Acoustic phenomena observed in lung auscultation

被引:0
|
作者
V. I. Korenbaum
A. A. Tagil’tsev
Yu. V. Kulakov
机构
[1] Far-East State University,Institute of Physics and Information Technologies
来源
Acoustical Physics | 2003年 / 49卷
关键词
Respiration; Chest Wall; Acoustics; Surface Mass; Acoustic Model;
D O I
暂无
中图分类号
学科分类号
摘要
The results of studying respiratory noise at the chest wall by the method of acoustic intensimetry reveal the presence of frequency components with different signs of the real and imaginary parts of the cross spectrum obtained for the responses of the receivers of vibratory displacement and dynamic force. An acoustic model is proposed to explain this difference on the basis of the hypothesis that the contributions of both air-borne and structure-borne sound are significant in the transmission of respiratory noise to the chest wall. It is shown that, when considered as an acoustic channel for the basic respiratory noise, the respiratory system of an adult subject has two resonances: in the frequency bands within 110–150 and 215–350 Hz. For adults in normal condition, the air-borne component of the basic respiratory noise predominates in the region 100–300 Hz in the lower parts of lungs. At forced respiration of healthy adults, the sounds of vesicular respiration are generated by the turbulent air flow in the 11th-through 13th-generation bronchi, and the transmission of these sounds to the chest wall in normal condition is mainly through air and is determined by the resonance of the vibratory system formed by the elasticity of air in the respiratory ducts of lungs and by the surface mass density of the chest wall. It is demonstrated that the distance from the chest wall to the sources of structure-borne additional respiratory noise, namely, wheezing with frequencies above 300 Hz, can be estimated numerically from the ratio between the real and imaginary parts of the cross spectrum on the assumption that the source is of the quadrupole type.
引用
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页码:316 / 327
页数:11
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