Department of Community Health Sciences, University of Calgary, Calgary, AB, Canada.
Department of Medicine, University of Calgary, Calgary, AB, Canada.
J Hosp Infect. 2023 Apr;134:11-26. doi: 10.1016/j.jhin.2023.01.003. Epub 2023 Jan 16.
Increasing prevalence of antimicrobial-resistant organisms (AROs) is a growing economic and healthcare challenge. Increasing utilization of electronic medical record (EMR) systems and improvements in computation and analytical techniques afford an opportunity to reduce the spread of AROs through the development of clinical prediction tools to identify ARO carriers on admission to hospital.
To identify existing clinical prediction tools for meticillin-resistant Staphylococcus aureus (MRSA) and carbapenemase-producing organisms (CPOs), their predictive performance, and risk factors utilized in these tools.
The CHARMS checklist was followed. Medline, EMBASE, Cochrane SR, CRD databases (DARE, NHS EED), CINAHL and Web of Science were searched from database inception to 26 July 2021. Full-text articles were assessed independently, and quality assessment was conducted using the Prediction Model Risk of Bias Assessment Tool.
In total, 3809 abstracts were identified and 22 studies were included. Among these studies, risk score models were the most common prediction tool (N=16). Previous admission, recent antibiotic exposure, age and sex were the most common risk factors for ARO carriage. Prediction tools were commonly evaluated on sensitivity and specificity with ranges of 15-100% and 46-98.6%, respectively, for MRSA, and 30-81.3% and 79.8-99.9%, respectively, for CPOs.
There is no gold standard ARO prediction tool. However, high-performance clinical prediction tools and identification of key risk factors for the early detection of AROs exist. Risk score models are easier to use and interpret; however, with recent improvements in machine learning techniques, highly robust models can be developed with data stored in an EMR.
抗菌药物耐药菌(ARO)的患病率不断上升,这是一个日益严峻的经济和医疗保健挑战。电子病历(EMR)系统的广泛应用以及计算和分析技术的改进,为开发临床预测工具提供了机会,通过这些工具可以在患者入院时识别出 ARO 携带者,从而减少 ARO 的传播。
确定现有的耐甲氧西林金黄色葡萄球菌(MRSA)和产碳青霉烯酶菌(CPO)临床预测工具,以及这些工具的预测性能和所使用的风险因素。
我们遵循 CHARMS 清单。从数据库建立之初到 2021 年 7 月 26 日,我们在 Medline、EMBASE、Cochrane SR、CRD 数据库(DARE、NHS EED)、CINAHL 和 Web of Science 中进行了搜索。独立评估全文文章,并使用预测模型风险偏倚评估工具进行质量评估。
共确定了 3809 篇摘要,纳入了 22 项研究。在这些研究中,风险评分模型是最常见的预测工具(N=16)。既往住院、近期抗生素暴露、年龄和性别是 ARO 携带的最常见危险因素。预测工具通常根据敏感性和特异性进行评估,MRSA 的范围分别为 15-100%和 46-98.6%,CPO 的范围分别为 30-81.3%和 79.8-99.9%。
目前尚无 ARO 预测的金标准工具。然而,存在高性能的临床预测工具和识别 ARO 的关键风险因素。风险评分模型更易于使用和解释;但是,随着机器学习技术的最新进展,可以使用存储在 EMR 中的数据开发高度稳健的模型。