重症监护病房艰难梭菌感染的新型可视化。

ACI open Pub Date : 2019-07-01 Epub Date: 2019-08-21 DOI:10.1055/s-0039-1693651
Sean C Yu, Albert M Lai, Justin Smyer, Jennifer Flaherty, Julie E Mangino, Ann Scheck McAlearney, Po-Yin Yen, Susan Moffatt-Bruce, Courtney L Hebert
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引用次数: 2

摘要

背景:准确和及时地监测和诊断卫生保健机构发病的艰难梭菌感染(HO-CDI)对于控制医院内的感染至关重要,但协助及时进行疫情调查的工具有限。目的:将时空因素与HO-CDI病例相结合,并开发基于地图的仪表板,以支持感染预防学家(ip)对HO-CDI进行监测和疫情调查。方法:从某大型学术医疗中心的信息库中提取住院患者2年以上的临床实验室结果和入院-转院-出院资料,按照疾病控制中心(CDC)国家卫生保健安全网络(NHSN)的定义进行处理,按发病日期对艰难梭菌感染(CDI)病例进行分类。结果与该学术医学中心临床流行病学(AMC)的IPs维护的内部感染监测数据库进行验证。医院平面图与HO-CDI病例数据相结合,创建了重症监护病房的仪表板。可用性测试是通过思考会议和调查进行的。结果:简单分类算法识别出2015年1月1日~ 15年11月30日265例HO-CDI病例,阳性预测值(PPV)为96.3%。当应用于2014年的数据时,PPV为94.6%,所有用户“强烈同意”仪表板将是临床流行病学的积极补充,并使他们能够更有效地向他人展示医院获得性感染(HAI)信息。结论:CDI仪表板证明了将临床数据映射到医院患者护理单位以进行更有效的监测和潜在疫情调查的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Novel Visualization of <i>Clostridium difficile</i> Infections in Intensive Care Units.

Novel Visualization of Clostridium difficile Infections in Intensive Care Units.

Background: Accurate and timely surveillance and diagnosis of healthcare-facility onset Clostridium difficile infection (HO-CDI) is vital to controlling infections within the hospital, but there are limited tools to assist with timely outbreak investigations.

Objectives: To integrate spatiotemporal factors with HO-CDI cases and develop a map-based dashboard to support infection preventionists (IPs) in performing surveillance and outbreak investigations for HO-CDI.

Methods: Clinical laboratory results and Admit-Transfer-Discharge data for admitted patients over two years were extracted from the Information Warehouse of a large academic medical center and processed according to Center for Disease Control (CDC) National Healthcare Safety Network (NHSN) definitions to classify Clostridium difficile infection (CDI) cases by onset date. Results were validated against the internal infection surveillance database maintained by IPs in Clinical Epidemiology of this Academic Medical Center (AMC). Hospital floor plans were combined with HO-CDI case data, to create a dashboard of intensive care units. Usability testing was performed with a think-aloud session and a survey.

Results: The simple classification algorithm identified all 265 HO-CDI cases from 1/1/15-11/30/15 with a positive predictive value (PPV) of 96.3%. When applied to data from 2014, the PPV was 94.6% All users "strongly agreed" that the dashboard would be a positive addition to Clinical Epidemiology and would enable them to present Hospital Acquired Infection (HAI) information to others more efficiently.

Conclusions: The CDI dashboard demonstrates the feasibility of mapping clinical data to hospital patient care units for more efficient surveillance and potential outbreak investigations.

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