Author:
Park Soyoung,Lee Changwoo,Lee Seung-Bo,Lee Ju-yeun
Abstract
AbstractOlder adults are more likely to require emergency department (ED) visits than others, which might be attributed to their medication use. Being able to predict the likelihood of an ED visit using prescription information and readily available data would be useful for primary care. This study aimed to predict the likelihood of ED visits using extensive medication variables generated according to explicit clinical criteria for elderly people and high-risk medication categories by applying machine learning (ML) methods. Patients aged ≥ 65 years were included, and ED visits were predicted with 146 variables, including demographic and comprehensive medication-related factors, using nationwide claims data. Among the eight ML models, the final model was developed using LightGBM, which showed the best performance. The final model incorporated 93 predictors, including six sociodemographic, 28 comorbidity, and 59 medication-related variables. The final model had an area under the receiver operating characteristic curve of 0.689 in the validation cohort. Approximately half of the top 20 strong predictors were medication-related variables. Here, an ED visit risk prediction model for older people was developed and validated using administrative data that can be easily applied in clinical settings to screen patients who are likely to visit an ED.
Funder
National Research Foundation of Korea (NRF) grant funded by the Korea government
Seoul National University
Publisher
Springer Science and Business Media LLC
Cited by
2 articles.
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1. The AI Future of Emergency Medicine;Annals of Emergency Medicine;2024-08
2. A Visit Prediction Method of the Patients in the Continuing Care Retirement Community;2023 IEEE International Conference on Bioinformatics and Biomedicine (BIBM);2023-12-05