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Combining a recursive approach via non-negative matrix factorization and Gini index sparsity to improve reliable detection of wheezing sounds

机译:通过非负矩阵分解和基尼指数稀疏性结合递归方法,以提高喘息声音的可靠性检测

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Auscultation constitutes a fast, non-invasive and low-cost tool widely used to diagnose respiratory diseases in most of the health centres. However, the acoustic training and expertise acquired by the physician is still crucial to provide a reliable diagnosis of the status of the lung. Each wrong diagnosis increases the risk to the health of patients and the costs associated with the treatment of the disease detected. A wheezing detection system can be useful to the physician to minimize the subjectivity of the interpretation of the breathing sounds, misdiagnoses due to stress and elucidating complex acoustic scenes (such as louder background noises). Highlight that the presence of wheeze sounds is one of the main indicators of respiratory disorders from airway obstructions. This work presents an expert and intelligent system to detect wheeze sounds based on a recursive algorithm that combines orthogonal non-negative matrix factorization (ONMF) and the sparsity descriptor Gini index. The recursive algorithm is composed of four stages. The first stage is based on ONMF modelling to factorize the spectral bases as dissimilar as possible. The second stage clusters the ONMF bases into two categories: wheezing and normal breath. The third stage proposes a novel stopping criterion that controls the loss of wheezing spectral content at the expense of removing normal breath content in the recursive algorithm. Finally, the fourth stage determines the patient's condition to locate the temporal intervals in which wheeze sounds are active for unhealthy patients. Experimental results report that the proposed method: (i) provides the best detection performance compared to the recent state-of-the-art wheezing detection approaches, achieving the highest robustness in noisy environments; and (ii) reliably distinguishes the patient's condition (healthy/unhealthy). The strengths of the proposed method are the following: (i) its unsupervised nature since it does not depend on any training stage to learn in advanced the sounds of interest (wheezing). This fact could make this method attractive to be used in clinical settings because wheezing sound databases are often unavailable; and (ii) the modelling of the spectral behaviour by means of a common feature, the sparsity, that represents the typically energy distributions shown by most of the wheeze and normal breath sounds. (C) 2020 Elsevier Ltd. All rights reserved.
机译:Auscultation构成了一种快速,无侵入性和低成本的工具,广泛用于诊断大多数健康中心的呼吸系统疾病。然而,医生收购的声学培训和专业知识仍然至关重要,以便提供对肺部地位的可靠诊断。每个错误的诊断增加了患者健康状况的风险以及与检测到疾病的治疗相关的成本。喘息的检测系统可以对医生有用,以最大限度地减少呼吸声的解释的主体性,由于压力和阐明复杂的声学场景(例如越响亮的背景噪声)。突出显示喘息声的存在是气道障碍物呼吸系统障碍的主要指标之一。这项工作提出了一个专家和智能系统,用于基于递归算法来检测喘息声的声音,该递归算法结合正交的非负矩阵分解(ONMF)和稀疏性描述符GINI索引。递归算法由四个阶段组成。第一阶段基于ONMF建模,以将光谱碱作为不可差异。第二阶段将ONMF基础集群分为两类:喘息和正常的呼吸。第三阶段提出了一种新的停止标准,其以牺牲递归算法中的正常呼吸含量的牺牲为代价来控制膨胀光谱含量的损失。最后,第四阶段决定了患者的状态,以定位喘息声音对不健康患者有效的时间间隔。实验结果报告说,该方法:(i)与最近的最先进的喘息的检测方法相比,提供了最佳的检测性能,实现了嘈杂环境中的最高稳健性; (ii)可靠地区分患者的病症(健康/不健康)。所提出的方法的优势如下:(i)其无人监督的性质,因为它不依赖于任何培训阶段,以学习高级感兴趣的声音(喘息)。这一事实可以使这种方法在临床环境中使用这种方法,因为喘息的声音数据库通常不可用; (ii)通过普通特征,稀疏性的光谱行为的建模,其代表大多数喘息和正常呼吸声所示的典型能量分布。 (c)2020 elestvier有限公司保留所有权利。

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