化学
色谱法
蛋白质沉淀
治疗药物监测
甲酸铵
甲酸
液相色谱-质谱法
洋地黄毒素
药代动力学
串联质谱法
选择性反应监测
地高辛
质谱法
药理学
心力衰竭
医学
内科学
作者
Mariam M. Abady,Ji‐Seon Jeong,Ha‐Jeong Kwon
标识
DOI:10.1016/j.jchromb.2022.123552
摘要
Therapeutic drug monitoring (TDM) of cardiovascular drugs is essential to improve treatment efficacy and minimize toxicity because of the usage of multiple drugs with a very limited therapeutic range and the high pharmacokinetic variation in patients. We developed and validated a reliable and economical liquid chromatography/tandem mass spectrometry (LC-MS/MS) method for the determination of seven cardiovascular drugs—procainamide, lidocaine, quinidine, deslanoside, digoxin, atorvastatin, and digitoxin—for clinical usage. Serum samples were prepared by simple protein precipitation with an organic solvent consisting of acetonitrile and methanol (2:1 v/v) and analyzed under optimized LC-MS/MS conditions. The chromatographic separations were accomplished within 15 min on a reversed-phase C18 column with a gradient elution of aqueous solvent and acetonitrile while maintaining 0.1 (v/v) % formic acid and 2 mM ammonium formate. The optimized MS/MS conditions in ESI-positive mode offered sufficient sensitivity for the seven cardiovascular drugs (LOQs between 0.5 and 1 ng/mL). This method was fully validated including linearity, selectivity, accuracy, precision, carry-over, and matrix effects. Additionally, stability under several conditions was tested to determine how to handle the standard solutions and serum samples. The seven cardiovascular drugs, simultaneously, were precisely and accurately analyzed in intra- and inter-day assays (RSD < 6 % and recovery between 96.3 and 102.8 %) using only two isotope-labeled internal standards (lidocaine-(diethyl-d10) and digoxin-21, 21, 22-d3). The presented method also showed good accuracy in analyzing the seven drugs in hyperlipidemia, hyperalbuminemia, and hyperglycemia serum, allowing it to be recommended as a common and routine analysis method for cardiovascular drugs in clinical practice.
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