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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Automatic Croup Diagnosis Using Cough Sound Recognition
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Automatic Croup Diagnosis Using Cough Sound Recognition

机译:使用咳嗽声音识别自动诊断臀部病

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Objective: Croup, a respiratory tract infection common in children, causes an inflammation of the upper airway restricting normal breathing and producing cough sounds typically described as seallike "barking cough." Physicians use the existence of barking cough as the defining characteristic of croup. This paper aims to develop automated cough sound analysis methods to objectively diagnose croup. Methods: In automating croup diagnosis, we propose the use of mathematical features inspired by the human auditory system. In particular, we utilize the cochleagram for feature extraction, a time-frequency representation where the frequency components are based on the frequency selectivity property of the human cochlea. Speech and cough share some similarities in the generation process and physiological wetware used. As such, we also propose the use of mel-frequency cepstral coefficients which has been shown to capture the relevant aspects of the short-term power spectrum of speech signals. Feature combination and backward sequential feature selection are also experimented with. Experimentation is performed on cough sound recordings from patients presenting various clinically diagnosed respiratory tract infections divided into croup and non-croup. The dataset is divided into training and test sets of 364 and 115 patients, respectively, with automatically segmented cough sound segments. Results: Croup and non-croup patient classification on the test dataset with the proposed methods achieve a sensitivity and specificity of 92.31% and 85.29%, respectively. Conclusion: Experimental results show the significant improvement in automatic croup diagnosis against earlier methods. Significance: This paper has the potential to automate croup diagnosis based solely on cough sound analysis.
机译:目的:人群呼吸道感染是儿童常见的呼吸道感染,会导致上呼吸道发炎,从而限制正常呼吸并产生咳嗽声,通常被称为海豹状“吠叫咳嗽”。 。本文旨在开发自动的咳嗽声音分析方法,以客观地诊断流行性腮腺炎。方法:在自动诊断臀部疾病中,我们建议使用受人类听觉系统启发的数学特征。特别是,我们利用耳蜗图进行特征提取,这是一种时频表示,其中频率分量基于人类耳蜗的频率选择性特性。言语和咳嗽在产生过程和所使用的生理湿器方面有一些相似之处。因此,我们还建议使用梅尔频率倒谱系数,该系数已被证明可以捕获语音信号短期功率谱的相关方面。还尝试了特征组合和后向顺序特征选择。对来自表现出各种临床诊断的呼吸道感染的患者的咳嗽声音录音进行了实验,这些感染分为臀部病和非臀部病。数据集分为364个和115个患者的训练集和测试集,分别具有自动分段的咳嗽声片段。结果:使用所提出的方法在测试数据集上对人群和非人群进行分类,敏感性和特异性分别达到92.31%和85.29%。结论:实验结果表明,与早期方法相比,自动组群诊断有显着改善。启示:本文有可能仅基于咳嗽声分析就可自动诊断流行性腮腺炎。

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