Naylor Nichola R, Evans Stephanie, Pouwels Koen B, Troughton Rachael, Lamagni Theresa, Muller-Pebody Berit, Knight Gwenan M, Atun Rifat, Robotham Julie V
The National Institute for Health Research (NIHR) Health Protection Research Unit in Healthcare Associated Infection and Antimicrobial Resistance at Imperial College London, London, United Kingdom.
Department of Infectious Disease Epidemiology, Faculty of Epidemiology and Population Health, Antimicrobial Resistance (AMR) Centre, London School of Hygiene and Tropical Medicine, London, United Kingdom.
Front Public Health. 2022 Aug 8;10:803943. doi: 10.3389/fpubh.2022.803943. eCollection 2022.
Antimicrobial resistance (AMR) may negatively impact surgery patients through reducing the efficacy of treatment of surgical site infections, also known as the "primary effects" of AMR. Previous estimates of the burden of AMR have largely ignored the potential "secondary effects," such as changes in surgical care pathways due to AMR, such as different infection prevention procedures or reduced access to surgical procedures altogether, with literature providing limited quantifications of this potential burden. Former conceptual models and approaches for quantifying such impacts are available, though they are often high-level and difficult to utilize in practice. We therefore expand on this earlier work to incorporate heterogeneity in antimicrobial usage, AMR, and causative organisms, providing a detailed decision-tree-Markov-hybrid conceptual model to estimate the burden of AMR on surgery patients. We collate available data sources in England and describe how routinely collected data could be used to parameterise such a model, providing a useful repository of data systems for future health economic evaluations. The wealth of national-level data available for England provides a case study in describing how current surveillance and administrative data capture systems could be used in the estimation of transition probability and cost parameters. However, it is recommended that such data are utilized in combination with expert opinion (for scope and scenario definitions) to robustly estimate both the primary and secondary effects of AMR over time. Though we focus on England, this discussion is useful in other settings with established and/or developing infectious diseases surveillance systems that feed into AMR National Action Plans.
抗菌药物耐药性(AMR)可能会通过降低手术部位感染的治疗效果对手术患者产生负面影响,这也被称为AMR的“主要影响”。先前对AMR负担的估计在很大程度上忽略了潜在的“次要影响”,例如由于AMR导致的手术护理途径的变化,如不同的感染预防程序或完全减少手术机会,而相关文献对这种潜在负担的量化有限。虽然有以前的概念模型和方法来量化此类影响,但它们通常较为宏观,在实践中难以应用。因此,我们在早期工作的基础上进行拓展,纳入抗菌药物使用、AMR和致病生物的异质性,提供一个详细的决策树-马尔可夫混合概念模型来估计AMR对手术患者的负担。我们整理了英格兰现有的数据源,并描述了如何使用常规收集的数据对此类模型进行参数化,为未来的卫生经济评估提供一个有用的数据系统库。英格兰可获得的大量国家级数据提供了一个案例研究,说明了当前的监测和行政数据采集系统如何用于估计转移概率和成本参数。然而,建议将此类数据与专家意见(用于范围和情景定义)结合使用,以可靠地估计AMR随时间的主要和次要影响。尽管我们关注的是英格兰,但这一讨论对于其他拥有成熟和/或正在发展的传染病监测系统并为AMR国家行动计划提供数据的地区也很有用。