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Acute Coronary Syndrome Risk Prediction Based on GRACE Risk Score

机译:基于宽限风险评分的急性冠状动脉综合征风险预测

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Clinical risk prediction of acute coronary syndrome (ACS) plays a critical role for clinical decision support, treatment management and quality of care assessment in ACS patients. Admission records contain a wealth of patient information in the early stages of hospitalization, which offers the opportunity to support the ACS risk prediction in a proactive manner. However, ACS patient risks aren't recorded in hospital admission records, thus impeding the construction of supervised risk prediction models. In our study, we propose a novel approach for ACS risk prediction, which employs a well-known ACS risk prediction model (GRACE) as the benchmark methods to stratify patient risks, and then utilizes a state-of-the-art supervised machine learning algorithm to establish our risk prediction models. The experiment was conducted with a collection of 3,643 ACS patient samples from a Chinese hospital. Our best model achieved 0.616 accuracy for risk prediction, which indicates our learned model can achieve a better performance than the benchmark GRACE model and can obtain significant improvement by mixing up patient samples that were manually labeled risks.
机译:急性冠状动脉综合征(ACS)的临床风险预测对ACS患者的临床决策支持,治疗管理和护理评估质量发挥着关键作用。入院记录中的入院阶段中包含丰富的患者信息,为支持ACS风险预测提供了支持以主动的方式提供支持。然而,ACS患者风险没有记录在医院入学记录中,从而阻碍了受监督风险预测模型的构建。在我们的研究中,我们提出了一种新的ACS风险预测方法,该方法采用了一个着名的ACS风险预测模型(Grace)作为基准方法来分层患者风险,然后利用最先进的监督机器学习建立风险预测模型的算法。该实验是通过来自中国医院的3,643名ACS患者样本进行的。我们的最佳型号实现了0.616的风险预测精度,这表明我们的学习模型可以实现比基准恩典模型更好的性能,并通过混合手动标记风险的患者样本来获得显着的改善。

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