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Detecting Respiratory Pathologies Using Convolutional Neural Networks and Variational Autoencoders for Unbalancing Data

机译:使用卷积神经网络和变分自动编码器检测呼吸失衡数据

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摘要

The aim of this paper was the detection of pathologies through respiratory sounds. The ICBHI (International Conference on Biomedical and Health Informatics) Benchmark was used. This dataset is composed of 920 sounds of which 810 are of chronic diseases, 75 of non-chronic diseases and only 35 of healthy individuals. As more than 88% of the samples of the dataset are from the same class (Chronic), the use of a Variational Convolutional Autoencoder was proposed to generate new labeled data and other well known oversampling techniques after determining that the dataset classes are unbalanced. Once the preprocessing step was carried out, a Convolutional Neural Network (CNN) was used to classify the respiratory sounds into healthy, chronic, and non-chronic disease. In addition, we carried out a more challenging classification trying to distinguish between the different types of pathologies or healthy: URTI, COPD, Bronchiectasis, Pneumonia, and Bronchiolitis. We achieved results up to 0.993 F-Score in the three-label classification and 0.990 F-Score in the more challenging six-class classification.
机译:本文的目的是通过呼吸音检测病理。使用了ICBHI(国际生物医学和健康信息学会议)基准。该数据集由920种声音组成,其中810种是慢性病,75种是非慢性病,只有35种健康人。由于超过88%的数据集样本来自同一类别(慢性),因此在确定数据集类别不平衡后,建议使用变分卷积自动编码器来生成新的标记数据和其他众所周知的过采样技术。一旦执行了预处理步骤,就会使用卷积神经网络(CNN)将呼吸音分类为健康,慢性和非慢性疾病。此外,我们进行了更具挑战性的分类,试图区分不同类型的病理或健康类型:URTI,COPD,支气管扩张,肺炎和毛细支气管炎。在三标签分类中,我们获得了高达0.993 F分数的结果,而在更具挑战性的六分类中,我们获得了0.990 F分数的结果。

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