Hadjileontiadis L J, Panas S M
Department of EE and CE, Aristotle University of Thessaloniki, Greece.
IEEE Trans Biomed Eng. 1997 Dec;44(12):1269-81. doi: 10.1109/10.649999.
The separation of pathological discontinuous adventitious sounds (DAS) from vesicular sounds (VS) is of great importance to the analysis of lung sounds, since DAS are related to certain pulmonary pathologies. An automated way of revealing the diagnostic character of DAS by isolating them from VS, based on their nonstationarity, is presented in this paper. The proposed algorithm combines multiresolution analysis with hard thresholding in order to compose a wavelet transform-based stationary-nonstationary filter (WTST-NST). Applying the WTST-NST filter to fine/coarse crackles and squawks, selected from three lung sound databases, the coherent structure of DAS is revealed and they are separated from VS. When compared to other separation tools, the WTST-NST filter performed more accurately, objectively, and with lower computational cost. Due to its simple implementation it can easily be used in clinical medicine.
病理性间断附加音(DAS)与肺泡呼吸音(VS)的分离对于肺音分析非常重要,因为DAS与某些肺部疾病相关。本文提出了一种基于DAS的非平稳性,通过将其与VS分离来揭示其诊断特征的自动化方法。所提出的算法将多分辨率分析与硬阈值处理相结合,以构成基于小波变换的平稳-非平稳滤波器(WTST-NST)。将WTST-NST滤波器应用于从三个肺音数据库中选取的细/粗湿啰音和哮鸣音,揭示了DAS的相干结构,并将它们与VS分离。与其他分离工具相比,WTST-NST滤波器的性能更准确、客观,且计算成本更低。由于其实现简单,它可以很容易地应用于临床医学。