作者
Pakpoom Wongyikul, Nuttamon Thongyot, Pannika Tantrakoolcharoen, Pusit Seephueng, Piyapong Khumrin
发表日期
2021/10/11
期刊
Scientific Reports
卷号
11
期号
1
页码范围
20132
出版商
Nature Publishing Group UK
简介
Prescription errors in high alert drugs (HAD), a group of drugs that have a high risk of complications and potential negative consequences, are a major and serious problem in medicine. Standardized hospital interventions, protocols, or guidelines were implemented to reduce the errors but were not found to be highly effective. Machine learning driven clinical decision support systems (CDSS) show a potential solution to address this problem. We developed a HAD screening protocol with a machine learning model using Gradient Boosting Classifier and screening parameters to identify the events of HAD prescription errors from the drug prescriptions of out and inpatients at Maharaj Nakhon Chiang Mai hospital in 2018. The machine learning algorithm was able to screen drug prescription events with a risk of HAD inappropriate use and identify over 98% of actual HAD mismatches in the test set and 99% in the …
引用总数
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P Wongyikul, N Thongyot, P Tantrakoolcharoen… - Scientific Reports, 2021