Hadjileontiadis L J, Panas S M
Faculty of Technology, Department of Electrical and Computer Engineering, Aristotle University of Thessaloniki, Greece.
Int J Med Inform. 1998 Oct-Dec;52(1-3):183-90. doi: 10.1016/s1386-5056(98)00137-3.
Heart sounds produce an incessant noise during lung sounds recordings. This noise severely contaminates the breath sounds signal and interferes in the analysis of lung sounds. In this paper, the use of a wavelet transform domain filtering technique as an adaptive de-noising tool, implemented in lung sounds analysis, is presented. The multiresolution representations of the signal, produced by wavelet transform, are used for signal structure extraction. In addition, the use of hard thresholding in the wavelet transform domain results in a separation of the nonstationary part of the input signal (heart sounds) from the stationary one (lung sounds). Thus, the location of the heart sound noise (1st and 2nd heart sound peaks) is automatically detected, without requiring any noise reference signal. Experimental results have shown that the implementation of this wavelet-based filter in lung sound analysis results in an efficient reduction of the superimposed heart sound noise, producing an almost noise-free output signal. Due to its simplicity and its fast implementation the method can easily be used in clinical medicine.
心音在肺音记录过程中会产生持续的噪声。这种噪声严重污染呼吸音信号,并干扰肺音分析。本文介绍了在肺音分析中使用小波变换域滤波技术作为自适应去噪工具。小波变换产生的信号多分辨率表示用于信号结构提取。此外,在小波变换域中使用硬阈值处理可将输入信号的非平稳部分(心音)与平稳部分(肺音)分离。因此,无需任何噪声参考信号即可自动检测心音噪声的位置(第一和第二心音峰值)。实验结果表明,在肺音分析中实现这种基于小波的滤波器可有效降低叠加的心音噪声,产生几乎无噪声的输出信号。由于其简单性和快速实现,该方法可轻松应用于临床医学。