COVID-19 respiratory sound analysis and classification using audio textures

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC Frontiers in signal processing Pub Date : 2022-10-05 DOI:10.3389/frsip.2022.986293
Leticia Silva, Carlos Valadão, L. Lampier, D. Delisle-Rodríguez, Eliete Caldeira, T. Bastos-Filho, S. Krishnan
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Abstract

Since the COVID-19 outbreak, a major scientific effort has been made by researchers and companies worldwide to develop a digital diagnostic tool to screen this disease through some biomedical signals, such as cough, and speech. Joint time–frequency feature extraction techniques and machine learning (ML)-based models have been widely explored in respiratory diseases such as influenza, pertussis, and COVID-19 to find biomarkers from human respiratory system-generated acoustic sounds. In recent years, a variety of techniques for discriminating textures and computationally efficient local texture descriptors have been introduced, such as local binary patterns and local ternary patterns, among others. In this work, we propose an audio texture analysis of sounds emitted by subjects in suspicion of COVID-19 infection using time–frequency spectrograms. This approach of the feature extraction method has not been widely used for biomedical sounds, particularly for COVID-19 or respiratory diseases. We hypothesize that this textural sound analysis based on local binary patterns and local ternary patterns enables us to obtain a better classification model by discriminating both people with COVID-19 and healthy subjects. Cough, speech, and breath sounds from the INTERSPEECH 2021 ComParE and Cambridge KDD databases have been processed and analyzed to evaluate our proposed feature extraction method with ML techniques in order to distinguish between positive or negative for COVID-19 sounds. The results have been evaluated in terms of an unweighted average recall (UAR). The results show that the proposed method has performed well for cough, speech, and breath sound classification, with a UAR up to 100.00%, 60.67%, and 95.00%, respectively, to infer COVID-19 infection, which serves as an effective tool to perform a preliminary screening of COVID-19.
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使用音频纹理分析和分类COVID-19呼吸声音
自2019冠状病毒病爆发以来,世界各地的研究人员和公司做出了重大的科学努力,开发一种数字诊断工具,通过咳嗽和语言等一些生物医学信号来筛查这种疾病。联合时频特征提取技术和基于机器学习(ML)的模型在流感、百日咳和COVID-19等呼吸系统疾病中得到了广泛的探索,以从人类呼吸系统产生的声音中寻找生物标志物。近年来,各种纹理识别技术和计算效率高的局部纹理描述符被引入,如局部二进制模式和局部三元模式等。在这项工作中,我们提出使用时频频谱对疑似COVID-19感染的受试者发出的声音进行音频纹理分析。这种方法的特征提取方法尚未广泛应用于生物医学声音,特别是COVID-19或呼吸系统疾病。我们假设这种基于局部二元模式和局部三元模式的纹理声音分析可以使我们通过区分COVID-19患者和健康受试者获得更好的分类模型。对来自INTERSPEECH 2021 ComParE和Cambridge KDD数据库的咳嗽、语音和呼吸音进行了处理和分析,以评估我们提出的基于ML技术的特征提取方法,以区分COVID-19声音的阳性或阴性。这些结果是根据未加权平均召回(UAR)进行评估的。结果表明,该方法对咳嗽声、说话声和呼吸声的分类效果良好,UAR分别达到100.00%、60.67%和95.00%,可作为初步筛查COVID-19的有效工具。
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