Knight Tom, May Bernie, Tyson Don, McAuley Scott, Letzkus Pam, Enright Sharon Murphy
Invistics Corporation, Peachtree Corners, GA, USA.
Piedmont Athens Regional Medical Center, Athens, GA, USA.
Am J Health Syst Pharm. 2022 Aug 5;79(16):1345-1354. doi: 10.1093/ajhp/zxac035.
The theft of drugs from healthcare facilities, also known as drug diversion, occurs frequently but is often undetected. This paper describes a research study to develop and test novel drug diversion detection methods. Improved diversion detection and reduction in diversion improves patient safety, limits harm to the person diverting, reduces the public health impact of substance use disorder, and mitigates significant liability risk to pharmacists and their organizations.
Ten acute care inpatient hospitals across 4 independent health systems extracted 2 datasets from various health information technology systems. Both datasets were consolidated, normalized, classified, and sampled to provide a harmonious dataset for analysis. Supervised machine learning methods were iteratively used on the initial sample dataset to train algorithms to classify medication movement transactions as involving a low or high risk of diversion. Thereafter, the resulting machine learning model classified the risk of diversion in a historical dataset capturing 8 to 24 months of history that included 27.9 million medication movement transactions by 19,037 nursing, 1,047 pharmacy, and 712 anesthesia clinicians and that included 22 known, blinded diversion cases to measure when the model would have detected the diversion compared to when the diversion was actually detected by existing methods.
The machine learning model had 96.3% accuracy, 95.9% specificity, and 96.6% sensitivity in detecting transactions involving a high risk of diversion using the initial sample dataset. In subsequent testing using the much larger historical dataset, the analytics detected known diversion cases (n = 22) in blinded data faster than existing detection methods (a mean of 160 days and a median of 74 days faster; range, 7-579 days faster).
The study showed that (1) consolidated datasets and (2) supervised machine learning can detect known diversion cases faster than existing detection methods. Users of the technology also noted improved investigation efficiency.
从医疗机构盗窃药品,也称为药品转移,屡见不鲜,但往往未被发现。本文描述了一项旨在开发和测试新型药品转移检测方法的研究。改进转移检测并减少转移情况可提高患者安全性,限制对转移者的伤害,降低物质使用障碍对公共卫生的影响,并减轻药剂师及其所在机构面临的重大责任风险。
来自4个独立医疗系统的10家急性护理住院医院从各种健康信息技术系统中提取了2个数据集。两个数据集经过整合、标准化、分类和抽样,以提供一个和谐的数据集用于分析。在初始样本数据集上迭代使用监督式机器学习方法来训练算法,以将用药移动交易分类为涉及低转移风险或高转移风险。此后,所得的机器学习模型对一个历史数据集中的转移风险进行分类,该历史数据集涵盖8至24个月的历史记录,其中包括19,037名护理人员、1,047名药剂师和712名麻醉临床医生的2790万笔用药移动交易,并且包括22个已知的、经过盲法处理的转移案例,以衡量与现有方法实际检测到转移的时间相比,该模型何时会检测到转移。
使用初始样本数据集时,机器学习模型在检测涉及高转移风险的交易方面,准确率为96.3%,特异性为95.9%,灵敏度为96.6%。在随后使用大得多的历史数据集进行的测试中,分析在盲法数据中检测到已知转移案例(n = 22)的速度比现有检测方法更快(平均快160天,中位数快74天;快7至579天)。
该研究表明,(1)整合数据集和(2)监督式机器学习能够比现有检测方法更快地检测到已知转移案例。该技术的用户还指出调查效率有所提高。