Department of Electrical, Computer, and Biomedical Engineering, Ryerson University, 350 Victoria Street, Toronto, ON M5B 2K3, Canada.
Comput Methods Programs Biomed. 2020 May;188:105304. doi: 10.1016/j.cmpb.2019.105304. Epub 2020 Jan 2.
An efficient and robust electrocardiogram (ECG) denoising technique caters three-fold benefits in the subsequent processing steps: first, it helps improving the accuracy of extracted features. Second, the improved accuracy in the extracted features enhances the performance as well as the reliability of computerised cardiovascular-disease diagnosis systems, and third, it also makes the interpretation task easier for the clinicians. Albeit a number of ECG denoising techniques are proposed in the literature, but most of these techniques suffer from one or more of the following drawbacks: i) model or function dependency, ii) sampling-rate dependency, or iii) high time-complexity.
This paper presents a singular spectrum analysis (SSA)-based ECG denoising technique addressing most of these afore-mentioned shortcomings. First, a trajectory matrix of dimension K × L is formed using the original one-dimensional ECG signal of length N. In SSA operation the parameter L, which is denoted as the window-length, plays a very important role and is related to the sampling frequency of the signal. In this research the value of L is calculated dynamically based on the morphological property of the ECG signal. Then, the matrix is decomposed using singular value decomposition technique, and the principal components (PC) of the original ECG signal are computed. Next, the reconstructed components (RC) are calculated from the PCs, and all the RCs are filtered through Butterworth bandpass and notch filters. An optimum number of filtered RCs are retained based on their significance. Finally, these retained RCs are summed up to obtain the denoised ECG signal.
Evaluation result shows that the proposed technique outperforms state-of-the-art ECG denoising methods; in particular, the mean opinion score of the denoised signal falls under the category 'very good' as per the gold standard subjective measure.
Both the quantitative and qualitative distortion measure metrics show that the proposed ECG denoising technique is robust enough to filter various noises present in the signal without jeopardizing the clinical content. The proposed technique could be adapted for denoising other biomedical signals exhibiting periodic or quasi-periodic nature such as photoplethysmogram and esophageal pressure signal.
高效且稳健的心电图(ECG)去噪技术在后续处理步骤中具有三重优势:首先,它有助于提高提取特征的准确性。其次,提取特征的准确性提高了计算机心血管疾病诊断系统的性能和可靠性,第三,它也使临床医生的解释任务变得更加容易。尽管文献中提出了许多 ECG 去噪技术,但这些技术大多存在以下一种或多种缺陷:i)模型或函数依赖性,ii)采样率依赖性,或 iii)高时间复杂性。
本文提出了一种基于奇异谱分析(SSA)的 ECG 去噪技术,该技术解决了上述大部分缺点。首先,使用原始一维 ECG 信号长度为 N 形成维度为 K×L 的轨迹矩阵。在 SSA 操作中,参数 L(表示窗口长度)起着非常重要的作用,并且与信号的采样频率有关。在这项研究中,根据 ECG 信号的形态特性动态计算 L 的值。然后,使用奇异值分解技术对矩阵进行分解,并计算原始 ECG 信号的主成分(PC)。接下来,从 PC 计算重构分量(RC),并通过巴特沃斯带通和陷波滤波器对所有 RC 进行滤波。根据其重要性保留最佳数量的滤波 RC。最后,将这些保留的 RC 求和以获得去噪后的 ECG 信号。
评估结果表明,所提出的技术优于最先进的 ECG 去噪方法;特别是,根据黄金标准主观测量,去噪信号的平均意见得分属于“非常好”类别。
定量和定性失真度量指标均表明,所提出的 ECG 去噪技术足够稳健,可以在不损害临床内容的情况下过滤信号中存在的各种噪声。该技术可适用于去噪其他表现出周期性或准周期性的生物医学信号,如光体积描记图和食管压力信号。