脂质体
化学
药物输送
扫描电子显微镜
小泡
色谱法
生物物理学
控制释放
透析管
粒径
膜
纳米技术
材料科学
生物化学
生物
物理化学
复合材料
有机化学
作者
Soumyarwit Manna,Yong Wu,Yan Wang,Bonhye Koo,Lynn Chen,Peter Petrochenko,Yixuan Dong,Stephanie Choi,Darby Kozak,Berk Öktem,Xiaoming Xu,Jiwen Zheng
标识
DOI:10.1016/j.jconrel.2018.12.029
摘要
The mechanism of drug release from complex dosage forms, such as multivesicular liposomes (MVLs), is complex and oftentimes sensitive to the release environment. This challenges the design and development of an appropriate in vitro release test (IVRT) method. In this study, a commercial bupivacaine MVL product was selected as a model product and an IVRT method was developed using a modified USP 2 apparatus in conjunction with reverse-dialysis membranes. This setup allowed the use of in situ UV-Vis probes to continuously monitor the drug concentration during release. In comparison to the traditional sample-and-separate methods, the new method allowed for better control of the release conditions allowing for study of the drug release mechanism. Bupivacaine (BPV) MVLs exhibited distinct tri-phasic release characteristics comprising of an initial burst release, lag phase and a secondary release. Temperature, pH, agitation speed and release media composition were observed to impact the mechanism and rate of BPV release from MVLs. The size and morphology of the MVLs as well as their inner vesicle compartments were analyzed using cryogenic-scanning electron microscopy (cryo-SEM), confocal laser scanning microscopy and laser diffraction, where the mean diameters of the MVLs and their inner "polyhedral" vesicles were found to be 23.6 ± 11.5 μm and 1.52 ± 0.44 μm, respectively. Cryo-SEM results further showed a decrease in particle size and loss of internal "polyhedral" structure of the MVLs over the duration of release, indicating erosion and rearrangement of the lipid layers. Based on these results a potential MVL drug release mechanism was proposed, which may assist with the future development of more biorelevant IVRT method for similar formulations.
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