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首页> 外文期刊>Applied Soft Computing >Myocardial infarction classification with multi-lead ECG using hidden Markov models and Gaussian mixture models
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Myocardial infarction classification with multi-lead ECG using hidden Markov models and Gaussian mixture models

机译:使用隐马尔可夫模型和高斯混合模型对多导联心电图进行心肌梗死分类

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摘要

This study presented a new diagnosis system for myocardial infarction classification by converting multi-lead ECG data into a density model for increasing accuracy and flexibility of diseases detection. In contrast to the traditional approaches, a hybrid system with HMMs and GMMs was employed for data classification. A hybrid approach using multi-leads, i.e., lead-V1, V2, V3 and V4 for myocardial infarction were developed and HMMs were used not only to find the ECG segmentations but also to calculate the log-likelihood value which was treated as statistical feature data of each heartbeat's ECG complex. The 4-dimension feature vector extracted by HMMs was clustered by GMMs with different numbers of distribution (disease and normal data). SVMs classifier was also examined for comparison with our system in experimental result. There were total 1129 samples of heartbeats from clinical data, including 582 data with myocardial infarction and 547 normal data. The sensitivity of this diagnosis system achieved 85.71%, specificity achieved 79.82% and accuracy achieved 82.50% statistically.
机译:这项研究通过将多导联心电图数据转换为密度模型以提高疾病检测的准确性和灵活性,提出了一种用于心肌梗死分类的新诊断系统。与传统方法相反,采用具有HMM和GMM的混合系统进行数据分类。开发了一种使用多导联(即V1,V2,V3和V4导联)治疗心肌梗死的混合方法,并且使用HMM不仅可以找到ECG分割,还可以计算对数似然值,将其作为统计特征每个心跳的心电图复合体的数据。 HMM提取的4维特征向量由具有不同分布数量(疾病和正常数据)的GMM聚类。还对SVM分类器进行了检验,以与我们的系统在实验结果中进行比较。临床数据中共有1129例心跳样本,包括582例心肌梗死数据和547例正常数据。该诊断系统的灵敏度在统计学上达到85.71%,特异性达到79.82%,准确性达到82.50%。

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