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Motion Artifacts Recognition in Electrocardiographic Signals through Artificial Neural Networks and Support Vector Machines for Personalized Health Monitoring

机译:通过人工神经网络和支持向量机进行个性化健康监测的动作伪影识别

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Nowadays a personalized approach is being giving to health care concerning the prevention of diseases, improving diagnosis and treatment of patients, for this, equipment to measure ambulatory vital signs are used, allowing to get large volumes of information. Nevertheless, the obtained information from ambulatory electrocardiography has no largely clinical validity because it is contaminated with motion artifacts, for this reason, it is necessary to determine what information is useful and what information can be ruled out. This paper presents a comparison between two different classification methods of electrocardiography signals: Artificial Neural Networks and Support Vector Machines. Database includes electrocardiography signals of volunteers and some important features of these signals are extracted to train both classification methods. Also, performance of methods is assessed verifying the generalization capabilities. The best performance was presented by the Radial Basis Function kernel.
机译:如今,个性化方法正在给予医疗保健关于预防疾病,改善患者的诊断和治疗,为此,使用了测量动态生命体征的设备,允许获得大量的信息。尽管如此,来自动态心电图的所获得的信息没有大部分临床有效性,因为它被动画伪像污染,因此,有必要确定有用的信息,可以排除什么信息。本文介绍了两种不同分类方法之间的电气心电图信号:人工神经网络和支持向量机之间的比较。数据库包括志愿者的心电图信号,并提取这些信号的一些重要特征以培训两个分类方法。此外,评估了方法的性能验证泛化能力。径向基函数内核提出了最佳性能。

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