首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Acoustic thoracic image of crackle sounds using linear and nonlinear processing techniques.
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Acoustic thoracic image of crackle sounds using linear and nonlinear processing techniques.

机译:使用线性和非线性处理技术的crack啪声的胸腔图像。

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摘要

In this study, a novel approach is proposed, the imaging of crackle sounds distribution on the thorax based on processing techniques that could contend with the detection and count of crackles; hence, the normalized fractal dimension (NFD), the univariate AR modeling combined with a supervised neural network (UAR-SNN), and the time-variant autoregressive (TVAR) model were assessed. The proposed processing schemes were tested inserting simulated crackles in normal lung sounds acquired by a multichannel system on the posterior thoracic surface. In order to evaluate the robustness of the processing schemes, different scenarios were created by manipulating the number of crackles, the type of crackles, the spatial distribution, and the signal to noise ratio (SNR) at different pulmonary regions. The results indicate that TVAR scheme showed the best performance, compared with NFD and UAR-SNN schemes, for detecting and counting simulated crackles with an average specificity very close to 100%, and average sensitivity of 98 +/- 7.5% even with overlapped crackles and with SNR corresponding to a scaling factor as low as 1.5. Finally, the performance of the TVAR scheme was tested against a human expert using simulated and real acoustic information. We conclude that a confident image of crackle sounds distribution by crackles counting using TVAR on the thoracic surface is thoroughly possible. The crackles imaging might represent an aid to the clinical evaluation of pulmonary diseases that produce this sort of adventitious discontinuous lung sounds.
机译:在这项研究中,提出了一种新的方法,即基于可以与裂纹的检测和计数相抗衡的处理技术,对胸部的裂纹声音分布进行成像。因此,评估了归一化分形维数(NFD),与监督神经网络(UAR-SNN)相结合的单变量AR建模以及时变自回归(TVAR)模型。对拟议的处理方案进行了测试,将模拟的裂纹插入到由后声道多声道系统采集的正常肺音中。为了评估处理方案的鲁棒性,通过操纵裂纹的数量,裂纹的类型,空间分布以及不同肺区域的信噪比(SNR),创建了不同的方案。结果表明,与NFD和UAR-SNN方案相比,TVAR方案表现出最好的性能,可检测和计数模拟裂纹,平均特异性非常接近100%,即使裂纹重叠也平均灵敏度为98 +/- 7.5% SNR对应的比例因子低至1.5。最后,TVAR方案的性能是通过模拟和真实声学信息针对人类专家进行测试的。我们得出的结论是,通过在胸腔表面使用TVAR计数裂纹来确定裂纹声音分布的可信图像是完全可能的。爆裂声成像可能有助于对产生这种不定的不连续肺音的肺部疾病进行临床评估。

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