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首页> 外文期刊>Pharmaceutical development and technology >High throughput screening: an in silico solubility parameter approach for lipids and solvents in SLN preparations.
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High throughput screening: an in silico solubility parameter approach for lipids and solvents in SLN preparations.

机译:高通量筛选:用于SLN制剂中脂质和溶剂的计算机模拟溶解度参数方法。

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The present paper describes an in silico solubility behavior of drug and lipids, an essential screening study in preparation of solid lipid nanoparticles (SLN).Ciprofloxacin HCl was selected as a model drug along with 11 lipids and 5 organic solvents. In silico miscibility study of drug/lipid/solvent was performed using Hansen solubility parameter approach calculated by group contribution method of Van Krevelen and Hoftyzer. Predicted solubility was validated by determining solubility of lipids in various solvent at different temperature range, while miscibility of drug in lipids was determined by apparent solubility study and partition experiment.The presence of oxygen and OH functionality increases the polarity and hydrogen bonding possibilities of the compound which has reflected the highest solubility parameter values for Geleol and Capmul MCM C8. Ethyl acetate, Geleol and Capmul MCM C8 was identified as suitable organic solvent, solid lipid and liquid lipid respectively based on a solubility parameter approach which was in agreement with the result of an apparent solubility study and partition coefficient.These works demonstrate the validity of solubility parameter approach and provide a feasible predictor to the rational selection of excipients in designing SLN formulation.
机译:本文描述了药物和脂质在计算机上的溶解性行为,是制备固体脂质纳米颗粒(SLN)的必不可少的筛选研究。选择盐酸环丙沙​​星与11种脂质和5种有机溶剂一起作为模型药物。使用Van Krevelen和Hoftyzer的基团贡献法计算的Hansen溶解度参数法对药物/脂质/溶剂进行计算机混溶性研究。通过确定脂质在不同温度范围内在各种溶剂中的溶解度来验证预测的溶解度,同时通过表观溶解度研究和分配实验确定药物在脂质中的混溶性。氧和OH官能团的存在增加了化合物的极性和氢键的可能性它反映了Geleol和Capmul MCM C8的最高溶解度参数值。根据溶解度参数方法,乙酸乙酯,甘油和Capmul MCM C8分别被确定为合适的有机溶剂,固体脂质和液体脂质,这与表观溶解度研究和分配系数的结果相吻合。这些工作证明了溶解度的有效性参数方法,为SLN配方设计中辅料的合理选择提供了可行的预测指标。

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