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在计算机化医嘱录入系统中,针对被 override 的用药警示定制的警示确认原因的适宜性有所提高。

Increased appropriateness of customized alert acknowledgement reasons for overridden medication alerts in a computerized provider order entry system.

作者信息

Dekarske Brian M, Zimmerman Christopher R, Chang Robert, Grant Paul J, Chaffee Bruce W

机构信息

Froedtert and the Medical College of Wisconsin, Department of Pharmacy, Froedtert Health Woodland Prime Building, 200 N74 W12501 Leatherwood CT, Menomonee Falls, Milwaukee, WI 53051, USA.

University of Michigan Health System, Department of Pharmacy Services, Ann Arbor, MI, USA.

出版信息

Int J Med Inform. 2015 Dec;84(12):1085-93. doi: 10.1016/j.ijmedinf.2015.09.001. Epub 2015 Sep 11.

Abstract

OBJECTIVE

Computerized provider order entry systems commonly contain alerting mechanisms for patient allergies, incorrect doses, or drug-drug interactions when ordering medications. Providers have the option to override (bypass) these alerts and continue with the order unchanged. This study examines the effect of customizing medication alert override options on the appropriateness of override selection related to patient allergies, drug dosing, and drug-drug interactions when ordering medications in an electronic medical record.

MATERIALS AND METHODS

In this prospective, randomized crossover study, providers were randomized into cohorts that required a reason for overriding a medication alert from a customized or non-customized list of override reasons and/or by free-text entry. The primary outcome was to compare override responses that appropriately correlate with the alert type between the customized and non-customized configurations. The appropriateness of a subset of free-text responses that represented an affirmative and active acknowledgement of the alert without further explanation was classified as "indeterminate." Results were analyzed in three different ways by classifying indeterminate answers as either appropriate, inappropriate, or excluded entirely. Secondary outcomes included the appropriateness of override reasons when comparing cohorts and individual providers, reason selection based on order within the override list, and the determination of the frequency of free-text use, nonsensical responses, and multiple selection responses.

RESULTS

Twenty-two clinicians were randomized into 2 cohorts and a total of 1829 alerts with a required response were generated during the study period. The customized configuration had a higher rate of appropriateness when compared to the non-customized configuration regardless of how indeterminate responses were classified (p<0.001). When comparing cohorts, appropriateness was significantly higher in the customized configuration regardless of the classification of indeterminate responses (p<0.001) with one exception: when indeterminate responses were considered inappropriate for the cohort of providers that were first exposed to the non-customized list (p=0.103). Free-text use was higher in the customized configuration overall (p<0.001), and there was no difference in nonsensical response between configurations (p=0.39).

CONCLUSION

There is a benefit realized by using a customized list for medication override reasons. Poor application design or configuration can negatively affect provider behavior when responding to important medication alerts.

摘要

目的

计算机化医嘱录入系统通常包含针对患者过敏、剂量错误或药物相互作用的警示机制。在开具医嘱时,医护人员可以选择忽略(绕过)这些警示并继续开具不变的医嘱。本研究探讨在电子病历中开具医嘱时,定制用药警示忽略选项对与患者过敏、药物剂量及药物相互作用相关的忽略选择合理性的影响。

材料与方法

在这项前瞻性随机交叉研究中,医护人员被随机分为不同队列,这些队列需要从定制或非定制的忽略原因列表中给出忽略用药警示的理由,和/或通过自由文本输入。主要结果是比较定制和非定制配置中与警示类型适当相关的忽略反应。一部分自由文本回复表示对警示进行了肯定且主动的确认但未作进一步解释,其合理性被归类为“不确定”。通过将不确定答案分类为适当、不适当或完全排除这三种不同方式对结果进行分析。次要结果包括比较不同队列和个体医护人员时忽略理由的合理性、基于忽略列表中的医嘱进行理由选择,以及确定自由文本使用频率、无意义回复和多项选择回复情况。

结果

22名临床医生被随机分为2个队列,研究期间共产生1829条需要回复的警示。无论不确定回复如何分类,与非定制配置相比,定制配置的合理性率更高(p<0.001)。比较不同队列时,除了一种情况外,无论不确定回复如何分类,定制配置中的合理性均显著更高(p<0.001):当不确定回复被认为对于首先接触非定制列表的医护人员队列不合适时(p=0.103)。总体而言,定制配置中自由文本的使用更高(p<0.001),不同配置之间无意义回复没有差异(p=0.39)。

结论

使用定制列表作为用药忽略理由有一定益处。不良的应用设计或配置可能会在医护人员对重要用药警示做出反应时对其行为产生负面影响。

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