Department of Pharmaceutical & Health Economics, University of Southern California Mann School of Pharmacy & Pharmaceutical Sciences, Los Angeles, CA, USA
Stage Analytics, Suwanee, GA, USA.
BMJ Open. 2024 Apr 9;14(4):e082540. doi: 10.1136/bmjopen-2023-082540.
To predict the risk of hospital-acquired pressure injury using machine learning compared with standard care.
We obtained electronic health records (EHRs) to structure a multilevel cohort of hospitalised patients at risk for pressure injury and then calibrate a machine learning model to predict future pressure injury risk. Optimisation methods combined with multilevel logistic regression were used to develop a predictive algorithm of patient-specific shifts in risk over time. Machine learning methods were tested, including random forests, to identify predictive features for the algorithm. We reported the results of the regression approach as well as the area under the receiver operating characteristics (ROC) curve for predictive models.
Hospitalised inpatients.
EHRs of 35 001 hospitalisations over 5 years across 2 academic hospitals.
Longitudinal shifts in pressure injury risk.
The predictive algorithm with features generated by machine learning achieved significantly improved prediction of pressure injury risk (p<0.001) with an area under the ROC curve of 0.72; whereas standard care only achieved an area under the ROC curve of 0.52. At a specificity of 0.50, the predictive algorithm achieved a sensitivity of 0.75.
These data could help hospitals conserve resources within a critical period of patient vulnerability of hospital-acquired pressure injury which is not reimbursed by US Medicare; thus, conserving between 30 000 and 90 000 labour-hours per year in an average 500-bed hospital. Hospitals can use this predictive algorithm to initiate a quality improvement programme for pressure injury prevention and further customise the algorithm to patient-specific variation by facility.
与标准护理相比,使用机器学习预测医院获得性压疮的风险。
我们获取电子健康记录(EHR),构建了一个具有压疮风险的住院患者的多层次队列,然后校准机器学习模型以预测未来压疮风险。优化方法结合多层次逻辑回归,用于开发随时间推移预测患者特定风险变化的预测算法。测试了机器学习方法,包括随机森林,以确定算法的预测特征。我们报告了回归方法的结果以及用于预测模型的接收者操作特征(ROC)曲线下面积。
住院患者。
5 年内 2 家学术医院 35001 例住院患者的 EHR。
压疮风险的纵向变化。
具有机器学习生成特征的预测算法显著提高了压疮风险预测的准确性(p<0.001),ROC 曲线下面积为 0.72;而标准护理仅获得 0.52 的 ROC 曲线下面积。在特异性为 0.50 时,预测算法的敏感性为 0.75。
这些数据可以帮助医院在没有美国医疗保险报销的情况下,在医院获得性压疮患者易发生的关键时期内节约资源;因此,在平均拥有 500 张床位的医院中,每年可节约 3 万至 9 万工时的劳动力。医院可以使用该预测算法启动压疮预防质量改进计划,并进一步根据设施的具体情况定制算法以适应患者的个体差异。