Predicting delays in antibiotic administration in the emergency department: a machine learning approach incorporating nursing workload and crowding factors
  • Seo, Junhyuk
  • Park, Sookyung
  • Cha, Won Chul
  • Kim, Taerim
  • Shin, So Yeon
  • ... Jung, Kwang Yul
  • 외 4명
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초록

Background: Emergency department (ED) crowding is a well-documented issue that significantly contributes to delays in critical care interventions, including antibiotic administration. Although previous studies have explored the effects of crowding, the specific role of nursing workload in such delays remains underexplored. This study aimed to develop a machine learning (ML) model to predict delays in antibiotic administration by integrating nursing workload data from electronic health records (EHRs) alongside ED crowding metrics. Methods: We conducted a retrospective analysis of EHR data from a single-center ED, focusing on nursing-specific workload indicators such as the frequency of nursing procedures. Models were developed using three variable groups (National Emergency Department Overcrowding Scale (NEDOCS)-only, workload-only, and combined NEDOCS/workload) across three ML algorithms (Poisson regression, Random Forest (RF) and eXtreme Gradient Boosting (XGBoost)). Each developed model was evaluated on an unseen test dataset using performance metrics, including root mean square error (RMSE), adjusted R2 and mean absolute error (MAE). Results: A total of 63,831 ED visits were recorded during the study period, with an average of 0.83 instances of delayed antibiotic administration occurring per hour (approximately once every 50 minutes). Models incorporating workload-related variables consistently outperformed those using NEDOCS-only variables. The combined NEDOCS/workload models demonstrated the best performance, with both the RF and XGBoost models yielding RMSE = 0.907, adjusted R-2 = 0.120 and MAE = 0.712 on the test dataset. XGBoost was selected as the best model owing to its computational efficiency and interpretability. Conclusions: To the best of our knowledge, this is the first study to integrate nursing workload data into an ML model to predict delays in antibiotic administration in the ED. The study findings underscore the significant effect of nursing workload on timely care delivery, suggesting that alleviating nursing workload could reduce delays in antibiotic administration and improve patient outcomes.

키워드

CrowdingNursing workloadDelays in treatmentDelays in antibiotic administrationMachine learningEmergency departmentNEDOCSNASA-TLXKOREAN TRIAGEVALIDITYTIME
제목
Predicting delays in antibiotic administration in the emergency department: a machine learning approach incorporating nursing workload and crowding factors
저자
Seo, JunhyukPark, SookyungCha, Won ChulKim, TaerimShin, So YeonJung, Kwang YulKang, Min-JeoungCho, InsookHur, SujeongYoo, Junsang
DOI
10.22514/sv.2025.160
발행일
2026-01
유형
Article
저널명
Signa Vitae
22
1
페이지
65 ~ 74