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Geometrical features for premature ventricular contraction recognition with analytic hierarchy process based machine learning algorithms selection

机译:基于分析层次过程的机器学习算法的过早心室收缩识别的几何特征

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摘要

Background and Objective: Premature ventricular contraction is associated to the risk of coronary heart disease, and its diagnosis depends on a long time heart monitoring. For this purpose, monitoring through Holter devices is often used and computational tools can provide essential assistance to specialists. This paper presents a new premature ventricular contraction recognition method based on a simplified set of features, extracted from geometric figures constructed over QRS complexes (Q, R and S waves).
机译:背景和目的:过早的心室收缩与冠心病风险有关,其诊断取决于长时间的心脏监测。 为此目的,经常使用HOLTER设备监控,并且计算工具可以为专家提供基本辅助。 本文介绍了一种基于简化的特征的新的过度心室收缩识别方法,从QRS复合物(Q,R和S波)构造的几何图中提取。

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