Obaidat M S
Department of Electrical Engineering, City University of New York, City College, NY 10031.
J Med Eng Technol. 1993 Nov-Dec;17(6):221-7. doi: 10.3109/03091909309006329.
This paper presents the applications of the spectrogram, Wigner distribution and wavelet transform analysis methods to the phonocardiogram (PCG) signals. A comparison between these three methods has shown the resolution differences between them. It is found that the spectrogram short-time Fourier transform (STFT), cannot detect the four components of the first sound of the PCG signal. Also, the two components of the second sound are inaccurately detected. The Wigner distribution can provide time-frequency characteristics of the PCG signal, but with insufficient diagnostic information: the four components of the first sound, S1, are not accurately detected and the two components of the second sound, S2, seem to be one component. It is found that the wavelet transform is capable of detecting the two components, the aortic valve component A2 and pulmonary valve component P2, of the second sound S2 of a normal PCG signal. These components are not detectable using the spectrogram or the Wigner distribution. However, the standard Fourier transform can display these two components in frequency but not the time delay between them. Furthermore, the wavelet transform provides more features and characteristics of the PCG signals that will help physicians to obtain qualitative and quantitative measurements of the time-frequency characteristics.
本文介绍了频谱图、维格纳分布和小波变换分析方法在心音图(PCG)信号中的应用。这三种方法之间的比较显示了它们之间的分辨率差异。研究发现,频谱图短时傅里叶变换(STFT)无法检测到PCG信号第一心音的四个成分。此外,第二心音的两个成分检测不准确。维格纳分布可以提供PCG信号的时频特征,但诊断信息不足:第一心音S1的四个成分检测不准确,第二心音S2的两个成分似乎是一个成分。研究发现,小波变换能够检测正常PCG信号第二心音S2的两个成分,即主动脉瓣成分A2和肺动脉瓣成分P2。使用频谱图或维格纳分布无法检测到这些成分。然而,标准傅里叶变换可以在频率上显示这两个成分,但无法显示它们之间的时间延迟。此外,小波变换提供了更多PCG信号的特征,这将有助于医生获得时频特征的定性和定量测量。