Pharmaceutical Automated Reporting: An opioid stewardship tool.

Q3 Medicine
Dylan Turner, Paul Gottselig, Leland Sommer, Kelsey Dumont, Warren Berry, Casey Phillips
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引用次数: 0

Abstract

Objective: To develop and implement a customized clinical decision support system (CDSS) in an under-resourced health region aimed at promoting appropriate and safe opioid prescribing.

Design: The Pharmaceutical Automated Reporting (PAR) tool integrates inpatient prescription data from BDM Pharmacy (version 10) and categorizes patient information using predefined logic. It operates with Python (version 3.10) and Microsoft Excel®, functioning as decision trees. Nine risk factors (absence of naloxone prescription with an opioid prescription, naloxone administration, high-frequency opioid dosing, multiple opioids prescribed, concurrent benzodiazepine and opioid coprescribed, over 7 days of intravenous route opioid use, morphine equivalent dose received over or equal to 90, possible opioid agonist therapy, possible alcohol withdrawal therapy) are assessed through a decision matrix to classify patients for opioid-related risk.

Results: Over 7 months, the PAR tool detected one opioid-related risk factor in 98.9 percent (n = 10,450) of patients prescribed an opioid and multiple risk factors in 62.4 percent (n = 6,590). The tool identified areas where data-driven interventions by the Opioid Stewardship Program could promote appropriate prescribing practices and will be used to track and promote stewardship interventions, inform policy change, and evaluate the impact on quality indicators.

Conclusion: Small, resource-scarce health systems can use open-source programming methodologies to create an internal CDSS to assist in addressing opioid-related risk factors within their healthcare facilities.

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来源期刊
Journal of opioid management
Journal of opioid management Medicine-Anesthesiology and Pain Medicine
CiteScore
1.00
自引率
0.00%
发文量
54
期刊介绍: The Journal of Opioid Management deals with all aspects of opioids. From basic science, pre-clinical, clinical, abuse, compliance and addiction medicine, the journal provides and unbiased forum for researchers and clinicians to explore and manage the complexities of opioid prescription.
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