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Assessing the Performance of a Modified LACE Index (LACE-rt) to Predict Unplanned Readmission After Discharge in a Community Teaching Hospital

机译:在社区教学医院评估改良的LACE指数(LACE-rt)的性能以预测出院后计划外的入院

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Background The LACE index was designed to predict early death or unplanned readmission after discharge from hospital to the community. However, implementing the LACE tool in real time in a teaching hospital required practical unavoidable modifications. Objective The purpose of this study was to validate the implementation of a modified LACE index (LACE-rt) and test its ability to predict readmission risk using data in a hospital setting. Methods Data from the Canadian Institute for Health Information’s Discharge Abstract Database (DAD), the National Ambulatory Care Reporting System (NACRS), and the hospital electronic medical record for one large community hospital in Toronto, Canada, were used in this study. A total of 3855 admissions from September 2013 to July 2014 were analyzed (N=3855) using descriptive statistics, regression analysis, and receiver operating characteristic analysis. Prospectively collected data from DAD and NACRS were linked to inpatient data. Results The LACE-rt index was a fair test to predict readmission risk (C statistic=.632). A LACE-rt score of 10 is a good threshold to differentiate between patients with low and high readmission risk; the high-risk patients are 2.648 times more likely to be readmitted than those at low risk. The introduction of LACE-rt had no significant impact on readmission reduction. Conclusions The LACE-rt is a fair tool for identifying those at risk of readmission. A collaborative cross-sectoral effort that includes those in charge of providing community-based care is needed to reduce readmission rates. An eHealth solution could play a major role in streamlining this collaboration.
机译:背景LACE指数旨在预测从医院出院后到社区的早期死亡或计划外的再次入院。但是,在教学医院中实时实施LACE工具需要进行实际不可避免的修改。目的这项研究的目的是验证修改后的LACE指数(LACE-rt)的实施,并使用医院中的数据测试其预测再入院风险的能力。方法本研究使用了加拿大卫生信息研究所出院摘要数据库(DAD),国家门诊报告系统(NACRS)的数据以及加拿大多伦多一家大型社区医院的医院电子病历。使用描述性统计,回归分析和接收者操作特征分析,分析了2013年9月至2014年7月的3855份入学申请(N = 3855)。从DAD和NACRS收集的前瞻性数据与住院患者数据相关联。结果LACE-rt指数是预测再入院风险的公平检验(C统计量= .632)。 LACE-rt分数为10是区分低再入院风险和高再入院风险的患者的良好阈值;高风险患者的再入院率是低风险患者的2.648倍。 LACE-rt的引入对降低再入院率没有重大影响。结论LACE-rt是识别那些有再入院风险的公平工具。需要进行跨部门合作,包括负责提供基于社区的护理的人员,以降低再入院率。电子卫生保健解决方案可以在简化这种协作中发挥重要作用。

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