Kandel Ben, Field Cheryl, Kaur Jasmeet, Slawson Dean, Ouslander Joseph G
PointClickCare Technologies Inc., Mississauga, ON, Canada.
PointClickCare Technologies Inc., Mississauga, ON, Canada.
J Am Med Dir Assoc. 2025 Jan;26(1):105288. doi: 10.1016/j.jamda.2024.105288. Epub 2024 Sep 27.
Identifying skilled nursing facility (SNF) patients at risk for hospitalization or death is of interest to SNFs, patients, and patients' families because of quality measures, financial penalties, and limited clinical staffing. We aimed to develop a predictive model that identifies SNF patients likely to be hospitalized or die within the next 7 days and validate the model's performance against clinician judgment.
Retrospective multivariate prognostic model development study.
Patients in US SNFs that use the PointClickCare electronic health record (EHR) system. We used data from the first 100 days of skilled stays for 5,642,474 patients in 8440 SNFs, from January 1, 2019, through March 31, 2023.
We used data collected in the course of clinical care to develop a machine learning model to predict the likelihood of patient hospitalization or death within the next 7 days. The data included vital signs, diagnoses, laboratory results, food intake, and clinical notes. We also asked SNF nurses and hospital case managers to make their own predictions as a comparison. The EHR was used as the source of information on whether the patient died or was hospitalized.
The model had sensitivity of 35%, specificity of 92%, positive predictive value (PPV) of 18%, and area under the receiver operator curve (AUC) of 0.75. A variation of the model in which we did not include progress notes and food intake achieved an AUC of 0.70. Nurse raters achieved a sensitivity of 61%, specificity of 73%, and PPV of 10%.
Machine learning models can accurately predict the likelihood of hospitalization or death within the next 7 days among SNF patients. These models do not require additional SNF staff time and may be useful in readmission reduction programs by targeting more frequent monitoring proactively to those at highest risk.
由于质量指标、经济处罚和临床人员配备有限,识别有住院或死亡风险的熟练护理机构(SNF)患者对SNF、患者及其家属来说很重要。我们旨在开发一种预测模型,以识别可能在未来7天内住院或死亡的SNF患者,并对照临床医生的判断验证该模型的性能。
回顾性多变量预后模型开发研究。
使用PointClickCare电子健康记录(EHR)系统的美国SNF患者。我们使用了2019年1月1日至2023年3月31日期间8440家SNF中5642474名患者熟练住院前100天的数据。
我们使用临床护理过程中收集的数据来开发一个机器学习模型,以预测患者在未来7天内住院或死亡的可能性。数据包括生命体征、诊断、实验室结果、食物摄入量和临床记录。我们还请SNF护士和医院病例管理人员做出自己的预测作为比较。EHR被用作患者是否死亡或住院的信息来源。
该模型的敏感性为35%,特异性为92%,阳性预测值(PPV)为18%,受试者操作特征曲线下面积(AUC)为0.75。不包括病程记录和食物摄入量的模型变体的AUC为0.70。护士评分者的敏感性为61%,特异性为73%,PPV为10%。
机器学习模型可以准确预测SNF患者在未来7天内住院或死亡的可能性。这些模型不需要SNF额外的工作人员时间,并且通过主动针对风险最高的患者进行更频繁的监测,可能有助于减少再入院计划。