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Predicting cardiovascular intensive care unit readmission after cardiac surgery: derivation and validation of the Alberta Provincial Project for Outcomes Assessment in Coronary Heart Disease (APPROACH) cardiovascular intensive care unit clinical predictio

机译:预测心脏外科手术后心血管重症监护室再次入院:阿尔伯塔省冠心病成果评估项目(APPROACH)心血管重症监护室临床预测的推导和验证

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IntroductionIn medical and surgical intensive care units, clinical risk prediction models for readmission have been developed; however, studies reporting the risks for cardiovascular intensive care unit (CVICU) readmission have been methodologically limited by small numbers of outcomes, unreported measures of calibration or discrimination, or a lack of information spanning the entire perioperative period. The purpose of this study was to derive and validate a clinical prediction model for CVICU readmission in cardiac surgical patients.MethodsA total of 10,799 patients more than or equal to 18?years in the Alberta Provincial Project for Outcomes Assessment in Coronary Heart Disease (APPROACH) registry who underwent cardiac surgery (coronary artery bypass or valvular surgery) between 2004 and 2012 and were discharged alive from the first CVICU admission were included. The full cohort was used to derive the clinical prediction model and the model was internally validated with bootstrapping. Discrimination and calibration were assessed using the AUC c index and the Hosmer-Lemeshow tests, respectively.ResultsA total of 479 (4.4%) patients required CVICU readmission. The mean CVICU length of stay (19.9 versus 3.3?days, P <0.001) and in-hospital mortality (14.4% versus 2.2%, P <0.001) were higher among patients readmitted to the CVICU. In the derivation cohort, a total of three preoperative (age ≥70, ejection fraction, chronic lung disease), two intraoperative (single valve repair or replacement plus non-CABG surgery, multivalve repair or replacement), and seven postoperative variables (cardiac arrest, pneumonia, pleural effusion, deep sternal wound infection, leg graft harvest site infection, gastrointestinal bleed, neurologic complications) were independently associated with CVICU readmission. The clinical prediction model had robust discrimination and calibration in the derivation cohort (AUC c index?=?0.799; Hosmer-Lemeshow P?=?0.192). The validation point estimates and confidence intervals were similar to derivation model.ConclusionsIn a large population-based dataset incorporating a comprehensive set of perioperative variables, we have derived a clinical prediction model with excellent discrimination and calibration. This model identifies opportunities for targeted therapeutic interventions aimed at reducing CVICU readmissions in high-risk patients.
机译:引言在医疗和外科重症监护病房中,已经开发了再次入院的临床风险预测模型。但是,报告了重症监护病房(CVICU)重新入院风险的研究在方法上受到了局限性,原因是结局数量少,未报告校正或歧视措施或缺乏整个围手术期的信息。本研究的目的是推导并验证心脏手术患者CVICU再入院的临床预测模型。方法艾伯塔省冠心病结果评估项目(APPROACH)中共有10,799名超过或等于18岁的患者在2004年至2012年之间进行了心脏手术(冠状动脉搭桥术或瓣膜手术)并在首次CVICU入院时就活出病的登记处包括在内。使用完整的队列来得出临床预测模型,并通过自举对内部模型进行验证。分别使用AUC c指数和Hosmer-Lemeshow测试评估鉴别和校准。结果共有479例患者(4.4%)需要CVICU再入院。再入CVICU的患者中,平均CVICU住院时间(19.9天对3.3天,P <0.001)和院内死亡率(14.4%对2.2%,P <0.001)更高。在派生队列中,总共三个术前(年龄≥70,射血分数,慢性肺病),两个术中(单瓣膜修复或置换加上非CABG手术,多瓣膜修复或置换)和七个术后变量(心脏骤停) ,肺炎,胸腔积液,深胸骨伤口感染,小腿移植物收获部位感染,胃肠道出血,神经系统并发症)均与CVICU再入院独立相关。临床预测模型在派生队列中具有强大的判别力和校准能力(AUC c指数≥0.799; Hosmer-Lemeshow P≥0.192)。验证点估计值和置信区间与推导模型相似。结论在一个基于人群的大型数据集中,该数据集包含一组全面的围手术期变量,我们得出了具有出色判别力和校准度的临床预测模型。该模型确定了针对性治疗干预措施的机会,旨在减少高危患者的CVICU再入院率。

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