Jiang Wei, Siddiqui Sauleh, Barnes Sean, Barouch Lili A, Korley Frederick, Martinez Diego A, Toerper Matthew, Cabral Stephanie, Hamrock Eric, Levin Scott
Department of Civil Engineering, Johns Hopkins System Institute, Johns Hopkins University, Baltimore, MD, United States.
Department of Decision, Operations & Information Technologies, Robert H Smith School of Business, University of Maryland, College Park, MD, United States.
JMIR Med Inform. 2019 Sep 16;7(4):e14756. doi: 10.2196/14756.
Patients hospitalized with heart failure suffer the highest rates of 30-day readmission among other clinically defined patient populations in the United States. Investigation into the predictability of 30-day readmissions can lead to clinical decision support tools and targeted interventions that can help care providers to improve individual patient care and reduce readmission risk.
This study aimed to develop a dynamic readmission risk prediction model that yields daily predictions for patients hospitalized with heart failure toward identifying risk trajectories over time and identifying clinical predictors associated with different patterns in readmission risk trajectories.
A two-stage predictive modeling approach combining logistic and beta regression was applied to electronic health record data accumulated daily to predict 30-day readmission for 534 hospital encounters of patients with heart failure over 2750 patient days. Unsupervised clustering was performed on predictions to uncover time-dependent trends in readmission risk over the patient's hospital stay. We used data collected between September 1, 2013, and August 31, 2015, from a community hospital in Maryland (United States) for patients with a primary diagnosis of heart failure. Patients who died during the hospital stay or were transferred to other acute care hospitals or hospice care were excluded.
Readmission occurred in 107 (107/534, 20.0%) encounters. The out-of-sample area under curve for the 2-stage predictive model was 0.73 (SD 0.08). Dynamic clinical predictors capturing laboratory results and vital signs had the highest predictive value compared with demographic, administrative, medical, and procedural data included. Unsupervised clustering identified four risk trajectory groups: decreasing risk (131/534, 24.5% encounters), high risk (113/534, 21.2%), moderate risk (177/534, 33.1%), and low risk (113/534, 21.2%). The decreasing risk group demonstrated change in average probability of readmission from admission (0.69) to discharge (0.30), whereas the high risk (0.75), moderate risk (0.61), and low risk (0.39) groups maintained consistency over the hospital course. A higher level of hemoglobin, larger decrease in potassium and diastolic blood pressure from admission to discharge, and smaller number of past hospitalizations are associated with decreasing readmission risk (P<.001).
Dynamically predicting readmission and quantifying trends over patients' hospital stay illuminated differing risk trajectory groups. Identifying risk trajectory patterns and distinguishing predictors may shed new light on indicators of readmission and the isolated effects of the index hospitalization.
在美国,因心力衰竭住院的患者在其他临床定义的患者群体中30天再入院率最高。对30天再入院可预测性的调查能够产生临床决策支持工具和有针对性的干预措施,有助于医护人员改善个体患者护理并降低再入院风险。
本研究旨在开发一种动态再入院风险预测模型,该模型能对因心力衰竭住院的患者进行每日预测,以确定随时间变化的风险轨迹,并识别与再入院风险轨迹中不同模式相关的临床预测因素。
采用一种结合逻辑回归和贝塔回归的两阶段预测建模方法,应用于每日积累的电子健康记录数据,以预测2750个患者日期间534例心力衰竭患者住院的30天再入院情况。对预测结果进行无监督聚类,以揭示患者住院期间再入院风险随时间变化的趋势。我们使用了2013年9月1日至2015年8月31日期间从美国马里兰州一家社区医院收集的数据,这些患者的主要诊断为心力衰竭。住院期间死亡、转至其他急性护理医院或临终关怀机构的患者被排除。
107例(107/534,20.0%)出现再入院情况。两阶段预测模型的样本外曲线下面积为0.73(标准差0.08)。与纳入的人口统计学、管理、医疗和程序数据相比,反映实验室检查结果和生命体征的动态临床预测因素具有最高的预测价值。无监督聚类识别出四个风险轨迹组:风险降低组(131/534,24.5%的病例)、高风险组(113/534,21.2%)、中度风险组(177/534,33.1%)和低风险组(113/534,21.2%)。风险降低组显示再入院平均概率从入院时的0.69降至出院时的0.30,而高风险组(0.75)、中度风险组(0.61)和低风险组(0.39)在整个住院过程中保持一致。血红蛋白水平较高、从入院到出院钾和舒张压下降幅度较大以及既往住院次数较少与再入院风险降低相关(P<0.001)。
动态预测再入院情况并量化患者住院期间的趋势,揭示了不同的风险轨迹组。识别风险轨迹模式和区分预测因素可能为再入院指标及本次住院的独立影响提供新的见解。