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Validation of Three Postoperative Risk Prediction Models for Intensive Care Unit Mortality after Cardiac Surgery

机译:心脏手术后重症监护单位死亡率的三种术后风险预测模型的验证

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Background Several cardiac surgery risk prediction models based on postoperative data have been developed. However, unlike preoperative cardiac surgery risk prediction models, postoperative models are rarely externally validated or utilized by clinicians. The objective of this study was to externally validate three postoperative risk prediction models for intensive care unit ( ICU) mortality after cardiac surgery. Methods The logistic Cardiac Surgery Scores ( logCASUS), Rapid Clinical Evaluation ( RACE), and Sequential Organ Failure Assessment ( SOFA) scores were calculated over the first 7 postoperative days for consecutive adult cardiac surgery patients between January 2013 and May 2015. Model discrimination was assessed using receiver operating characteristic curve analyses. Calibration was assessed using the HosmerLemeshow ( HL) test, calibration plots, and observed to expected ratios. Recalibration of the models was performed. Results A total of 2255 patients were included with an ICU mortality rate of 1.8%. Discrimination for all three models on each postoperative day was good with areas under the receiver operating characteristic curve of 0.8. Generally, RACE and logCASUS had better discrimination than SOFA. Calibration of the RACE score was better than logCASUS, but ratios of observed to expected mortality for both were generally 0.65. Locally recalibrated SOFA, logCASUS and RACE models all performed well. Conclusion All three models demonstrated good discrimination for the first 7 days after cardiac surgery. After recalibration, logCASUS and RACE scores appear to be most useful for daily risk prediction after cardiac surgery. If appropriately calibrated, postoperative cardiac surgery risk prediction models have the potential to be useful tools after cardiac surgery.
机译:背景技术已经开发了几种基于术后数据的心脏手术风险预测模型。然而,与术前心脏手术风险预测模型不同,术后模型很少被临床医生验证或使用。本研究的目的是外部验证心脏手术后重症监护单位(ICU)死亡率的三个术后风险预测模型。方法对2013年1月至2015年5月至2015年5月的连续7个术后日,计算逻辑心脏手术评分(Logcasus),快速临床评估(种族)和顺序器官失效评估(沙发)分数。模型歧视是使用接收器操作特征曲线分析评估。使用HosmerlemeShow(HL)测试,校准图来评估校准,并观察到预期比率。执行模型的重新校准。结果共有2255名患者,ICU死亡率为1.8%。每个术后一天的所有三种模型的歧视对于接收器操作特性曲线下的区域很好。 0.8。一般来说,种族和逻辑群体的歧视性比沙发更好。竞争比赛的校准比Logcasus更好,但通常观察到两者的预期死亡率的比率通常是& 0.65。本地重新校准的沙发,Logcasus和Race模型都表现良好。结论所有三种模型都表现出心脏手术后前7天的良好歧视。重新校准后,Logcasus和竞争评分似乎对心脏手术后日常风险预测最有用。如果适当校准,术后心脏手术风险预测模型具有心脏手术后有可能成为有用的工具。

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