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A Machine Learning-Based Approach for the Prediction of Acute Coronary Syndrome Requiring Revascularization

机译:一种基于机器学习的预测急性冠状动脉综合征需要血运重建的方法

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The aim of this study is to predict acute coronary syndrome (ACS) requiring revascularization in those patients presenting early-stage angina-like symptom using machine learning algorithms. We obtained data from 2344 ACS patients, who required revascularization and from 3538 non-ACS patients. We analyzed 20 features that are relevant to ACS using standard algorithms, support vector machines and linear discriminant analysis. Based on feature pattern and filter characteristics, we analyzed and extracted a strong prediction function out of the 20 selected features. The obtained prediction functions are relevant showing the area under curve of 0.860 for the prediction of ACS that requiring revascularization. Some features are missing in many data though they are considered to be very informative; it turned out that omitting those features from the input and using more data without those features for training improves the prediction accuracy. Additionally, from the investigation using the receiver operating characteristic curves, a reliable prediction of 2.60% of non-ACS patients could be made with a specificity of 1.0. For those 2.60% non-ACS patients, we can consider the recommendation of medical treatment without risking misdiagnosis of the patients requiring revascularization. We investigated prediction algorithm to select ACS patients requiring revascularization and non-ACS patients presenting angina-like symptoms at an early stage. In the future, a large cohort study is necessary to increase the prediction accuracy and confirm the possibility of safely discriminating the non-ACS patients from the ACS patients with confidence.
机译:本研究的目的是预测使用机器学习算法呈现早期心绞痛样症状的患者中需要血运重建的急性冠状动脉综合征(ACS)。我们从2344例ACS患者获得了数据,他们需要血运重建和3538名非ACS患者。我们分析了使用标准算法的20个与ACS相关的功能,支持向量机和线性判别分析。基于特征模式和滤波器特性,我们分析并提取了20个选定的特征中的强预测功能。所获得的预测函数表现出曲线下的面积为0.860,以预测需要血运重建的AC。许多数据中缺少一些功能,但它们被认为是非常有效的;事实证明,它省略了从输入和使用更多数据的这些功能,没有那些用于训练的功能,提高了预测准确性。另外,从使用接收器操作特征曲线的调查,可以通过1.0的特异性来制造2.60%的非ACS患者的可靠预测。对于那些2.60%的非ACS患者,我们可以考虑医疗的建议,而不会冒着需要血运重建的患者的误诊。我们研究了预测算法,选择需要在早期阶段呈现血运重建和非ACS患者的ACS患者。未来,需要大的队列研究以增加预测准确性,并确认安全地歧视来自ACS患者的非ACS患者的可能性。

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