Nakagami Gojiro, Yokota Shinichiroh, Kitamura Aya, Takahashi Toshiaki, Morita Kojiro, Noguchi Hiroshi, Ohe Kazuhiko, Sanada Hiromi
Department of Gerontological Nursing/Wound Care Management, Graduate School of Medicine, Faculty of Medicine, The University of Tokyo, Building 5, 7-3-1, Hongo, Bunkyo-ku, Tokyo 1130033, Japan; Global Nursing Research Center, Graduate School of Medicine, The University of Tokyo, 7-3-1 Hongo, Bunkyo-ku, Tokyo 1130033, Japan.
Department of Healthcare Information Management, The University of Tokyo Hospital, 7-3-1 Hongo, Bunkyo-ku, Tokyo 1138655, Japan.
Int J Nurs Stud. 2021 Jul;119:103932. doi: 10.1016/j.ijnurstu.2021.103932. Epub 2021 Mar 26.
In hospitals, nurses are responsible for pressure injury risk assessment using several kinds of risk assessment scales. However, their predictive validity is insufficient to initiate targeted preventive strategy for each patient. The use of electronic health records with machine learning technique is a promising strategy to provide automated clinical decision-making aid.
The purpose of this study was to construct a predictive model for pressure injury development which included feature variables that can be collected on the first day of hospitalization by nurses who routinely input the data to electronic health records.
Retrospective observational cohort study.
This study was conducted at a university hospital in Japan.
This study used electronic health records, which include entry/discharge records, basic nursing records, and pressure injury management documents (N = 75,353).
The outcome measure was the pressure injuries which developed outside of an operation theatre and frequently appeared on the specific body parts at high risk of pressure injury development. We utilized four major classifiers: logistic regression, random forest, linear support vector machine, and extreme gradient boosting (XGBoost) with 5-fold cross-validation technique. The area under the receiver operating characteristic curve (AUC) was used for evaluating predictive performance.
The proportion of hospital-acquired pressure injuries was 0.52%. The receiver operating characteristic curves revealed the best predictive performance for the XGBoost model, achieving the highest sensitivity of 0.78±0.03 and AUC of 0.80±0.02 amongst four types of classifiers. Variables related to difficulty in activities of daily living, anorexia, and respiratory or cardiac disorders were extracted as important features.
Our findings suggest that routinely collected health data by nurses on the first day of patient admission have the potential to help determine high-risk patients for pressure injury development. Tweetable abstract: Machine learning models on routinely collected electronic health records data successfully predict pressure injury development during hospitalization.
This work was supported by a JSPS KAKENHI Grant-in-Aid for Exploratory Research (16K15865).
在医院中,护士负责使用多种风险评估量表进行压疮风险评估。然而,它们的预测效度不足以针对每位患者启动有针对性的预防策略。将电子健康记录与机器学习技术相结合是一种很有前景的策略,可为临床决策提供自动化辅助。
本研究旨在构建一个压疮发生预测模型,该模型纳入的特征变量可由日常将数据录入电子健康记录的护士在患者住院第一天收集。
回顾性观察队列研究。
本研究在日本一家大学医院开展。
本研究使用了电子健康记录,其中包括出入院记录、基础护理记录和压疮管理文件(N = 75353)。
观察指标为手术室以外发生的、且经常出现在压疮发生高风险特定身体部位的压疮。我们使用了四种主要分类器:逻辑回归、随机森林、线性支持向量机和极端梯度提升(XGBoost),并采用五折交叉验证技术。采用受试者工作特征曲线下面积(AUC)评估预测性能。
医院获得性压疮的比例为0.52%。受试者工作特征曲线显示XGBoost模型的预测性能最佳,在四种分类器中灵敏度最高,为0.78±0.03,AUC为0.80±0.02。与日常生活活动困难、厌食以及呼吸或心脏疾病相关的变量被提取为重要特征。
我们的研究结果表明,护士在患者入院第一天常规收集的健康数据有可能帮助确定压疮发生的高危患者。可发推文摘要:基于常规收集的电子健康记录数据的机器学习模型成功预测了住院期间压疮的发生。
本研究得到日本学术振兴会探索性研究资助金(16K15865)的支持。