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自动化不良事件检测协作:跨学术儿科机构的电子不良事件识别、分类和纠正措施。

Automated adverse event detection collaborative: electronic adverse event identification, classification, and corrective actions across academic pediatric institutions.

机构信息

From the *Children's National Medical Center; †The George Washington University School of Medicine, Washington, District of Columbia; ‡Cincinnati Children's Hospital Medical Center, Cincinnati, Ohio; and §Center for Pediatric Informatics, at Children's National Medical Center, Washington, District of Columbia.

出版信息

J Patient Saf. 2013 Dec;9(4):203-10. doi: 10.1097/PTS.0000000000000055.

Abstract

BACKGROUND

Historically, the gold standard for detecting medical errors has been the voluntary incident reporting system. Voluntary reporting rates significantly underestimate the number of actual adverse events in any given organization. The electronic health record (EHR) contains clinical and administrative data that may indicate the occurrence of an adverse event and can be used to detect adverse events that may otherwise remain unrecognized. Automated adverse event detection has been shown to be efficient and cost effective in the hospital setting. The Automated Adverse Event Detection Collaborative (AAEDC) is a group of academic pediatric organizations working to identify optimal electronic methods of adverse event detection. The Collaborative seeks to aggregate and analyze data around adverse events as well as identify and share specific intervention strategies to reduce the rate of such events, ultimately to deliver higher quality and safer care. The objective of this study is to describe the process of automated adverse event detection, report early results from the Collaborative, identify commonalities and notable differences between 2 organizations, and suggest future directions for the Collaborative.

METHODS

In this retrospective observational study, the implementation and use of an automated adverse event detection system was compared between 2 academic children's hospital participants in the AAEDC, Children's National Medical Center, and Cincinnati Children's Hospital Medical Center. Both organizations use the EHR to identify potential adverse events as designated by specific electronic data triggers. After gathering the electronic data, a clinical investigator at each hospital manually examined the patient record to determine whether an adverse event had occurred, whether the event was preventable, and the level of harm involved.

RESULTS

The Automated Adverse Event Detection Collaborative data from the 2 organizations between July 2006 and October 2010 were analyzed. Adverse event triggers associated with opioid and benzodiazepine toxicity and intravenous infiltration had the greatest positive predictive value (range, 47%- 96%). Triggers associated with hypoglycemia, coagulation disturbances, and renal dysfunction also had good positive predictive values (range, 22%-74%). In combination, the 2 organizations detected 3,264 adverse events, and 1,870 (57.3%) of these were preventable. Of these 3,264 events, clinicians submitted only 492 voluntary incident reports (15.1%).

CONCLUSIONS

This work demonstrates the value of EHR-derived data aggregation and analysis in the detection and understanding of adverse events. Comparison and selection of optimal electronic trigger methods and recognition of adverse event trends within and between organizations are beneficial. Automated detection of adverse events likely contributes to the discovery of opportunities, expeditious implementation of process redesign, and quality improvement.

摘要

背景

历史上,检测医疗差错的金标准是自愿事件报告系统。自愿报告率大大低估了任何特定组织中实际不良事件的数量。电子健康记录(EHR)包含可能表明不良事件发生的临床和行政数据,并且可用于检测否则可能未被识别的不良事件。在医院环境中,自动不良事件检测已被证明是有效且具有成本效益的。自动不良事件检测协作组织(AAEDC)是一个由学术儿科组织组成的团体,致力于确定最佳的不良事件电子检测方法。该协作组织旨在汇总和分析不良事件数据,识别和分享特定的干预策略,以降低此类事件的发生率,最终提供更高质量和更安全的护理。本研究的目的是描述自动不良事件检测的过程,报告协作的早期结果,识别两个组织之间的共同性和显著差异,并为协作组织提出未来方向。

方法

在这项回顾性观察研究中,对 AAEDC 的两个学术儿童医院参与者,即儿童国家医疗中心和辛辛那提儿童医院医疗中心,使用自动不良事件检测系统的实施和使用情况进行了比较。这两个组织都使用电子病历来识别特定电子数据触发器指定的潜在不良事件。在收集电子数据后,每个医院的临床调查员都会手动检查患者记录,以确定是否发生了不良事件、事件是否可预防以及涉及的伤害程度。

结果

分析了 2006 年 7 月至 2010 年 10 月期间来自这两个组织的 AAEDC 数据。与阿片类药物和苯二氮䓬类药物毒性和静脉内渗透相关的不良事件触发因素具有最大的阳性预测值(范围为 47%-96%)。与低血糖、凝血障碍和肾功能障碍相关的触发因素也具有良好的阳性预测值(范围为 22%-74%)。这两个组织总共检测到 3264 起不良事件,其中 1870 起(57.3%)是可预防的。在这 3264 起事件中,临床医生仅提交了 492 份自愿事件报告(15.1%)。

结论

这项工作证明了从电子病历中获取数据并进行汇总和分析在检测和了解不良事件方面的价值。比较和选择最佳的电子触发方法,并识别组织内和组织间的不良事件趋势是有益的。自动检测不良事件可能有助于发现机会,迅速实施流程重新设计,并进行质量改进。

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