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Hybrid Method Incorporating a Rule-Based Approach and Deep Learning for Prescription Error Prediction

Authors
Lee, SeungheeShin, JeongwonKim, Hyeon SeongLee, Min JeYoon, Jung MinLee, SoheeKim, YongsukKim, Jong-YeupLee, Suehyun
Issue Date
Jan-2022
Publisher
ADIS INT LTD
Citation
DRUG SAFETY, v.45, no.1, pp.27 - 35
Journal Title
DRUG SAFETY
Volume
45
Number
1
Start Page
27
End Page
35
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/88128
DOI
10.1007/s40264-021-01123-6
ISSN
0114-5916
Abstract
Introduction Recently, automated detection has been a new approach to address the risks posed by prescribing errors. This study focused on prescription errors and utilized real medical data to supplement the Drug Utilization Review (DUR)-based rules, the current prescription error detection method. We developed a new hybrid method through artificial intelligence for prescription error prediction by utilizing actual detection accuracy improvement to reduce 'warning fatigue' for doctors and improve medical care quality. Object This study was conducted in the Department of Pediatrics, targeting children sensitive to drugs to develop a prescription error detection system. Based on the DUR prescription history, 15,281 patient-level observations of children from Konyang University Hospital (KYUH)'s common data model (CDM) and DUR were collected and analyzed retrospectively. Method Among the CDM data, inspection information was interlocked with DUR and reflected as standard information for model development; this included outpatient prescriptions from January 1 to December 31, 2018. Through consultation with pediatric clinicians, rule definitions and model development were conducted for 35 drugs, with 137,802 normal and 1609 prescription errors. Results We developed a novel hybrid method of error detection in the form of an advanced rule-based deep neural network (ARDNN), which showed the expected performance (precision: 72.86, recall: 81.01, F1 score: 76.72) and reduced alarm pop-up alert fatigue to below 10%. We also created an ARDNN-based comprehensive dashboard that allows doctors to monitor prescription errors with alarm pop-ups when prescribing medications. Conclusion These results can advance the existing rule-based model by developing a prescription error detection model using deep learning. This method can improve overall medical efficiency and service quality by reducing doctors' fatigue.
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Lee, Suehyun
College of IT Convergence (컴퓨터공학부(컴퓨터공학전공))
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