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通过自动化不良事件检测识别儿童低血糖症。

Recognizing hypoglycemia in children through automated adverse-event detection.

机构信息

Division of Pediatric Critical Care Medicine, St Christopher's Hospital for Children, 3601 A St, Philadelphia, PA 19134, USA.

出版信息

Pediatrics. 2011 Apr;127(4):e1035-41. doi: 10.1542/peds.2009-3432. Epub 2011 Mar 14.

Abstract

BACKGROUND

Automated adverse-event detection using triggers derived from the electronic health record (EHR) is an effective method of identifying adverse events, including hypoglycemia. However, the true occurrence of adverse events related to hypoglycemia in pediatric inpatients and the harm that results remain largely unknown.

OBJECTIVE

We describe the use of an automated adverse-event detection system to detect and categorize hypoglycemia-related adverse events in pediatric inpatients.

METHODS

A retrospective observational study of all hypoglycemia triggers generated by an EHR-driven surveillance system was conducted at a large urban children's hospital during a 1-year period. All hypoglycemia triggers were investigated to determine if they represented a true adverse event and if that event followed or deviated from the local standard of care. Clinical and demographic variables were analyzed to identify subpopulations at risk for hypoglycemia.

RESULTS

Of the 1254 hypoglycemia triggers produced, 198 were adverse events (positive predictive value: 15.8%). No hypoglycemic adverse events were identified via the hospital's voluntary incident-reporting system. The majority of hypoglycemia-related adverse events occurred in the NICU (n = 123 of 198 [62.1%]). A total of 154 (77.8%) of the 198 adverse events hospital-wide and 102 (83%) of the 123 adverse events in the NICU occurred in patients who were receiving insulin therapy.

CONCLUSIONS

Hypoglycemia is common in hospitalized children, particularly neonates and those who receive insulin. An EHR-driven automated adverse-event detection system was effective in identifying hypoglycemia in this population. Automated adverse-event detection holds great promise in augmenting the safety program of organizations who have adopted the EHR.

摘要

背景

使用源自电子健康记录(EHR)的触发器自动检测不良事件是识别不良事件(包括低血糖症)的有效方法。然而,儿科住院患者中与低血糖相关的不良事件的真实发生情况及其所导致的危害在很大程度上仍不清楚。

目的

我们描述了使用自动不良事件检测系统来检测和分类儿科住院患者中与低血糖相关的不良事件。

方法

在一家大型城市儿童医院进行了一项回顾性观察研究,对 EHR 驱动的监测系统生成的所有低血糖触发因素进行了研究。调查了所有低血糖触发因素,以确定它们是否代表真正的不良事件,以及该事件是否符合或偏离当地的护理标准。分析了临床和人口统计学变量,以确定有低血糖风险的亚人群。

结果

在产生的 1254 个低血糖触发因素中,有 198 个是不良事件(阳性预测值:15.8%)。医院的自愿报告系统未识别出任何低血糖不良事件。大多数与低血糖相关的不良事件发生在新生儿重症监护病房(NICU)(198 例中的 123 例[62.1%])。在全院范围内,共有 154 例(198 例不良事件中的 77.8%),在 NICU 中,共有 102 例(123 例不良事件中的 83%)不良事件发生在接受胰岛素治疗的患者中。

结论

低血糖在住院儿童中很常见,尤其是新生儿和接受胰岛素治疗的儿童。EHR 驱动的自动不良事件检测系统在识别该人群中的低血糖方面非常有效。自动不良事件检测在增强采用 EHR 的组织的安全计划方面具有广阔的前景。

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