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Detection of Atrial Flutter using PRSA

机译:使用PRSA检测房颤

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摘要

Automatic detection of different cardiac abnormalities is an emerging field of study in assistive diagnosis technology for cardiac diseases. A study on the feasibility of automatic detection of Atrial Flutter (AFL) based on time and frequency domain features has been presented in this paper to prevent the serious heart failure by detecting it at early stage. The proposed algorithm is developed based on feature subsets of a set of statistical time-frequency-domain parameters by using phase rectified signal average (PRSA) method. Classification of the abnormality using the derived features has been performed with the help of two class clustering method by Support Vector Machine (SVM). This classifier is tested on 382 and 587 numbers of AFL and normal cardiac cycles respectively taken from MIT-BIH Arrhythmia database. Satisfactory result is obtained as the 96% sensitivity and 98%specificity is observed.
机译:自动检测不同的心脏异常是心脏疾病辅助诊断技术研究的一个新兴领域。本文提出了基于时域和频域特征自动检测心房颤动(AFL)的可行性的研究,以通过早期检测来预防严重的心力衰竭。提出的算法是通过使用相位校正信号平均值(PRSA)方法基于一组统计时频域参数的特征子集开发的。支持向量机(SVM)借助两类聚类方法,使用派生的特征对异常进行了分类。该分类器分别在MIT-BIH心律失常数据库中对382和587个AFL和正常心动周期进行了测试。由于观察到96%的灵敏度和98%的特异性,获得了令人满意的结果。

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