混溶性
萘普生
溶解度
差示扫描量热法
熔点下降
玻璃化转变
溶解度参数
材料科学
化学
化学工程
聚合物
热力学
物理化学
熔点
有机化学
医学
物理
工程类
病理
替代医学
作者
Amrit Paudel,Jan Van Humbeeck,Guy Van den Mooter
摘要
The objective of the present study was to determine the solid state solubility and miscibility of naproxen in poly(vinylpyrrolidone) (PVP) and the mutual interaction using the standard thermodynamic models and thermal analysis. Solid dispersions were prepared by spray drying several compositions of naproxen and PVP with different molecular weights, viz., PVP K 12, PVP K 25 and PVP K 90, and analyzed using modulated differential scanning calorimetry (mDSC). The kinetic miscibility limit in terms of a single mixed phase glass transition temperature was found to be relatively similar for the dispersions containing PVP with different chain lengths (≥50% w/w drug in PVP). But the systems with different PVP followed diverse patterns of composition dependent mixed phase glass transition temperature as well as the degree of plasticization by water. The crystalline solid solubility values of naproxen in PVP estimated by using its solubility data in n-methylpyrrolidone, a low molecular weight analogue of PVP, were 6.42, 5.85 and 5.81% w/w of drug in PVP K 12, PVP K 25 and PVP K 90 respectively. The values estimated for corresponding amorphous solubility showed no marked difference. The remarkable difference between thermodynamic solubility/miscibility and kinetic miscibility implied that naproxen was highly supersaturated in the PVP solid dispersions and only stabilized kinetically. The negative value of the drug−polymer interaction parameter (−0.36) signified the systems to be favorably mixing. The melting point depression data of naproxen in PVP pointed to the composition dependence and chain length effect on the interaction. The moisture sorption by the physical mixtures not only provided the composition dependent interaction parameter but also conferred an estimate of composition dependent miscibility of naproxen in PVP in the presence of water.
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