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利用小波高阶谱特征分析喘鸣

Analysis of wheezes using wavelet higher order spectral features.

机构信息

Department of Electrical and Computer Engineering, Aristotle University of Thessaloniki, Thessaloniki 54124, Greece.

出版信息

IEEE Trans Biomed Eng. 2010 Jul;57(7):1596-610. doi: 10.1109/TBME.2010.2041777. Epub 2010 Feb 18.

Abstract

Wheezes are musical breath sounds, which usually imply an existing pulmonary obstruction, such as asthma and chronic obstructive pulmonary disease (COPD). Although many studies have addressed the problem of wheeze detection, a limited number of scientific works has focused in the analysis of wheeze characteristics, and in particular, their time-varying nonlinear characteristics. In this study, an effort is made to reveal and statistically analyze the nonlinear characteristics of wheezes and their evolution over time, as they are reflected in the quadratic phase coupling of their harmonics. To this end, the continuous wavelet transform (CWT) is used in combination with third-order spectra to define the analysis domain, where the nonlinear interactions of the harmonics of wheezes and their time variations are revealed by incorporating instantaneous wavelet bispectrum and bicoherence, which provide with the instantaneous biamplitude and biphase curves. Based on this nonlinear information pool, a set of 23 features is proposed for the nonlinear analysis of wheezes. Two complementary perspectives, i.e., general and detailed, related to average performance and to localities, respectively, were used in the construction of the feature set, in order to embed trends and local behaviors, respectively, seen in the nonlinear interaction of the harmonic elements of wheezes over time. The proposed feature set was evaluated on a dataset of wheezes, acquired from adult patients with diagnosed asthma and COPD from a lung sound database. The statistical evaluation of the feature set revealed discrimination ability between the two pathologies for all data subgroupings. In particular, when the total breathing cycle was examined, all 23 features, but one, showed statistically significant difference between the COPD and asthma pathologies, whereas for the subgroupings of inspiratory and expiratory phases, 18 out of 23 and 22 out of 23 features exhibited discrimination power, respectively. This paves the way for the use of the wavelet higher order spectral features as an input vector to an efficient classifier. Apparently, this would integrate the intrinsic characteristics of wheezes within computerized diagnostic tools toward their more efficient evaluation.

摘要

喘鸣是一种带有音乐性的呼吸音,通常提示存在肺部阻塞,如哮喘和慢性阻塞性肺疾病(COPD)。尽管许多研究都针对喘鸣检测问题进行了探讨,但仅有少数科学研究专注于喘鸣特征的分析,特别是它们随时间变化的非线性特征。在这项研究中,我们努力揭示并从统计学上分析喘鸣及其随时间演变的非线性特征,这些特征反映在其谐波的二次相位耦合中。为此,我们使用连续小波变换(CWT)结合三阶谱来定义分析域,其中喘鸣谐波的非线性相互作用及其随时间的变化通过包含瞬时小波双谱和双相干性来揭示,这提供了瞬时双幅度和双相位曲线。基于这个非线性信息库,我们提出了一组 23 个特征用于喘鸣的非线性分析。分别从整体和局部两个互补角度构建特征集,分别与平均性能和局部有关,以便分别嵌入随时间变化的喘鸣谐波元素非线性相互作用中的趋势和局部行为。所提出的特征集在来自肺音数据库中诊断为哮喘和 COPD 的成人患者的喘鸣数据集上进行了评估。对特征集的统计评估表明,对于所有数据分组,该特征集都能够区分这两种病理。特别是,当检查整个呼吸周期时,除了一个特征之外,所有 23 个特征在 COPD 和哮喘病理之间都显示出统计学上的显著差异,而对于吸气和呼气阶段的分组,23 个特征中有 18 个和 22 个分别表现出区分能力。这为将小波高阶谱特征用作有效分类器的输入向量铺平了道路。显然,这将在计算机化诊断工具中整合喘鸣的固有特征,以实现更有效的评估。

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