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首页> 外文期刊>International Journal of Information Acquisition >INTELLIGENT DIAGNOSIS OF CARDIOVASCULAR DISEASES UTILIZING ECG SIGNALS
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INTELLIGENT DIAGNOSIS OF CARDIOVASCULAR DISEASES UTILIZING ECG SIGNALS

机译:利用心电图信号对心血管疾病进行智能诊断

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摘要

Early automatic detection of cardiovascular diseases is of great importance to provide timely treatment and reduce fatality rate. Although many efforts have been devoted to detecting various arrhythmias, classification of other common cardiovascular diseases still lacks comprehensive and intensive studies. This work aims at developing an automatic diagnosis system for myocardial infarction, valvular heart disease, eardiomyopathy, hypertrophy, and bundle branch block, based on the clinic recordings provided by PTB Database. The proposed diagnosis system consists of the components as baseline wander reduction, beat segmentation, feature extraction, feature reduction and classification. The selected features are the location, amplitude and width of each wave, exactly the parameters of ECG dynamical model. We also propose a mean shift algorithm based method to extract these features. To demonstrate the availability and efficacy of the proposed system, we use a total of 13,564 beats to conduct a large scale experiment, where only 25% beats are utilized to train the eigenvectors of generalized discriminant analysis in the feature reduction phase and 25% beats are applied to train the support vector machine in the classification phase. The average sensitivity, specificity and positive predicitivity for the test set, containing 75% beats, are respectively 96.06%, 99.32% and 97.29%.
机译:早期自动检测心血管疾病对于及时提供治疗并降低死亡率是非常重要的。尽管已致力于检测各种心律不齐,但其他常见心血管疾病的分类仍缺乏全面而深入的研究。这项工作旨在根据PTB数据库提供的临床记录,开发一种用于心肌梗塞,瓣膜性心脏病,耳肌病,肥大和束支传导阻滞的自动诊断系统。所提出的诊断系统包括基线漂移减少,节拍分割,特征提取,特征减少和分类等部分。选择的特征是每个波的位置,幅度和宽度,恰好是ECG动力学模型的参数。我们还提出了一种基于均值漂移算法的方法来提取这些特征。为了证明所提出系统的可用性和有效性,我们总共使用了13,564次搏动进行大规模实验,其中只有25%的搏动用于训练特征缩减阶段的广义判别分析的特征向量,而25%的搏动是应用于在分类阶段训练支持向量机。包含75%搏动的测试仪的平均灵敏度,特异性和阳性预测率分别为96.06%,99.32%和97.29%。

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