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基于约束低秩非负矩阵分解的单声和多声喘鸣分类。

Monophonic and Polyphonic Wheezing Classification Based on Constrained Low-Rank Non-Negative Matrix Factorization.

机构信息

Department of Telecommunication Engineering, University of Jaen, Campus Cientifico-Tecnologico de Linares, Avda. de la Universidad, s/n, Linares, 23700 Jaen, Spain.

Pneumology Clinical Management Unit of the University Hospital of Jaen, Av. del Ejercito Espanol, 10, 23007 Jaen, Spain.

出版信息

Sensors (Basel). 2021 Feb 28;21(5):1661. doi: 10.3390/s21051661.

Abstract

The appearance of wheezing sounds is widely considered by physicians as a key indicator to detect early pulmonary disorders or even the severity associated with respiratory diseases, as occurs in the case of asthma and chronic obstructive pulmonary disease. From a physician's point of view, monophonic and polyphonic wheezing classification is still a challenging topic in biomedical signal processing since both types of wheezes are sinusoidal in nature. Unlike most of the classification algorithms in which interference caused by normal respiratory sounds is not addressed in depth, our first contribution proposes a novel Constrained Low-Rank Non-negative Matrix Factorization (CL-RNMF) approach, never applied to classification of wheezing as far as the authors' knowledge, which incorporates several constraints (sparseness and smoothness) and a low-rank configuration to extract the wheezing spectral content, minimizing the acoustic interference from normal respiratory sounds. The second contribution automatically analyzes the harmonic structure of the energy distribution associated with the estimated wheezing spectrogram to classify the type of wheezing. Experimental results report that: (i) the proposed method outperforms the most recent and relevant state-of-the-art wheezing classification method by approximately 8% in accuracy; (ii) unlike state-of-the-art methods based on classifiers, the proposed method uses an unsupervised approach that does not require any training.

摘要

喘鸣声音的出现被医生广泛认为是检测早期肺部疾病甚至与呼吸道疾病相关严重程度的关键指标,如哮喘和慢性阻塞性肺疾病。从医生的角度来看,单声道和多声道喘鸣分类仍然是生物医学信号处理中的一个具有挑战性的课题,因为这两种类型的喘鸣声本质上都是正弦波。与大多数分类算法不同,这些算法没有深入解决正常呼吸声的干扰问题,我们的第一个贡献提出了一种新颖的约束低秩非负矩阵分解(CL-RNMF)方法,据作者所知,该方法从未应用于喘鸣分类,该方法结合了几种约束(稀疏性和平滑性)和低秩结构来提取喘鸣的光谱内容,最大限度地减少正常呼吸声的声学干扰。第二个贡献自动分析与估计喘鸣声谱图相关的能量分布的谐波结构,以对喘鸣类型进行分类。实验结果表明:(i)与最近和最相关的喘鸣分类方法相比,所提出的方法在准确性方面提高了约 8%;(ii)与基于分类器的最新方法不同,所提出的方法采用了一种无需任何训练的无监督方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f7c7/7957792/75c54586fb34/sensors-21-01661-g001.jpg

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