Omadacycline pharmacokinetics/pharmacodynamics and efficacy against multidrug-resistant Mycobacterium tuberculosis in the hollow fiber system model

ANTIMICROBIAL AGENTS AND CHEMOTHERAPY(2024)

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摘要
Seventy-five years ago, first-generation tetracyclines demonstrated limited efficacy in the treatment of tuberculosis but were more toxic than efficacious. We performed a series of pharmacokinetic/pharmacodynamic (PK/PD) experiments with a potentially safer third-generation tetracycline, omadacycline, for the treatment of multidrug-resistant tuberculosis (MDR-TB). Mycobacterium tuberculosis (Mtb) H37Rv and an MDR-TB clinical strain (16D) were used in the minimum inhibitory concentration (MIC) and static concentration-response studies in test tubes, followed by a PK/PD study using the hollow fiber system model of TB (HFS-TB) that examined six human-like omadacycline doses. The inhibitory sigmoid maximal effect (E-max) model and Monte Carlo experiments (MCEs) were used for data analysis and clinical dose-finding, respectively. The omadacycline MIC for both Mtb H37Rv and MDR-TB clinical strain was 16 mg/L but dropped to 4 mg/L with daily drug supplementation to account for omadacycline degradation. The Mycobacteria Growth Indicator Tube MIC was 2 mg/L. In the test tubes, omadacycline killed 4.39 log(10) CFU/mL in 7 days. On Day 28 of the HFS-TB study, the E-max was 4.64 log(10) CFU/mL, while exposure mediating 50% of E-max (EC50) was an area under the concentration-time curve to MIC (AUC(0-24)/MIC) ratio of 22.86. This translates to PK/PD optimal exposure or EC80 as AUC(0-24)/MIC of 26.93. The target attainment probability of the 300-mg daily oral dose was 90% but fell at MIC >= 4 mg/L. Omadacycline demonstrated efficacy and potency against both drug-susceptible and MDR-TB. Further studies are needed to identify the omadacycline effect in combination therapy for the treatment of both drug-susceptible and MDR-TB.
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关键词
hollow fiber model system,tetracycline,pharmacokinetics/pharmacodynamics,efficacy,MDR-TB
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