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Clinically Inconsequential Alerts: The Characteristics of Opioid Drug Alerts and Their Utility in Preventing Adverse Drug Events in the Emergency Department - 14/12/17

Doi : 10.1016/j.annemergmed.2015.09.020 
Emma K. Genco, MS a, , Jeri E. Forster, PhD b, c, Hanna Flaten, BA a, Foster Goss, DO a, Kennon J. Heard, MD, PhD a, Jason Hoppe, DO a, Andrew A. Monte, MD a
a Department of Emergency Medicine, University of Colorado School of Medicine, Denver, CO 
b Department of Physical Medicine and Rehabilitation, University of Colorado School of Medicine, Denver, CO 
c VA VISN 19 Rocky Mountain Mental Illness Research, Education, and Clinical Center (MIRECC), Denver, CO 

Corresponding Author.

Abstract

Study objective

We examine the characteristics of clinical decision support alerts triggered when opioids are prescribed, including alert type, override rates, adverse drug events associated with opioids, and preventable adverse drug events.

Methods

This was a retrospective chart review study assessing adverse drug event occurrences for emergency department (ED) visits in a large urban academic medical center using a commercial electronic health record system with clinical decision support. Participants include those aged 18 to 89 years who arrived to the ED every fifth day between September 2012 and January 2013. The main outcome was characteristics of opioid drug alerts, including alert type, override rates, opioid-related adverse drug events, and adverse drug event preventability by clinical decision support.

Results

Opioid drug alerts were more likely to be overridden than nonopioid alerts (relative risk 1.35; 95% confidence interval [CI] 1.21 to 1.50). Opioid drug-allergy alerts were twice as likely to be overridden (relative risk 2.24; 95% CI 1.74 to 2.89). Opioid duplicate therapy alerts were 1.57 times as likely to be overridden (95% CI 1.30 to 1.89). Fourteen of 4,581 patients experienced an adverse drug event (0.31%; 95% CI 0.15% to 0.47%), and 8 were due to opioids (57.1%). None of the adverse drug events were preventable by clinical decision support. However, 46 alerts were accepted for 38 patients that averted a potential adverse drug event. Overall, 98.9% of opioid alerts did not result in an actual or averted adverse drug event, and 96.3% of opioid alerts were overridden.

Conclusion

Overridden opioid alerts did not result in adverse drug events. Clinical decision support successfully prevented adverse drug events at the expense of generating a large volume of inconsequential alerts. To prevent 1 adverse drug event, providers dealt with more than 123 unnecessary alerts. It is essential to refine clinical decision support alerting systems to eliminate inconsequential alerts to prevent alert fatigue and maintain patient safety.

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 Please see page 241 for the Editor’s Capsule Summary of this article.
 Supervising editor: Donald M. Yealy, MD
 Author contributions: EKG submitted the ethics application, supervised and participated in data collection, analyzed the data, and wrote the article. EKG and AAM conceived and designed the study. AAM obtained research funding, provided advice on study design, and supervised the project. AAM and KJH participated in double abstracting data from charts. JEF provided statistical advice. EKG and HF collected data through chart review. FG, KJH, and JH provided advice on study design and analysis. All authors contributed substantially to its revision. EKG takes responsibility for the paper as a whole.
 Funding and support: By Annals policy, all authors are required to disclose any and all commercial, financial, and other relationships in any way related to the subject of this article as per ICMJE conflict of interest guidelines (see www.icmje.org/). The authors have stated that no such relationships exist. This work was supported by the University of Colorado Patient Safety and Quality Improvement Grant. Dr. Monte is supported by National Institutes of Health grants K23 GM110516 and UL1 TR000154.
 A 2PYVNMG survey is available with each research article published on the Web at www.annemergmed.com.
 A podcast for this article is available at www.annemergmed.com.


© 2015  American College of Emergency Physicians. Pubblicato da Elsevier Masson SAS. Tutti i diritti riservati.
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