Prediction of hospitalization and waiting time within 24 hours of emergency department patients with unstructured text data

Author:

Seo Hyeram,Ahn Imjin,Gwon Hansle,Kang Hee Jun,Kim Yunha,Cho Ha Na,Choi Heejung,Kim Minkyoung,Han Jiye,Kee Gaeun,Park Seohyun,Seo Dong-Woo,Jun Tae Joon,Kim Young-Hak

Abstract

AbstractOvercrowding of emergency departments is a global concern, leading to numerous negative consequences. This study aimed to develop a useful and inexpensive tool derived from electronic medical records that supports clinical decision-making and can be easily utilized by emergency department physicians. We presented machine learning models that predicted the likelihood of hospitalizations within 24 hours and estimated waiting times. Moreover, we revealed the enhanced performance of these machine learning models compared to existing models by incorporating unstructured text data. Among several evaluated models, the extreme gradient boosting model that incorporated text data yielded the best performance. This model achieved an area under the receiver operating characteristic curve score of 0.922 and an area under the precision-recall curve score of 0.687. The mean absolute error revealed a difference of approximately 3 hours. Using this model, we classified the probability of patients not being admitted within 24 hours as Low, Medium, or High and identified important variables influencing this classification through explainable artificial intelligence. The model results are readily displayed on an electronic dashboard to support the decision-making of emergency department physicians and alleviate overcrowding, thereby resulting in socioeconomic benefits for medical facilities.

Funder

Ministry of Science and ICT

Ministry of Trade, Industry and Energy

Ministry of Health and Welfare

Publisher

Springer Science and Business Media LLC

Subject

General Health Professions,Medicine (miscellaneous)

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