Haghpanah Fardad, Klein Eili Y
One Health Trust, Washington, D.C., USA.
Department of Emergency Medicine, Johns Hopkins School of Medicine, Baltimore, MD, USA.
Infect Control Hosp Epidemiol. 2025 Jan 9;46(3):1-7. doi: 10.1017/ice.2024.224.
Clinical trials for assessing the effects of infection prevention and control (IPC) interventions are expensive and have shown mixed results. Mathematical models can be relatively inexpensive tools for evaluating the potential of interventions. However, capturing nuances between institutions and in patient populations have adversely affected the power of computational models of nosocomial transmission.
In this study, we present an agent-based model of ICUs in a tertiary care hospital, which directly uses data from the electronic medical records (EMR) to simulate pathogen transmission between patients, HCWs, and the environment. We demonstrate the application of our model to estimate the effects of IPC interventions at the local hospital level. Furthermore, we identify the most important sources of uncertainty, suggesting areas for prioritization in data collection.
Our model suggests that the stochasticity in ICU infections was mainly due to the uncertainties in admission prevalence, hand hygiene compliance/efficacy, and environmental disinfection efficacy. Analysis of interventions found that improving mean HCW compliance to hand hygiene protocols to 95% from 70%, mean terminal room disinfection efficacy to 95% from 50%, and reducing post-handwashing residual contamination down to 1% from 50%, could reduce infections by an average of 36%, 31%, and 26%, respectively.
In-silico models of transmission coupled to EMR data can improve the assessment of IPC interventions. However, reducing the uncertainty of the estimated effectiveness requires collecting data on unknown or lesser known epidemiological and operational parameters of transmission, particularly admission prevalence, hand hygiene compliance/efficacy, and environmental disinfection efficacy.
评估感染预防与控制(IPC)干预措施效果的临床试验成本高昂,且结果参差不齐。数学模型可能是评估干预措施潜力的相对低成本工具。然而,捕捉不同机构和患者群体之间的细微差别对医院感染传播计算模型的效能产生了不利影响。
在本研究中,我们提出了一个基于智能体的三级护理医院重症监护病房模型,该模型直接使用电子病历(EMR)数据来模拟病原体在患者、医护人员和环境之间的传播。我们展示了我们的模型在估计当地医院层面IPC干预措施效果方面的应用。此外,我们确定了最重要的不确定性来源,提出了数据收集优先次序的领域。
我们的模型表明,重症监护病房感染的随机性主要归因于入院患病率、手卫生依从性/效果以及环境消毒效果方面的不确定性。对干预措施的分析发现,将医护人员对手卫生规程的平均依从性从70%提高到95%,将病房终末消毒的平均效果从50%提高到95%,并将洗手后残留污染从50%降低到1%,可分别平均减少感染36%、31%和26%。
与电子病历数据相结合的传播计算机模拟模型可以改进对IPC干预措施的评估。然而,要降低估计效果的不确定性,需要收集关于未知或鲜为人知的传播流行病学和操作参数的数据,特别是入院患病率、手卫生依从性/效果以及环境消毒效果。