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Classification of Arrhythmia using Time-domain Features and Support Vector Machine

机译:使用时域特征和支持向量机进行心律失常的分类

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Cardiac arrhythmia is a heart condition where the heart does not beat in a regular way. This is one of those diseases which are easy to diagnose. A doctor can detect arrhythmia by just looking at the Electrocardiogram (ECG) of the patient because it has many visual clues, which a doctor is trained to identify. All these visual clues are the time-domain feature. Hence, in this paper, an algorithm is presented which uses only time-domain features to classify between normal sinus rhythm and arrhythmia using Support Vector Machine (SVM). The paper also compares the classification results when the frequency domain features are used along with the time-domain features. The frequency-domain features increase the computational complexity of the algorithm and make it harder to create a portable and reliable hardware device for the realtime detection and classification of arrhythmia. The proposed algorithm can be incorporated in a portable, lightweight and robust device which can detect arrhythmia in real-time. The accuracy of the algorithm is 99.36% on MIT-BIH arrhythmia database, which in comparison to other algorithm is an improvement.
机译:心脏心律失常是心脏状况,心脏不会以常规方式击败。这是那些易于诊断的疾病之一。医生可以通过看着患者的心电图(ECG)来检测心律失常,因为它有许多视觉线索,医生培训才能识别。所有这些视觉线索都是时域功能。因此,本文介绍了一种算法,其仅使用时域特征来使用支持向量机(SVM)在正常窦性节律和心律失常之间进行分类。该文件还会在与时域特征一起使用频域特征时比较分类结果。频域特征增加了算法的计算复杂度,并使创建便携式可靠的硬件设备更难以进行实时检测和心律失常分类。所提出的算法可以包含在便携式,轻质和鲁棒设备中,该装置可以实时检测心律失常。在MIT-BIH心律失常数据库上的算法的准确性为99.36%,与其他算法相比,该算法与其他算法相比是一种改进。

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