ANNs) and semi-empirical quantitative structure property relationships (QSPRs). A simplified molecular-input line-entry system (SMILES) notation is used to represent the structures of the different polymers and the drug. The SMILES notation is then used to calculate the various structure-based descriptors. These descriptors are then used in the ANNs and semi-empirical QSPRs to predict the properties for a given drug-polymer device. A fluid flow model is subsequently solved to simulate the controlled drug release in the blood plasma. The effects of various parameters are also studied on the drug release profiles from these devices. The proposed approach provides a systematic framework to simulate the controlled release of the drug from the diffusion-controlled drug-polymer release systems. The developed models can be used in a reverse engineer framework to design the controlled delivery devices for a target drug release profile in near future.
机译:提出了一种硅方法首先预测模型药物的分区系数。紫杉醇,在不同的生物相容性和可生物降解的聚合物与使用人工神经网络(ANNS)和半经验定量结构性质关系(QSPRS)的血液等离子体。简化的分子输入线入口系统(微笑)表示法用于表示不同聚合物和药物的结构。然后使用微笑表示法来计算各种基于结构的描述符。然后在ANN和半经验QSPR中使用这些描述符以预测给定药剂件的性质。随后解决了流体流动模型以模拟血液血浆中的受控药物释放。还研究了各种参数的效果,对来自这些装置的药物释放曲线也研究。该方法提供了一种系统框架,用于模拟来自扩散控制的药物 - 聚合物释放系统的药物的控制释放。开发的模型可用于逆向工程框架,以在不久的将来设计针对目标药物释放概况的受控递送装置。

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