Department of Medical Sciences, Uppsala University, Uppsala, Sweden.
Department of Bacteria, Parasites & Fungi, Statens Serum Institut, Denmark.
Int J Antimicrob Agents. 2020 Aug;56(2):106008. doi: 10.1016/j.ijantimicag.2020.106008. Epub 2020 May 7.
Appropriate dosing of antibiotics is key in the treatment of bacterial infections to ensure clinical efficacy while avoiding toxic drug concentrations and minimizing emergence of resistance. As collection of sufficient clinical evidence is difficult for specific patient populations, infection types and pathogens, market authorization, dosing strategies and recommendations often rely on data obtained from in vitro and animal experiments. The aim of this review is to provide an overview of commonly used preclinical infection models, including their strengths and limitations. In vitro, static and dynamic time-kill experiments are the most frequently used methods for assessing pharmacokinetic/pharmacodynamic (PK/PD) associations. Limitations of in vitro models include the inability to account for the effects of the immune system, and uncertainties in clinically relevant bacterial concentrations, growth conditions and the implications of emerging resistant bacterial populations during experiments. Animal experiments, most commonly murine lung and thigh infections models, are considered a necessary link between in vitro data and the clinical situation. However, there are differences in pathophysiology, immunology, and PK between species. Mathematical modeling in which preclinical data are integrated with human population PK can facilitate translation of preclinical data to the patient's clinical situation. Moreover, PK/PD modeling and simulations can help in the design of clinical trials aiming to establish optimal dosing regimens to improve patient outcomes.
抗生素的适当剂量是治疗细菌感染的关键,既要确保临床疗效,又要避免药物毒性浓度,同时最大限度地减少耐药性的产生。由于收集特定患者人群、感染类型和病原体的充分临床证据较为困难,因此药物上市许可、给药策略和推荐通常依赖于从体外和动物实验中获得的数据。本文旨在概述常用的临床前感染模型,包括其优缺点。在体外,静态和动态杀菌实验是评估药代动力学/药效学(PK/PD)相关性的最常用方法。体外模型的局限性包括无法考虑免疫系统的影响,以及在实验过程中临床相关细菌浓度、生长条件和新出现的耐药菌种群的影响存在不确定性。动物实验,最常见的是鼠类肺部和腿部感染模型,被认为是体外数据与临床情况之间的必要联系。然而,种间在生理学、免疫学和 PK 方面存在差异。将临床前数据与人体群体 PK 整合的数学模型可以促进将临床前数据转化为患者的临床情况。此外,PK/PD 模型和模拟有助于设计临床试验,旨在建立最佳的给药方案,以改善患者的预后。