Bluesky Facebook Reddit Email

Researchers find novel means of flagging inpatient pharmacy orders for intervention

10.19.21 | NYU Tandon School of Engineering

Garmin GPSMAP 67i with inReach

Garmin GPSMAP 67i with inReach provides rugged GNSS navigation, satellite messaging, and SOS for backcountry geology and climate field teams.

Medication order errors are a significant, and preventable, public health problem. The widespread deployment of electronic health records and computerized order entry systems has largely reduced medication order errors and inefficiencies in the inpatient setting. Emerging research suggests, however, that they have also introduced new sources of error related to the interaction between the provider and the platform.

While, for medication order errors, manual review of incoming pharmacy orders is the “gold standard” for improving the use of medications and minimizing prescribing errors, the manual review of medication orders by hospital-based clinical pharmacists and the computerized ordering of medication by physicians may be affected by such factors as alert fatigue, potentially leading to medical errors.

To begin to address these errors and inefficiencies, a team led by Martina Balestra , a former post-doc and an adjunct professor at the Center for Urban Science and Progress (CUSP) at the NYU Tandon School of Engineering, and including Oded Nov , professor of technology management and innovation at NYU Tandon, as well as Ji Chen , Eduardo Iturrate , and Yindalon Aphinyanaphongs of NYU Grossman and NYU Langone, developed a machine learning model to identify medication orders requiring pharmacy intervention using only provider behavior and other contextual features that may reflect these new sources of inefficiencies, rather than patients’ medical records.

Their work, “Predicting inpatient pharmacy order interventions using provider action data,” recently published in JAMIA Open, used a major metropolitan hospital system as a case study. The team collected data on providers’ actions in the EHR system and pharmacy orders. With this dataset, the researchers then constructed a machine-learning based classification model to identify orders more likely to require pharmacist intervention.

Whereas previous models predicting medication order errors ingest data from patients’ medical records, the classification model developed by the team focuses on clinicians’ data. As such, the risk to the privacy and security of patient data is reduced. With proper tuning, this and similar models could significantly alleviate the workload of pharmacists and increase patient safety.

###

This research was supported by a grant from the National Science Foundation grant

The paper, “Predicting inpatient pharmacy order interventions using provider action data,” is available at: https://academic.oup.com/jamiaopen/article/4/3/ooab083/6381347

JAMIA Open

10.1093/jamiaopen/ooab083

Experimental study

People

Predicting inpatient pharmacy order interventions using provider action data

Keywords

Article Information

Contact Information

Karl Greenberg
NYU Tandon School of Engineering
karl.greenberg@nyu.edu

How to Cite This Article

APA:
NYU Tandon School of Engineering. (2021, October 19). Researchers find novel means of flagging inpatient pharmacy orders for intervention. Brightsurf News. https://www.brightsurf.com/news/1GRR70X8/researchers-find-novel-means-of-flagging-inpatient-pharmacy-orders-for-intervention.html
MLA:
"Researchers find novel means of flagging inpatient pharmacy orders for intervention." Brightsurf News, Oct. 19 2021, https://www.brightsurf.com/news/1GRR70X8/researchers-find-novel-means-of-flagging-inpatient-pharmacy-orders-for-intervention.html.