Automated detection of wrong-drug prescribing errors

Author:

Lambert Bruce L,Galanter William,Liu King Lup,Falck Suzanne,Schiff Gordon,Rash-Foanio Christine,Schmidt Kelly,Shrestha NeehaORCID,Vaida Allen J,Gaunt Michael J

Abstract

BackgroundTo assess the specificity of an algorithm designed to detect look-alike/sound-alike (LASA) medication prescribing errors in electronic health record (EHR) data.SettingUrban, academic medical centre, comprising a 495-bed hospital and outpatient clinic running on the Cerner EHR. We extracted 8 years of medication orders and diagnostic claims. We licensed a database of medication indications, refined it and merged it with the medication data. We developed an algorithm that triggered for LASA errors based on name similarity, the frequency with which a patient received a medication and whether the medication was justified by a diagnostic claim. We stratified triggers by similarity. Two clinicians reviewed a sample of charts for the presence of a true error, with disagreements resolved by a third reviewer. We computed specificity, positive predictive value (PPV) and yield.ResultsThe algorithm analysed 488 481 orders and generated 2404 triggers (0.5% rate). Clinicians reviewed 506 cases and confirmed the presence of 61 errors, for an overall PPV of 12.1% (95% CI 10.7% to 13.5%). It was not possible to measure sensitivity or the false-negative rate. The specificity of the algorithm varied as a function of name similarity and whether the intended and dispensed drugs shared the same route of administration.ConclusionAutomated detection of LASA medication errors is feasible and can reveal errors not currently detected by other means. Real-time error detection is not possible with the current system, the main barrier being the real-time availability of accurate diagnostic information. Further development should replicate this analysis in other health systems and on a larger set of medications and should decrease clinician time spent reviewing false-positive triggers by increasing specificity.

Funder

Agency for Healthcare Research and Quality

Publisher

BMJ

Subject

Health Policy

Reference38 articles.

1. How many hospital pharmacy medication dispensing errors go undetected?;Cina;Jt Comm J Qual Patient Saf,2006

2. National Observational Study of Prescription Dispensing Accuracy and Safety in 50 Pharmacies

3. Medication Errors Observed in 36 Health Care Facilities

4. Hicks RW . Becker SC and Cousins DD eds. Medmarx data report. A report on the relationship of drug names and medication errors in response to the Institute of Medicine’s call for action. Rockville, MD: US Pharmacopeia, 2008.

5. Gadodiamide contrast agent ‘activates’ fibroblasts: a possible cause of nephrogenic systemic fibrosis

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