نویسندگان | H. D. Hesar-M. Mohebbi |
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نشریه | IEEE journal of biomedical and health informatics |
ارائه به نام دانشگاه | دانشگاه صنعتی خواجه نصیرالدین طوسی |
شماره صفحات | 635-644 |
شماره سریال | 27333615 |
شماره مجلد | 21 |
نوع مقاله | Full Paper |
تاریخ انتشار | 2016-06-20 |
رتبه نشریه | ISI |
نوع نشریه | چاپی |
کشور محل چاپ | ایالات متحدهٔ امریکا |
چکیده مقاله
In this paper, a model-based Bayesian filtering framework called the “marginalized particle-extended Kalman filter (MP-EKF) algorithm” is proposed for electrocardiogram (ECG) denoising. This algorithm does not have the extended Kalman filter (EKF) shortcoming in handling non-Gaussian nonstationary situations because of its nonlinear framework. In addition, it has less computational complexity compared with particle filter. This filter improves ECG denoising performance by implementing marginalized particle filter framework while reducing its computational complexity using EKF framework. An automatic particle weighting strategy is also proposed here that controls the reliance of our framework to the acquired measurements. We evaluated the proposed filter on several normal ECGs selected from MIT-BIH normal sinus rhythm database. To do so, artificial white Gaussian and colored noises as well as nonstationary real muscle artifact (MA) noise over a range of low SNRs from 10 to -5 dB were added to these normal ECG segments. The benchmark methods were the EKF and extended Kalman smoother (EKS) algorithms which are the first model-based Bayesian algorithms introduced in the field of ECG denoising. From SNR viewpoint, the experiments showed that in the presence of Gaussian white noise, the proposed framework outperforms the EKF and EKS algorithms in lower input SNRs where the measurements and state model are not reliable. Owing to its nonlinear framework and particle weighting strategy, the proposed algorithm attained better results at all input SNRs in non-Gaussian nonstationary situations (such as presence of pink noise, brown noise, and real MA). In addition, the impact of the proposed filtering method on the distortion of diagnostic features of the ECG was investigated and compared with EKF/EKS methods using an ECG diagnostic distortion measure called the “Multi-Scale Entropy Based Weighted Distortion Measure” or MSEWPRD. The results revealed that our proposed algorithm had the lowest MSEPWRD for all noise types at low input SNRs. Therefore, the morphology and diagnostic information of ECG signals were much better conserved compared with EKF/EKS frameworks, especially in non-Gaussian nonstationary situations.