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Determination of factors controlling the particle size and entrapment efficiency of noscapine in PEG/PLA nanoparticles using artificial neural networks

机译:使用人工神经网络确定控制Noscapine在PEG / PLA纳米颗粒中的粒径和包封率的因素

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摘要

In this study, di- and triblock copolymers based on polyethylene glycol and polylactide were synthesized by ring-opening polymerization and characterized by proton nuclear magnetic resonance and gel permeation chromatography. Nanoparticles containing noscapine were prepared from these biodegradable and biocompatible copolymers using the nanoprecipitation method. The prepared nanoparticles were characterized for size and drug entrapment efficiency, and their morphology and size were checked by transmission electron microscopy imaging. Artificial neural networks were constructed and tested for their ability to predict particle size and entrapment efficiency of noscapine within the formed nanoparticles using different factors utilized in the preparation step, namely polymer molecular weight, ratio of polymer to drug, and number of blocks that make up the polymer. Using these networks, it was found that the polymer molecular weight has the greatest effect on particle size. On the other hand, polymer to drug ratio was found to be the most influential factor on drug entrapment efficiency. This study demonstrated the ability of artificial neural networks to predict not only the particle size of the formed nanoparticles but also the drug entrapment efficiency. This may have a great impact on the design of polyethylene glycol and polylactide-based copolymers, and can be used to customize the required target formulations.
机译:在这项研究中,通过开环聚合反应合成了基于聚乙二醇和聚丙交酯的二嵌段和三嵌段共聚物,并通过质子核磁共振和凝胶渗透色谱进行了表征。使用纳米沉淀法从这些可生物降解和生物相容的共聚物中制备出含有Noscapine的纳米颗粒。表征了所制备的纳米颗粒的尺寸和包封效率,并通过透射电子显微镜成像检查了它们的形态和尺寸。使用制备步骤中使用的不同因素(即聚合物分子量,聚合物与药物的比例以及构成嵌段的数量),构建并测试了人工神经网络,并测试了其预测形成的纳米颗粒中去甲酚碱的粒径和包封效率的能力。聚合物。使用这些网络,发现聚合物分子量对粒度具有最大的影响。另一方面,发现聚合物与药物的比例是影响药物截留效率的最重要因素。这项研究证明了人工神经网络不仅可以预测形成的纳米颗粒的粒径,而且可以预测药物的包封效率。这可能对聚乙二醇和基于聚丙交酯的共聚物的设计有很大影响,并且可以用于定制所需的目标配方。

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