Semimechanistic Modeling of Eravacycline Pharmacodynamics Using Time-Kill Data with MIC Incorporated in an Adaptive Resistance Function.

Antimicrob Agents Chemother

Division of Infectious Disease Pharmacology, Office of Clinical Pharmacology, Office of Translational Sciences, Center for Drug Evaluation and Research, United States Food and Drug Administration, Silver Spring, Maryland, USA

Published: August 2020

AI Article Synopsis

  • Effective bacterial infection treatment requires not only strong antibiotics but also well-planned dosing strategies, as bacterial responses are complex.
  • Researchers developed a semimechanistic pharmacokinetic-pharmacodynamic model for the antibiotic eravacycline, focusing on its effects against various Gram-negative bacteria.
  • The final model successfully describes bacterial count changes over time, aiding in dose selection by considering pharmacodynamics and varying drug susceptibilities among patients.

Article Abstract

Effective bacterial infection eradication requires not only potent antibacterial agents but also proper dosing strategies. Current practices generally utilize point estimates of the effects of therapeutic agents, even though the actual kinetics of exposure are much more complex and relevant. Here, we use a full time course of the observed effects to develop a semimechanistic pharmacokinetic-pharmacodynamic model for eravacycline against multiple Gram-negative bacterial pathogens. This model incorporates components such as pharmacokinetics, bacterial life cycle, and drug effects to quantitatively describe the time course of antibacterial killing and the emergence of resistance. Model discrimination was performed by comparing goodness of fit, convergence diagnostics, and objective function values. Models were validated by assessing their abilities to describe bacterial count time courses in visual predictive checks. The final model describes 576 bacterial counts (expressed in log CFU per milliliter) from 144 time-kill experiments with low residual error and high precision. We characterize antibacterial susceptibility as a function of the MIC and adaptive resistance. In doing so, we show that the MIC is proportional to initial susceptibility at 0 h and the development of resistance over the course of 16 h. Altogether, this model may be useful in supporting dose selection, since it incorporates pharmacodynamics and clinically observed individual drug susceptibilities.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7449204PMC
http://dx.doi.org/10.1128/AAC.01308-20DOI Listing

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