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Using hidden Markov toolkit for arrhythmia recognition

机译:使用隐藏的Markov工具包进行心律失常识别

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摘要

This paper describes a recognition system based on diverse features combination for the automatic heartbeat recognition purpose. The method consists of three stages: at the first stage, we extract a set of features including the morphological ones, high order statistics and pitch synchronous decomposition from ECG data using QT database; at the second stage, we use the hidden Markov tree classifier, then the third stage is added as a tool on which we have implemented the hidden Markov tree. The classification accuracy of the proposed system is measured by sensitivity and specificity measures. These measures for average sensitivity and average specificity are 95,79%, 98,93% in case of separated features and 97,46%, 99,22% in case of combined features.
机译:本文介绍了一种基于多种特征组合的自动心跳识别系统。该方法包括三个阶段:第一阶段,我们使用QT数据库从ECG数据中提取出一组特征,包括形态特征,高阶统计量和音高同步分解;在第二阶段,我们使用隐马尔可夫树分类器,然后将第三阶段添加为工具,在该工具上我们实现了隐马尔可夫树。拟议系统的分类准确性是通过敏感性和特异性措施来衡量的。这些平均敏感性和平均特异性的度量在分离特征的情况下分别为95.79%,98.93%,在组合特征的情况下为97.46%,99.22%。

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