Jiang Yiqun, Li Qing, Zhang Wenli
Industrial and Manufacturing Systems Engineering, College of Engineering, Iowa State University, Ames, IA, United States.
Department of Information Systems and Business Analytics, Debbie and Jerry Ivy College of Business, Iowa State University, 3332 Gerdin Business Building, 2167 Union Drive, Ames, IA, 50011, United States, 1 5152942469.
JMIR AI. 2025 Aug 20;4:e71247. doi: 10.2196/71247.
Efficient allocation of health care resources is essential for long-term hospital operation. Effective intensive care unit (ICU) management is essential for alleviating the financial strain on health care systems. Accurate prediction of length-of-stay in ICUs is vital for optimizing capacity planning and resource allocation, with the challenge of achieving early, real-time predictions.
This study aimed to develop a predictive model, namely wavelet long short-term memory model (WT-LSTM), for ICU length-of-stay using only real-time vital sign data. The model is designed for urgent care settings where demographic and historical patient data or laboratory results may be unavailable; the model leverages real-time inputs to deliver early and accurate ICU length-of-stay predictions.
The proposed model integrates discrete wavelet transformation and long short-term memory (LSTM) neural networks to filter noise from patients' vital sign series and improve length-of-stay prediction accuracy. Model performance was evaluated using the electronic ICU database, focusing on 10 common ICU admission diagnoses in the database.
The results demonstrate that WT-LSTM consistently outperforms baseline models, including linear regression, LSTM, and bidirectional long short-term memory, in predicting ICU length-of-stay using vital sign data, achieving significant improvements in mean square error. Specifically, the wavelet transformation component of the model enhances the overall performance of WT-LSTM. Removing this component results in an average decrease of 3.3% in mean square error; such a phenomenon is particularly pronounced in specific patient cohorts. The model's adaptability is highlighted through real-time predictions using only 3-hour, 6-hour, 12-hour, and 24-hour input data. Using only 3 hours of input data, the WT-LSTM model delivers competitive results across the 10 most common ICU admission diagnoses, often outperforming Acute Physiology and Chronic Health Evaluation IV, the leading ICU outcome prediction system currently implemented in clinical practice. WT-LSTM effectively captures patterns from vital signs recorded during the initial hours of a patient's ICU stay, making it a promising tool for early prediction and resource optimization in the ICU.
Our proposed WT-LSTM model, based on real-time vital sign data, offers a promising solution for ICU length-of-stay prediction. Its high accuracy and early prediction capabilities hold significant potential for enhancing clinical practice, optimizing resource allocation, and supporting critical clinical and administrative decisions in ICU management.
高效分配医疗资源对医院的长期运营至关重要。有效的重症监护病房(ICU)管理对于减轻医疗系统的财务压力至关重要。准确预测ICU住院时间对于优化床位规划和资源分配至关重要,但实现早期实时预测具有挑战性。
本研究旨在开发一种预测模型,即小波长短期记忆模型(WT-LSTM),仅使用实时生命体征数据来预测ICU住院时间。该模型专为紧急护理环境设计,在这种环境中可能无法获得患者的人口统计学和历史数据或实验室结果;该模型利用实时输入来提供早期准确的ICU住院时间预测。
所提出的模型集成了离散小波变换和长短期记忆(LSTM)神经网络,以过滤患者生命体征序列中的噪声并提高住院时间预测准确性。使用电子ICU数据库评估模型性能,重点关注数据库中10种常见的ICU入院诊断。
结果表明,在使用生命体征数据预测ICU住院时间方面,WT-LSTM始终优于基线模型,包括线性回归、LSTM和双向长短期记忆,均方误差有显著改善。具体而言,该模型的小波变换组件提高了WT-LSTM的整体性能。去除该组件会导致均方误差平均下降3.3%;这种现象在特定患者队列中尤为明显。该模型的适应性通过仅使用3小时、6小时、12小时和24小时输入数据的实时预测得到突出体现。仅使用3小时的输入数据,WT-LSTM模型在10种最常见的ICU入院诊断中都能给出具有竞争力的结果,常常优于急性生理学与慢性健康状况评估IV(目前临床实践中使用的领先的ICU结果预测系统)。WT-LSTM有效地捕捉了患者入住ICU最初几小时内记录的生命体征模式,使其成为ICU早期预测和资源优化的有前途的工具。
我们提出的基于实时生命体征数据的WT-LSTM模型为ICU住院时间预测提供了一个有前途的解决方案。其高准确性和早期预测能力在加强临床实践、优化资源分配以及支持ICU管理中的关键临床和行政决策方面具有巨大潜力。