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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Predicting long-term mortality with first week post-operative data after Coronary Artery Bypass Grafting using Machine Learning models
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Predicting long-term mortality with first week post-operative data after Coronary Artery Bypass Grafting using Machine Learning models

机译:使用机器学习模型预测冠状动脉旁路嫁接后的第一周术后数据的长期死亡率

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Coronary Artery Bypass Graft (CABG) surgery is the most common cardiac operation and its complications are associated with increased long-term mortality rates. Although many factors are known to be linked to this, much remains to be understood about their exact influence on outcome. In this study we used Machine Learning (ML) algorithms to predict long-term mortality in CABG patients using data from routinely measured clinical parameters from a large cohort of CABG patients (n=5868). We compared the accuracy of 5 different ML models with traditional Cox and Logistic Regression, and report the most important variables in the best performing models. In the validation dataset, the Gradient Boosted Machine (GBM) algorithm was the most accurate (AUROC curve [95%CI] of 0.767 [0.739-0.796]), proving to be superior to traditional Cox and logistic regression (p <0.01) for long-term mortality prediction. Measures of variable importance for outcome prediction extracted from the GBM and Random Forest models partly reflected what is known in the literature, but interestingly also highlighted other unexpectedly relevant parameters. In conclusion, we found ML algorithm-based models to be more accurate than traditional Logistic Regression in predicting long-term mortality after CABG. Finally, these models may provide essential input to assist the development of intelligent decision support systems for clinical use.
机译:冠状动脉旁路移植物(CABG)手术是最常见的心脏手术,其并发症与增加的长期死亡率相关。虽然已知许多因素与此联系,但是关于它们对结果的确切影响很大。在这项研究中,我们使用了通过来自大型CABG患者群组(n = 5868)的常规测量临床参数的数据来预测CABG患者的长期死亡率。我们将5种不同ML模型的准确性与传统的Cox和Logistic回归进行了比较,并在最佳表现模型中报告了最重要的变量。在验证数据集中,梯度提升机(GBM)算法是最准确的(Auroc曲线[95%CI]为0.767 [0.739-0.796]),证明是优于传统的COX和Logistic回归(P <0.01)长期死亡率预测。从GBM和随机林模型中提取的结果预测的可变重要性的措施部分反映了文献中已知的,但有趣的是还突出了其他意外相关的参数。总之,我们发现基于ML算法的模型比传统的逻辑回归更准确地预测CABG后长期死亡率。最后,这些模型可以提供必要的输入,以帮助开发智能决策支持系统进行临床使用。

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