Autoregressive modeling of lung sounds using higher-order statistics: estimation of source and transmission

L. Hadjileontiadis, S. Panas
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引用次数: 14

Abstract

The use of higher-order statistics in an autoregressive modeling of lung sounds is presented resulting in a characterization of their source and transmission. The lung sound source in the airway is estimated using the prediction error of an all-pole filter based on higher-order statistics (AR-HOS), while the acoustic transmission through the lung parenchyma and chest wall is modeled by the transfer function of the same AR-HOS filter. The parametric bispectrum, using the estimated a/sub i/ coefficients of the AR-HOS model, is also calculated to elucidate the frequency characteristics of the modeled system. The implementation of this approach on pre-classified lung sound segments in known disease conditions, selected from teaching tapes, was examined. Experiments have shown that a reliable and consistent with current knowledge estimation of lung sound characteristics can be achieved using this method, even in the presence of additive Gaussian noise.
使用高阶统计量的肺音自回归建模:源和传播的估计
在肺音的自回归建模中使用高阶统计量,从而对其来源和传播进行表征。利用基于高阶统计量的全极滤波器(AR-HOS)的预测误差对气道内肺声源进行估计,同时利用同一AR-HOS滤波器的传递函数对肺实质和胸壁的声传输进行建模。利用AR-HOS模型估计的a/sub i/系数,计算了参数双谱,以阐明模型系统的频率特性。研究了这种方法在已知疾病条件下从教学磁带中选择的预分类肺音段的实施情况。实验表明,即使在加性高斯噪声存在的情况下,使用该方法也可以获得可靠且与现有知识一致的肺声特征估计。
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