Prabhakararao Eedara, Manikandan M Sabarimalai
School of Electrical Sciences , Indian Institute of Technology Bhubaneswar , Bhubaneswar, Odisha 751013 , India.
Healthc Technol Lett. 2016 Jul 29;3(3):239-246. doi: 10.1049/htl.2016.0010. eCollection 2016 Sep.
In this Letter, the authors propose an efficient and robust method for automatically determining the VT and VF events in the electrocardiogram (ECG) signal. The proposed method consists of: (i) discrete cosine transform (DCT)-based noise suppression; (ii) addition of bipolar sequence of amplitudes with alternating polarity; (iii) zero-crossing rate (ZCR) estimation-based VTVF detection; and (iv) peak-to-peak interval (PPI) feature based VT/VF discrimination. The proposed method is evaluated using 18,000 episodes of different ECG arrhythmias taken from 6 PhysioNet databases. The method achieves an average sensitivity (Se) of 99.61%, specificity (Sp) of 99.96%, and overall accuracy (OA) of 99.92% in detecting VTVF and non-VTVF episodes by using a ZCR feature. Results show that the method achieves a Se of 100%, Sp of 99.70% and OA of 99.85% for discriminating VT from VF episodes using PPI features extracted from the processed signal. The robustness of the method is tested using different kinds of ECG beats and various types of noises including the baseline wanders, powerline interference and muscle artefacts. Results demonstrate that the proposed method with the ZCR, PPI features can achieve significantly better detection rates as compared with the existing methods.
在这封信中,作者提出了一种高效且稳健的方法,用于自动确定心电图(ECG)信号中的室性心动过速(VT)和心室颤动(VF)事件。所提出的方法包括:(i)基于离散余弦变换(DCT)的噪声抑制;(ii)添加具有交替极性的双极性幅度序列;(iii)基于过零率(ZCR)估计的VT/VF检测;以及(iv)基于峰峰值间隔(PPI)特征的VT/VF鉴别。使用从6个PhysioNet数据库获取的18,000个不同心电图心律失常发作对所提出的方法进行评估。通过使用ZCR特征,该方法在检测VT/VF和非VT/VF发作时,平均灵敏度(Se)为99.61%,特异性(Sp)为99.96%,总体准确率(OA)为99.92%。结果表明,对于使用从处理后的信号中提取的PPI特征来区分VT和VF发作,该方法的Se为100%,Sp为99.70%,OA为99.85%。使用不同类型的心电图搏动以及包括基线漂移、电力线干扰和肌肉伪影在内的各种类型噪声对该方法的稳健性进行测试。结果表明,与现有方法相比,具有ZCR、PPI特征的所提出方法能够实现显著更高的检测率。