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Distinguishing between supply ischaemic and non-supply ischaemic ST events using a Relevance Vector Machine

机译:使用相关向量机区分供应性缺血和非供应性ST事件

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In this paper, we apply a sparse Bayesian learning algorithm called the Relevance Vector Machine (RVM) which was used to classify the 1126 ischaemic ST events and 1126 non-supply ischaemic ST events in the Long Term ST Database as supply or non-supply ST episodes. A Genetic Algorithm (GA) method was used to identify which of the extracted features used as input to the RVM were the most important with respect to the model''s performance. The GA indicated that 9 of the 35 extracted features were the most relevant. The 9 features that were selected are heart rate variability, slope of the ST segment, energy in the QRS complex and Mahalanobis distance of the first five Karhunen Loève Transform of the QRS complex and ST segment for differentiation between supply and non-supply ischaemic ST episodes. The classification accuracy achieved using the 35 features was 80.1% on the test set. When using the 9 most relevant features determined from the GA, the classification accuracy rose to 87.4%.
机译:在本文中,我们应用了一种称为相关向量机(RVM)的稀疏贝叶斯学习算法,该算法用于将长期ST数据库中的1126个缺血性ST事件和1126个非供应性缺血性ST事件分类为供应性或非供应性ST情节。遗传算法(GA)方法用于确定哪个提取的特征用作RVM的输入对于模型的性能最重要。 GA表示,在35个提取的特征中,有9个最相关。选择的9个特征是心率变异性,ST段的斜率,QRS复合体的能量和QRS复合体与ST段的前五个KarhunenLoève变换的前五个KarhunenLoève变换的Mahalanobis距离,用于区分供血和非供血性缺血性ST发作。在测试集上,使用35种功能获得的分类精度为80.1%。当使用从GA确定的9个最相关的功能时,分类准确度提高到87.4%。

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