Kirkendall Eric S, Kouril Michal, Dexheimer Judith W, Courter Joshua D, Hagedorn Philip, Szczesniak Rhonda, Li Dan, Damania Rahul, Minich Thomas, Spooner S Andrew
Division of Biomedical Informatics, Cincinnati Children's Hospital Medical Center, Cincinnati, Ohio, USA.
Department of Information Services, Cincinnati Children's Hospital Medical Center, Cincinnati, Ohio, USA.
J Am Med Inform Assoc. 2017 Mar 1;24(2):295-302. doi: 10.1093/jamia/ocw086.
Electronic trigger detection tools hold promise to reduce Adverse drug event (ADEs) through efficiencies of scale and real-time reporting. We hypothesized that such a tool could automatically detect medication dosing errors as well as manage and evaluate dosing rule modifications.
We created an order and alert analysis system that identified antibiotic medication orders and evaluated user response to dosing alerts. Orders associated with overridden alerts were examined for evidence of administration and the delivered dose was compared to pharmacy-derived dosing rules to confirm true overdoses. True overdose cases were reviewed for association with known ADEs.
Of 55 546 orders reviewed, 539 were true overdose orders, which lead to 1965 known overdose administrations. Documentation of loose stools and diarrhea was significantly increased following drug administration in the overdose group. Dosing rule thresholds were altered to reflect clinically accurate dosing. These rule changes decreased overall alert burden and improved the salience of alerts.
Electronic algorithm-based detection systems can identify antibiotic overdoses that are clinically relevant and are associated with known ADEs. The system also serves as a platform for evaluating the effects of modifying electronic dosing rules. These modifications lead to decreased alert burden and improvements in response to decision support alerts.
The success of this test case suggests that gains are possible in reducing medication errors and improving patient safety with automated algorithm-based detection systems. Follow-up studies will determine if the positive effects of the system persist and if these changes lead to improved safety outcomes.
电子触发检测工具有望通过规模效率和实时报告来减少药物不良事件(ADEs)。我们假设这样一种工具能够自动检测用药剂量错误,并管理和评估剂量规则的修改。
我们创建了一个医嘱和警报分析系统,该系统可识别抗生素用药医嘱,并评估用户对剂量警报的反应。对与被忽略警报相关的医嘱进行给药证据检查,并将给药剂量与药房制定的剂量规则进行比较,以确认真正的过量用药情况。对真正的过量用药病例进行审查,以确定其与已知ADEs的关联。
在审查的55546条医嘱中,有539条是真正的过量用药医嘱,导致了1965次已知的过量给药。过量用药组在给药后,腹泻和稀便的记录显著增加。调整了剂量规则阈值,以反映临床准确的剂量。这些规则变化降低了总体警报负担,提高了警报的显著性。
基于电子算法的检测系统能够识别具有临床相关性且与已知ADEs相关的抗生素过量用药情况。该系统还可作为一个平台,用于评估修改电子剂量规则的效果。这些修改降低了警报负担,改善了对决策支持警报的反应。
该测试案例的成功表明,基于自动算法的检测系统在减少用药错误和提高患者安全方面有可能取得成效。后续研究将确定该系统的积极效果是否持续存在,以及这些变化是否能带来更好的安全结果。