An algorithm for automatic segmentation of heart sound signal acquired using seismocardiography

P. Jain, A. Tiwari
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引用次数: 3

Abstract

Automatic diagnosis of the heart valve diseases generally requires the segmentation of heart sound signal. Henceforth, in this paper a novel algorithm for automatic segmentation of the heart sound signal is proposed. The heart sound signal is acquired using seismocardiography (SCG), which uses a sensor called accelerometer. The accelerometer is of small size and low weight and thus convenient to wear. The proposed algorithm performs in three steps. First, the signal is filtered using the developed denoising algorithm based on discrete wavelet transform. The computational complexity of this algorithm is reduced by processing only two levels, which are expected to have heart sound signal, and other levels are discarded. To improve the performance of denoising, an adaptive threshold is obtained for both the levels separately, and applied. Then, the denoised signal is obtained by reconstructing the thresholded coefficients. In the second step, peaks are detected in the denoised signal using an adaptive threshold, obtained using Otsu's method. Then, false detected peaks and noise contaminated parts of the signal are identified and discarded from further analyses. In the third step, the heart sound components are identified as S1, and S2 based on the energy of the particular component and segmentation is performed. The results of denoising, show that the developed algorithm outperforms the existing method. Further, the segmentation results show that the developed algorithm is able to identify the heart sound components, accurately, even in the presence of noise.
一种基于地震心动图的心音信号自动分割算法
心脏瓣膜疾病的自动诊断一般需要对心音信号进行分割。为此,本文提出了一种新的心音信号自动分割算法。心音信号是通过地震心动图(SCG)获得的,它使用一种称为加速度计的传感器。该加速度计体积小,重量轻,便于佩戴。该算法分三步执行。首先,采用基于离散小波变换的去噪算法对信号进行滤波。该算法只处理预期有心音信号的两个电平,其他电平被丢弃,从而降低了算法的计算复杂度。为了提高去噪的性能,分别对两个层次获得自适应阈值,并加以应用。然后,通过重构阈值系数得到去噪信号。第二步,使用Otsu方法得到的自适应阈值检测去噪信号中的峰值。然后,从进一步的分析中识别出假检测峰和受噪声污染的信号部分并丢弃。第三步,将心音分量识别为S1,根据特定分量的能量将其识别为S2,并进行分割。结果表明,该算法的降噪效果优于现有方法。此外,分割结果表明,即使在存在噪声的情况下,所开发的算法也能够准确地识别出心音成分。
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