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An effective frequency-domain feature of atrial fibrillation based on time–frequency analysis

机译:基于时频分析的心房颤动有效频域特征

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Atrial fibrillation is a type of persistent arrhythmia that can lead to serious complications. Therefore, accurate and quick detection of atrial fibrillation by surface electrocardiogram has great importance on further treatment. The practical electrocardiogram signals contain various interferences in different frequencies, such as myoelectricity interference, power interference and so on. Detection speed and accuracy largely depend on the atrial fibrillation signal features extracted by the algorithm. But some of the discovered atrial fibrillation features are not well distinguishable, resulting in poor classification effect. This paper proposed a high distinguishable frequency feature—the frequency corresponding to the maximum amplitude in the frequency spectrum. We used the R–R interval detection method optimized with the mathematical morphology method and combined with the wavelet transform method for analysis. According to the two features—the maximum amplitude in the frequency spectrum and R–R interval irregular, we could recognize atrial fibrillation signals in electrocardiogram signals by decision tree classification algorithm. The data used in the experiment come from the MIT-BIH database, which is publicly accessible via the web and with ethical approval and consent. Based on the input of time-domain and frequency-domain features, we classified sinus rhythm signals and AF signals using the decision tree generated by classification and regression tree (CART) algorithm. From the confusion matrix, we got the accuracy was 98.9%, sensitivity was 97.93% and specificity was 99.63%. The experimental results can prove the validity of the maximum amplitude in the frequency spectrum and the practicability and accuracy of the detection method, which applied this frequency-domain feature. Through the detection method, we obtained good accuracy of classifying sinus rhythm signals and atrial fibrillation signals. And the sensitivity and specificity of our method were pretty good by comparison with other studies.
机译:心房颤动是一种持续的心律失常,可导致严重并发症。因此,通过表面心电图准确和快速地检测心房颤动,对进一步处理具有重要意义。实际心电图信号包含不同频率的各种干扰,例如肌电干扰,功率干扰等。检测速度和精度在很大程度上取决于算法提取的心房颤动信号特征。但是一些发现的心房颤动特征是不可分辨率的,导致分类效果差。本文提出了高区别的频率特征 - 对应于频谱中的最大幅度的频率。我们使用了与数学形态学方法优化的R-R间隔检测方法,并与小波变换方法进行了分析。根据两个特征 - 频谱中的最大幅度和R-R间隔不规则,我们可以通过决策树分类算法识别心电图信号中的心房颤动信号。实验中使用的数据来自MIT-BIH数据库,可通过网络公开访问和伦理批准和同意。基于时域和频域特征的输入,我们使用由分类和回归树(推车)算法生成的决策树分类Sinus Rhythm信号和AF信号。从混乱的矩阵,我们得到的准确性为98.9%,敏感性为97.93%,特异性为99.63%。实验结果可以证明频谱中最大振幅的有效性以及应用该频域特征的检测方法的实用性和精度。通过检测方法,我们获得了分类窦性心律信号和心房颤动信号的良好准确性。与其他研究相比,我们的方法的敏感性和特异性非常好。

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