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Development, Validation and Deployment of a Real Time 30 Day Hospital Readmission Risk Assessment Tool in the Maine Healthcare Information Exchange

机译:在缅因州医疗保健信息交换中开发,验证和部署实时30天医院再入院风险评估工具

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Objectives Identifying patients at risk of a 30-day readmission can help providers design interventions, and provide targeted care to improve clinical effectiveness. This study developed a risk model to predict a 30-day inpatient hospital readmission for patients in Maine, across all payers, all diseases and all demographic groups. Methods Our objective was to develop a model to determine the risk for inpatient hospital readmission within 30 days post discharge. All patients within the Maine Health Information Exchange (HIE) system were included. The model was retrospectively developed on inpatient encounters between January 1, 2012 to December 31, 2012 from 24 randomly chosen hospitals, and then prospectively validated on inpatient encounters from January 1, 2013 to December 31, 2013 using all HIE patients. Results A risk assessment tool partitioned the entire HIE population into subgroups that corresponded to probability of hospital readmission as determined by a corresponding positive predictive value (PPV). An overall model c-statistic of 0.72 was achieved. The total 30-day readmission rates in low (score of 0–30), intermediate (score of 30–70) and high (score of 70–100) risk groupings were 8.67%, 24.10% and 74.10%, respectively. A time to event analysis revealed the higher risk groups readmitted to a hospital earlier than the lower risk groups. Six high-risk patient subgroup patterns were revealed through unsupervised clustering. Our model was successfully integrated into the statewide HIE to identify patient readmission risk upon admission and daily during hospitalization or for 30 days subsequently, providing daily risk score updates. Conclusions The risk model was validated as an effective tool for predicting 30-day readmissions for patients across all payer, disease and demographic groups within the Maine HIE. Exposing the key clinical, demographic and utilization profiles driving each patient’s risk of readmission score may be useful to providers in developing individualized post discharge care plans.
机译:目的识别有30天再入院风险的患者可以帮助提供者设计干预措施,并提供针对性的护理以提高临床疗效。这项研究开发了一种风险模型,可以预测缅因州所有付款人,所有疾病和所有人口统计特点的患者住院30天的住院率。方法我们的目标是建立一个模型,以确定出院后30天内住院患者再次住院的风险。纳入缅因州健康信息交换(HIE)系统内的所有患者。该模型是对2012年1月1日至2012年12月31日随机选择的24家医院的住院病例进行回顾性开发,然后使用所有HIE患者对2013年1月1日至2013年12月31日的住院病例进行前瞻性验证。结果风险评估工具将整个HIE人群划分为亚组,这些亚组对应于由相应的阳性预测值(PPV)确定的再次住院的可能性。总体模型c统计量达到0.72。低(0-30分),中(30-70分)和高(70-100分)风险组的30天再入院率分别为8.67%,24.10%和74.10%。事件分析时间显示,较高风险组比较低风险组更早入院。通过无监督聚类揭示了六个高危患者亚组模式。我们的模型已成功整合到全州的HIE中,以识别入院时和住院期间或住院期间或之后30天的患者再次入院风险,并提供每日风险评分更新。结论风险模型已被验证为预测缅因州HIE内所有付款人,疾病和人口群体的30天再入院率的有效工具。揭露驱动每个患者再入院分数风险的关键临床,人口统计学和使用情况档案,对于提供者制定个性化的出院后护理计划可能很有用。

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