Kulkarni Parimal, Smith L Douglas, Woeltje Keith F
BJC HealthCare & University of Missouri-St. Louis, BJC Learning Institute, Ste 400A, St Louis, MO, 63144, USA.
Center for Business and Industrial Studies, College of Business Administration, University of Missouri-St. Louis, St Louis, MO, 63121, USA.
Health Care Manag Sci. 2016 Sep;19(3):291-9. doi: 10.1007/s10729-015-9323-5. Epub 2015 Apr 16.
We compare statistical approaches for predicting the likelihood that individual patients will require readmission to hospital within 30 days of their discharge and for setting quality-control standards in that regard. Logistic regression, neural networks and decision trees are found to have comparable discriminating power when applied to cases that were not used to calibrate the respective models. Significant factors for predicting likelihood of readmission are the patient's medical condition upon admission and discharge, length (days) of the hospital visit, care rendered during the hospital stay, size and role of the medical facility, the type of medical insurance, and the environment into which the patient is discharged. Separately constructed models for major medical specialties (Surgery/Gynecology, Cardiorespiratory, Cardiovascular, Neurology, and Medicine) can improve the ability to identify high-risk patients for possible intervention, while consolidated models (with indicator variables for the specialties) can serve well for assessing overall quality of care.
我们比较了多种统计方法,用于预测个体患者出院后30天内再次入院的可能性,并据此设定质量控制标准。当应用于未用于校准各自模型的病例时,逻辑回归、神经网络和决策树具有相当的判别能力。预测再次入院可能性的重要因素包括患者入院和出院时的病情、住院天数、住院期间接受的护理、医疗机构的规模和作用、医疗保险类型以及患者出院后的环境。针对主要医学专科(外科/妇科、心肺科、心血管科、神经科和内科)分别构建的模型可以提高识别可能需要干预的高危患者的能力,而综合模型(带有专科指示变量)则可以很好地用于评估整体护理质量。