利用急症和急诊护理的行政数据预测住院时间:一种嵌入方法

Vincent Lequertier, Tao Wang, J. Fondrevelle, V. Augusto, S. Polazzi, A. Duclos
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引用次数: 1

摘要

医院床位管理对患者护理质量至关重要,而住院时间通常由内科医生或病房主任护士根据经验估计。提供一种有效的住院时间预测方法有望改善资源和出院规划。预测应该是准确的,并适用于尽可能多的患者,尽管他们的异质特征。在这项工作中,通过使用来自法国国家医院出院数据库的通用医院管理数据以及急诊护理,开发了基于深度学习和嵌入的LOS预测方法。数据涉及2011年至2019年法国里昂6家医院304 931名患者的497 626次住院。5倍交叉验证结果表明,该方法的准确率为0.73,kappa评分为0.67。这优于直接使用原始输入特征的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting length of stay with administrative data from acute and emergency care: an embedding approach
Hospital beds management is critical for the quality of patient care, while length of inpatient stay is often estimated empirically by physicians or chief nurses of medical wards. Providing an efficient method for forecasting the length of stay (LOS) is expected to improve resources and discharges planning. Predictions should be accurate and work for as many patients as possible, despite their heterogeneous profiles. In this work, a LOS prediction method based on deep learning and embeddings is developed by using generic hospital administrative data from a French national hospital discharge database, as well as emergency care. Data concerned 497 626 stays of 304 931 patients from 6 hospitals in Lyon, France, from 2011 to 2019. Results of a 5-fold cross-validation showed an accuracy of 0.73 and a kappa score of 0.67 for the embeddings method. This outperformed the baseline which used the raw input features directly.
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