Satija Udit, Ramkumar Barathram, Sabarimalai Manikandan M
School of Electrical Sciences, Indian Institute of Technology Bhubaneswar, Bhubaneswar, Odisha 751013, India.
Healthc Technol Lett. 2017 Feb 17;4(1):2-12. doi: 10.1049/htl.2016.0077. eCollection 2017 Feb.
Automatic electrocardiogram (ECG) signal enhancement has become a crucial pre-processing step in most ECG signal analysis applications. In this Letter, the authors propose an automated noise-aware dictionary learning-based generalised ECG signal enhancement framework which can automatically learn the dictionaries based on the ECG noise type for effective representation of ECG signal and noises, and can reduce the computational load of sparse representation-based ECG enhancement system. The proposed framework consists of noise detection and identification, noise-aware dictionary learning, sparse signal decomposition and reconstruction. The noise detection and identification is performed based on the moving average filter, first-order difference, and temporal features such as number of turning points, maximum absolute amplitude, zerocrossings, and autocorrelation features. The representation dictionary is learned based on the type of noise identified in the previous stage. The proposed framework is evaluated using noise-free and noisy ECG signals. Results demonstrate that the proposed method can significantly reduce computational load as compared with conventional dictionary learning-based ECG denoising approaches. Further, comparative results show that the method outperforms existing methods in automatically removing noises such as baseline wanders, power-line interference, muscle artefacts and their combinations without distorting the morphological content of local waves of ECG signal.
自动心电图(ECG)信号增强已成为大多数心电图信号分析应用中的关键预处理步骤。在本信函中,作者提出了一种基于自动噪声感知字典学习的广义心电图信号增强框架,该框架可以根据心电图噪声类型自动学习字典,以有效表示心电图信号和噪声,并可以降低基于稀疏表示的心电图增强系统的计算负担。所提出的框架由噪声检测与识别、噪声感知字典学习、稀疏信号分解与重构组成。噪声检测与识别基于移动平均滤波器、一阶差分以及诸如转折点数量、最大绝对幅度、过零点和自相关特征等时间特征来执行。表示字典是根据上一阶段识别出的噪声类型来学习的。所提出的框架使用无噪声和有噪声的心电图信号进行评估。结果表明,与传统的基于字典学习的心电图去噪方法相比,所提出的方法可以显著降低计算负担。此外,比较结果表明,该方法在自动去除诸如基线漂移、电力线干扰、肌肉伪迹及其组合等噪声方面优于现有方法,同时不会扭曲心电图信号局部波形的形态内容。