无定形固体
玻璃化转变
化学
差示扫描量热法
色氨酸
速尿
结晶学
分析化学(期刊)
有机化学
热力学
生物化学
氨基酸
聚合物
物理
作者
Katrine Tarp Jensen,Flemming H. Larsen,Korbinian Löbmann,Thomas Rades,Holger Grohganz
标识
DOI:10.1016/j.ejpb.2016.06.020
摘要
Molecular interactions were investigated within four different co-amorphous drug-amino acid systems, namely indomethacin–tryptophan (Ind–Trp), furosemide–tryptophan (Fur–Trp), indomethacin-arginine (Ind-Arg) and furosemide-arginine (Fur-Arg). The co-amorphous systems were prepared by ball milling for 90 min at different molar ratios and analyzed by XRPD and DSC. Interactions within the co-amorphous samples were evaluated based on the deviation between the actual glass transition temperature (Tg) and the theoretical Tg calculated by the Gordon-Taylor equation. The strongest interactions were observed in the 50 mol% drug (1:1 M ratio) mixtures, with the exception of co-amorphous Ind-Arg where the interactions within the 40 mol% drug samples appear equally strong. A particularly large deviation between the theoretical and actual Tgs was observed within co-amorphous Ind-Arg and Fur-Arg systems. Further analysis of these co-amorphous systems by 13C solid-state NMR (ssNMR) and FTIR confirmed that Ind and Fur formed a co-amorphous salt together with Arg. A modified approach of using the Gordon-Taylor equation was applied, using the equimolar co-amorphous mixture as one component, to describe the evolution of the Tgs with varying molar ratio between the drug and the amino acid. The actual Tgs for co-amorphous Ind-Trp, Fur-Trp and Fur-Arg were correctly described by this equation, confirming the assumption that the excess component was amorphous forming a homogeneous single component within the co-amorphous mixture without additional interactions. The modified equation described the Tgs of the co-amorphous Ind-Arg with excess Arg less well indicating possible further interactions; however, the FTIR and ssNMR data did not support the presence of additional intermolecular drug-amino acid interactions.
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