Baek Yunmi, Han Kihye, Jeon Eunjoo, Yoo Hae Young
Department of Nursing, Hallym University Medical Center, Gyeonggi-do, South Korea.
Chung-Ang University College of Nursing, Seoul, South Korea.
J Clin Nurs. 2025 Oct;34(10):4121-4131. doi: 10.1111/jocn.17612. Epub 2024 Dec 9.
To develop deep learning models to predict nursing need proxies among hospitalised patients and compare their predictive efficacy to that of a traditional regression model.
This methodological study employed a cross-sectional secondary data analysis.
This study used de-identified electronic health records data from 20,855 adult patients aged 20 years or older, admitted to the general wards at a tertiary hospital. The models utilised patient information covering the preceding 2 days, comprising vital signs, biomarkers and demographic data. To create nursing need proxies, we identified the six highest-workload nursing tasks. We structured the collected data sequentially to facilitate processing via recurrent neural network (RNN) and long short-term memory (LSTM) algorithms. The STROBE checklist for cross-sectional studies was used for reporting.
Both the RNN and LSTM predicted nursing need proxies more effectively than the traditional regression model. However, upon testing the models using a sample case dataset, we observed a notable reduction in prediction accuracy during periods marked by rapid change.
The RNN and LSTM, which enhanced predictive performance for nursing needs, were developed using iterative learning processes. The RNN and LSTM demonstrated predictive capabilities superior to the traditional multiple regression model for nursing need proxies.
Applying these predictive models in clinical settings where medical care complexity and diversity are increasing could substantially mitigate the uncertainties inherent in decision-making processes.
We used de-identified electronic health record data of 20,855 adult patients about vital signs, biomarkers and nursing activities.
The authors state that they have adhered to relevant EQUATOR guidelines: STROBE statement for cross-sectional studies.
Despite widespread adoption of deep learning algorithms in various industries, their application in nursing administration for workload distribution and staffing adequacy remains limited. This study amalgamated deep learning technology to develop a predictive model to proactively forecast nursing need proxies. Our study demonstrates that both the RNN and LSTM models outperform a traditional regression model in predicting nursing need proxies. The proactive application of deep learning methods for nursing need prediction could help facilitate timely detection of changes in patient nursing demands, enabling the effective and safe nursing services.
开发深度学习模型以预测住院患者的护理需求代理指标,并将其预测效果与传统回归模型进行比较。
本方法学研究采用横断面二次数据分析。
本研究使用了来自一家三级医院普通病房的20855名20岁及以上成年患者的去识别化电子健康记录数据。模型利用了涵盖前2天的患者信息,包括生命体征、生物标志物和人口统计学数据。为了创建护理需求代理指标,我们确定了六项工作量最大的护理任务。我们对收集到的数据进行了顺序结构化处理,以便通过递归神经网络(RNN)和长短期记忆(LSTM)算法进行处理。横断面研究的STROBE清单用于报告。
RNN和LSTM在预测护理需求代理指标方面均比传统回归模型更有效。然而,在使用样本案例数据集对模型进行测试时,我们发现在变化迅速的时期预测准确性显著降低。
RNN和LSTM通过迭代学习过程开发,增强了对护理需求的预测性能。RNN和LSTM在预测护理需求代理指标方面表现出优于传统多元回归模型的预测能力。
在医疗护理复杂性和多样性不断增加的临床环境中应用这些预测模型,可以大幅减轻决策过程中固有的不确定性。
我们使用了20855名成年患者关于生命体征、生物标志物和护理活动的去识别化电子健康记录数据。
作者声明他们遵循了相关的EQUATOR指南:横断面研究的STROBE声明。
尽管深度学习算法在各个行业广泛应用,但其在护理管理中用于工作量分配和人员配备充足性的应用仍然有限。本研究融合深度学习技术开发了一个预测模型,以主动预测护理需求代理指标。我们的研究表明,RNN和LSTM模型在预测护理需求代理指标方面均优于传统回归模型。将深度学习方法主动应用于护理需求预测有助于及时发现患者护理需求的变化,实现有效且安全的护理服务。