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Deeplung Auscultation Using Acoustic Biomarkers for Abnormal Respiratory Sound Event Detection

机译:使用声学生物标志物进行异常呼吸声事件检测的Deeplung听诊

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Lung Auscultation is a non-invasive process of distinguishing normal respiratory sounds from abnormal ones by analyzing the airflow along the respiratory tract. With developments in the Deep Learning (DL) techniques and wider access to anonymized medical data, automatic detection of specific sounds such as crackles and wheezes have been gaining popularity. In this paper, we propose to use two sets of diversified acoustic biomarkers extracted using Discrete Wavelet Transform (DWT) and deep encoded features from the intermediate layer of a pre-trained Audio Event Detection (AED) model trained using sounds from daily activities. First set of biomarkers highlight the time frequency localization characteristics obtained from DWT coefficients. However, the second set of deep encoded biomarkers captures a generalized reliable representation, and thus indemnifies the scarcity of training samples and the class imbalance in dataset. The model trained using these features achieves a 15.05% increase in terms of the specificity over the baseline model that uses spectrogram features. Moreover, ensemble of DWT features and deep encoded feature based models show absolute improvements of 8.32%, 6.66% and 7.40% in terms of sensitivity, specificity and ICBHI-score, respectively, and clearly outperforms the state-of-the-art with a significant margin.
机译:肺听诊是通过沿着呼吸道分析气流来区分正常呼吸声学的非侵入过程。随着深度学习(DL)技术的发展和更广泛地访问匿名的医疗数据,自动检测诸如噼啪声和喘息的特定声音已经获得了普及。在本文中,我们建议使用来自使用从日常活动的声音训练的预训练的音频事件检测(AED)模型的中间层来利用两组多样化的声学生物标志物。第一组生物标志物突出显示从DWT系数获得的时间频率定位特性。然而,第二组深度编码的生物标志物捕获了广义可靠的表示,因此赔偿了训练样本的稀缺性和数据集中的类别不平衡。使用这些特征培训的模型在使用频谱图特征的基线模型上的特异性方面达到了15.05%。此外,在敏感度,特异性和ICBHI评分的情况下,DWT特征和深度编码特征的集合显示出绝对改善8.32%,6.66%和7.40%,并显然优于现有技术重大边际。

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