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SVM Classification for Discriminating Cardiovascular Disease Patients from Non-cardiovascular Disease Controls Using Pulse Waveform Variability Analysis

机译:使用脉搏波形可变性分析鉴别非心血管疾病控制的心血管疾病患者的SVM分类

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This paper analyzes the variability of pulse waveforms by means of approximate entropy (ApEn) and classifies three group objects using support vector machines (SVM). The subjects were divided into three groups according to their cardiovascular conditions. Firstly, we employed ApEn to analyze three groups pulse morphology variability (PMV). The pulse waveforms ApEn of a patient with cardiovascular disease tends to have a smaller value and its variations spectral contents differ greatly during different cardiovascular conditions. Then, we applied a SVM to discriminate cardiovascular disease patients from non-cardiovascular disease controls. The specificity and sensitivity for clinical diagnosis of cardiovascular system is 85% and 93% respectively. The proposed techniques in this paper, from a long-term PMV analysis viewpoint, can be applied to a further research on cardiovascular system.
机译:本文通过近似熵(APEN)分析了脉冲波形的可变性,并使用支持向量机(SVM)对三组对象进行分类。 根据其心血管条件将受试者分为三组。 首先,我们采用APEN分析三组脉冲形态变异性(PMV)。 具有心血管疾病的患者的脉冲波形倾向于具有较小的值,并且在不同的心血管条件下,其变化谱含量很大。 然后,我们应用了从非心血管疾病对照中鉴定心血管疾病患者的SVM。 心血管系统的临床诊断的特异性和敏感性分别为85%和93%。 本文中所提出的技术从长期PMV分析观点来看,可以应用于对心血管系统的进一步研究。

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