Aschauer S, Dorffner G, Sterz F, Erdogmus A, Laggner A
Division of Cardiology and Angiology, Department of Internal Medicine II, Medical University of Vienna, WähringerGürtel 18-20, Vienna 1090, Austria.
Centre for Medical Statistics, Informatics and Intelligent Systems, Medical University of Vienna, Spitalgasse 23, Vienna 1090, Austria.
Resuscitation. 2014 Sep;85(9):1225-31. doi: 10.1016/j.resuscitation.2014.06.007. Epub 2014 Jun 21.
Improvement in predicting survival after out-of-hospital cardiac arrest is of major medical, scientific and socioeconomic interest. The current study aimed at developing an accurate outcome-prediction tool for patients following out-of-hospital cardiac arrests.
This retrospective cohort study was based on a cardiac arrest registry. From out-of-hospital cardiac arrest patients (n=1932), a set of variables established before restoration of spontaneous circulation was explored using multivariable logistic regression. To obtain reliable estimates of the classification performance the patients were allocated to training (oldest 80%) and validation (most recent 20%) sets. The main performance parameter was the area under the ROC curve (AUC), classifying patients into survivors/non-survivors after 30 days. Based on rankings of importance, a subset of variables was selected that would have the same predictive power as the entire set. This reduced-variable set was used to derive a comprehensive score to predict mortality.
The average AUC was 0.827 (CI 0.793-0.861) for a logistic regression model using all 21 variables. This was significantly better than the AUC for any single considered variable. The total amount of adrenaline, number of minutes to sustained restoration of spontaneous circulation, patient age and first rhythm had the same predictive power as all 21 variables. Based on this finding, our score was built and had excellent predictive accuracy (the AUC was 0.810), discriminating patients into 10%, 30%, 50%, 70%, and 90% survival probabilities.
The current results are promising to increase prognostication accuracy, and we are confident that our score will be helpful in the daily clinical routine.
提高院外心脏骤停后生存预测能力具有重大的医学、科学和社会经济意义。本研究旨在为院外心脏骤停患者开发一种准确的预后预测工具。
这项回顾性队列研究基于心脏骤停登记处的数据。从1932例院外心脏骤停患者中,利用多变量逻辑回归探索了一组在自主循环恢复前确立的变量。为了获得分类性能的可靠估计,将患者分为训练组(最年长的80%)和验证组(最新的20%)。主要性能参数是ROC曲线下面积(AUC),用于将患者分为30天后的幸存者/非幸存者。根据重要性排名,选择了一组与整个变量集具有相同预测能力的变量子集。这个简化变量集用于得出一个综合分数来预测死亡率。
使用所有21个变量的逻辑回归模型的平均AUC为0.827(95%CI 0.793 - 0.861)。这显著优于任何单个考虑变量的AUC。肾上腺素总量、自主循环持续恢复的分钟数、患者年龄和初始心律与所有21个变量具有相同的预测能力。基于这一发现,构建了我们的分数,其具有出色的预测准确性(AUC为0.810),能够将患者分为10%、30%、50%、70%和90%的生存概率。
目前的结果有望提高预后预测的准确性,我们相信我们的分数将有助于日常临床实践。