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A prediction model to identify patients at high risk for 30-day readmission after percutaneous coronary intervention

机译:经皮冠状动脉介入治疗后识别出30天再入院高风险患者的预测模型

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Background-The Affordable Care Act creates financial incentives for hospitals to minimize readmissions shortly after discharge for several conditions, with percutaneous coronary intervention (PCI) to be a target in 2015. We aimed to develop and validate prediction models to assist clinicians and hospitals in identifying patients at highest risk for 30-day readmission after PCI. Methods and Results-We identified all readmissions within 30 days of discharge after PCI in nonfederal hospitals in Massachusetts between October 1, 2005, and September 30, 2008. Within a two-thirds random sample (Developmental cohort), we developed 2 parsimonious multivariable models to predict all-cause 30-day readmission, the first incorporating only variables known before cardiac catheterization (pre-PCI model), and the second incorporating variables known at discharge (Discharge model). Models were validated within the remaining one-third sample (Validation cohort), and model discrimination and calibration were assessed. Of 36 060 PCI patients surviving to discharge, 3760 (10.4%) patients were readmitted within 30 days. Significant pre-PCI predictors of readmission included age, female sex, Medicare or State insurance, congestive heart failure, and chronic kidney disease. Post-PCI predictors of readmission included lack of β-blocker prescription at discharge, post-PCI vascular or bleeding complications, and extended length of stay. Discrimination of the pre-PCI model (C-statistic=0.68) was modestly improved by the addition of post-PCI variables in the Discharge model (C-statistic=0.69; integrated discrimination improvement, 0.009; P<0.001). Conclusions-These prediction models can be used to identify patients at high risk for readmission after PCI and to target high-risk patients for interventions to prevent readmission.
机译:背景-《平价医疗法案》为医院创造了经济诱因,以使出院后不久因多种情况而再次入院的人数降至最低,2015年将以经皮冠状动脉介入治疗(PCI)为目标。我们旨在开发和验证预测模型,以协助临床医生和医院确定PCI后30天再入院的最高风险患者。方法和结果-我们确定了2005年10月1日至2008年9月30日期间在马萨诸塞州非联邦医院PCI出院后30天内的所有再入院。在三分之二的随机样本(发育队列)中,我们开发了2个简约的多变量模型为了预测30天的全因再入院,第一个仅合并了在心脏导管插入术之前已知的变量(PCI前模型),第二个合并了出院时已知的变量(Discharge模型)。在剩余的三分之一样本(验证队列)中验证模型,并评估模型的辨别力和校准。在36060名幸存的出院PCI患者中,有3760名(10.4%)患者在30天内重新入院。 PCI之前再入院的重要预测指标包括年龄,女性,Medicare或州保险,充血性心力衰竭和慢性肾脏病。 PCI后再入的预测因素包括出院时缺乏β受体阻滞剂处方,PCI后血管或出血并发症以及住院时间延长。通过在出院模型中增加PCI后变量(C统计量= 0.69;综合辨别力改善为0.009,P <0.001),可适度改善PCI前模型的辨别力(C统计= 0.68)。结论-这些预测模型可用于识别PCI后再入院的高风险患者,并针对高危患者进行干预以防止再入院。

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