Nucleoside reverse transcriptase inhibitors (NRTIs) require intracellular phosphorylation to active triphosphate (TP) nucleotide metabolites before they can inhibit the HIV reverse transcriptase. However, monitoring these pharmacologically active TP metabolites is challenging due to their instability and their low concentrations at the pg/ml levels in blood and tissues. The combination of lamivudine (3TC) and abacavir (ABC) is one of the first lines for HIV therapy. Therefore, a sensitive, selective, accurate, and precise LC-MS/MS method was developed and validated for the simultaneous quantification of 3TC- and ABC-TP metabolites in mouse blood and tissues. Calibration curves were linear over the range of 10-100,000â¯pg/ml for 3TC-TP and 4-40,000â¯pg/ml for carbovir-TP (CBV-TP; phosphorylated metabolite of ABC). This corresponds to 2.1-21,322 fmol/10(6) cells for 3TC-TP and 0.8-8000â¯fmol/10(6) cells for CBV-TP. Accuracy and precision were less than 15% for all quality control sample (QCs), and absolute extraction recovery of were >65% for 3TC-TP and >90% for CBV-TP. The method was optimized to ensure stability of TP samples and standards during sample collection, preparation, analysis, and storage conditions. This method has enhanced sensitivity and requires smaller amounts of blood and tissue samples compared to previous LC-MS/MS methods for 3TC- and CBV-TP quantification. The developed method was successfully applied to characterize the pharmacokinetic profile of TP metabolites in mouse peripheral blood mononuclear cells (PBMCs), spleen, lymph nodes, and liver cells. In addition, another direct, simple, and high-throughput method for the quantification of TP standards was developed and used for the analysis of stability samples.
Simultaneous quantification of intracellular lamivudine and abacavir triphosphate metabolites by LC-MS/MS.
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作者:Gautam Nagsen, Lin Zhiyi, Banoub Mary G, Smith Nathan A, Maayah Audai, McMillan JoEllyn, Gendelman Howard E, Alnouti Yazen
| 期刊: | Journal of Pharmaceutical and Biomedical Analysis | 影响因子: | 3.100 |
| 时间: | 2018 | 起止号: | 2018 May 10; 153:248-259 |
| doi: | 10.1016/j.jpba.2018.02.036 | ||
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