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使用电子健康记录对一款用于自动检测社区获得性败血症的软件应用程序进行验证。

Validation of a software application using electronic health records for automatic detection of community onset sepsis.

作者信息

Duré Cristian, Jonmarker Sandra, Joelsson-Alm Eva, Nordqvist Hampus, Bohm Katarina, Rimling Liivi, Franko Mikael Andersson, Cronhjort Maria, Ängeby Kristian

机构信息

Department of Clinical Science and Education, Karolinska Institutet, Stockholm, Sweden.

Department of Emergency Medicine, Capio S:t Görans Hospital, Stockholm, Sweden.

出版信息

Sci Rep. 2025 May 12;15(1):16412. doi: 10.1038/s41598-025-99879-9.

Abstract

Our aim was to design and validate a software application, based on the Sepsis-3 criteria, capable of retrospectively identifying community-onset sepsis among emergency department patients requiring hospital admission.The application was developed using QlikView (Qlik, King of Prussia, PA, USA) software, and accessed data from the electronic health records TakeCare (CompuGroup Medical, Koblenz, Germany), and CliniSoft (CliniSoft, Kuopio, Finland). The application utilized indicators such as blood culture data, antibiotic administration, and Sequential Organ Failure Assessment scores to detect sepsis cases according to Sepsis-3 criteria. The application was tested retrospectively against a cohort from a large city hospital in Stockholm over a 2-year period, and its performance was compared to physician record reviews in a subset of cases identified by stratified random sampling. The results showed that among 229,195 emergency department visits leading to 60,213 hospital admissions, the application detected 7027 cases of sepsis. Validation using physician record review of a random selection of 426 cases demonstrated a sensitivity, specificity, positive predictive value, and negative predictive value of 95%, 99%, 92%, and 99%, respectively. The lower respiratory tract was the most common site of infection. This software application effectively identified community-onset sepsis patients using electronic health record data with high performance. It has the potential to improve sepsis identification as it operates independently of diagnostic codes and may, therefore, facilitate research in many areas of sepsis. Furthermore, it can be used as a tool within the healthcare system to enhance sepsis surveillance and evaluate quality improvement interventions.

摘要

我们的目标是设计并验证一款基于脓毒症-3标准的软件应用程序,该程序能够回顾性地识别需要住院治疗的急诊科患者中的社区获得性脓毒症。该应用程序使用QlikView(美国宾夕法尼亚州普鲁士王市的Qlik公司)软件进行开发,并从电子健康记录TakeCare(德国科布伦茨的CompuGroup Medical公司)和CliniSoft(芬兰库奥皮奥的CliniSoft公司)中获取数据。该应用程序利用血培养数据、抗生素使用情况和序贯器官衰竭评估分数等指标,根据脓毒症-3标准检测脓毒症病例。该应用程序对斯德哥尔摩一家大型城市医院2年期间的一个队列进行了回顾性测试,并将其性能与通过分层随机抽样确定的一部分病例中的医生记录审查结果进行了比较。结果显示,在导致60213例住院治疗的229195次急诊科就诊中,该应用程序检测到7027例脓毒症病例。对随机选择的426例病例进行医生记录审查验证,结果显示敏感性为(95%)、特异性为(99%)、阳性预测值为(92%)、阴性预测值为(99%)。下呼吸道是最常见的感染部位。这款软件应用程序利用电子健康记录数据有效地识别出了社区获得性脓毒症患者,且性能良好。它有可能改善脓毒症的识别,因为它独立于诊断代码运行,因此可能有助于脓毒症许多领域的研究。此外,它可作为医疗保健系统中的一种工具,以加强脓毒症监测并评估质量改进干预措施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6063/12069618/3ec524aa66bf/41598_2025_99879_Fig1_HTML.jpg

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