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Comparison of Four Methods for Premature Ventricular Contraction and Normal Beat Clustering

机译:一种过早心室收缩和正常节拍聚类的四种方法的比较

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The learning capacity and the classification ability for normal beats and premature ventricular contractions clustering by four classification methods were compared: neural networks (NN), K-th nearest neighbour rule (Knn), discriminant analysis (DA) and fuzzy logic (FL). Twenty-six morphology feature parameters, which include information of amplitude, area, specific interval durations and measurement of the QRS vector in a VCG plane, were defined. One global and two local learning sets were used. The local classifiers achieved better accuracies because of their good adaptability to the patients, while the capacity of the global classifier to process new records without additional learning was expectedly balanced by lower accuracies. NN assure the best results (high and balanced indices for specificity and sensitivity) using one of the local learning set, while the Knn provides the best results with the other local learning set. Using the global learning set DA and the FL methods perform better than the NN and Knn.
机译:比较了四种分类方法的正常节拍和早熟心室收缩聚类的学习能力和分类能力:神经网络(NN),第k个最近邻(KNN),判别分析(DA)和模糊逻辑(FL)。定义了二十六种形态特征参数,其包括幅度,面积,特定间隔持续时间和VCG平面中QRS向量的测量的信息。使用一个全球和两个本地学习集。由于对患者的良好适应性,当地分类器实现了更好的准确性,而全球分类器的能力在没有额外学习的情况下处理新的记录,预计通过较低的准确性。 NN使用本地学习集中的一个确保最佳结果(特异性和敏感性的高度平衡指数),而KNN提供与其他本地学习集的最佳效果。使用全局学习集DA和FL方法比NN和KNN更好地执行。

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