Effect of knowledgebase transition of a clinical decision support system on medication order and alert patterns in an emergency department

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作者
Weon Jung
Jaeyong Yu
Hyunjung Park
Minjung Kathy Chae
Sang Seob Lee
Jong Soo Choi
Mira Kang
Dong Kyung Chang
Won Chul Cha
机构
[1] Sungkyunkwan University,Department of Digital Health, Samsung Advanced Institute of Health Sciences and Technology (SAIHST)
[2] Samsung Medical Center,Digital Innovation Center
[3] Samsung Medical Center,Center for Health Promotion
[4] Sungkyunkwan University School of Medicine,Department of Gastroenterology
[5] Samsung Medical Center,Department of Emergency Medicine
[6] Sungkyunkwan University School of Medicine,undefined
[7] Samsung Medical Center,undefined
[8] Sungkyunkwan University School of Medicine,undefined
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A knowledgebase (KB) transition of a clinical decision support (CDS) system occurred at the study site. The transition was made from one commercial database to another, provided by a different vendor. The change was applied to all medications in the institute. The aim of this study was to analyze the effect of KB transition on medication-related orders and alert patterns in an emergency department (ED). Data of patients, medication-related orders and alerts, and physicians in the ED from January 2018 to December 2020 were analyzed in this study. A set of definitions was set to define orders, alerts, and alert overrides. Changes in order and alert patterns before and after the conversion, which took place in May 2019, were assessed. Overall, 101,450 patients visited the ED, and 1325 physicians made 829,474 prescription orders to patients during visit and at discharge. Alert rates (alert count divided by order count) for periods A and B were 12.6% and 14.1%, and override rates (alert override count divided by alert count) were 60.8% and 67.4%, respectively. Of the 296 drugs that were used more than 100 times during each period, 64.5% of the drugs had an increase in alert rate after the transition. Changes in alert rates were tested using chi-squared test and Fisher’s exact test. We found that the CDS system knowledgebase transition was associated with a significant change in alert patterns at the medication level in the ED. Careful consideration is advised when such a transition is performed.
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