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CoughGAN: Generating Synthetic Coughs that Improve Respiratory Disease Classification*

机译:CoughGAN:产生综合性咳嗽,改善呼吸道疾病分类*

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Despite the prevalence of respiratory diseases, their diagnosis by clinicians is challenging. Accurately assessing airway sounds requires extensive clinical training and equipment that may not be easily available. Current methods that automate this diagnosis are hindered by their use of features that require pulmonary function tests. We leverage the audio characteristics of coughs to create classifiers that can distinguish common respiratory diseases in adults. Moreover, we build on recent advances in generative adversarial networks to augment our dataset with cleverly engineered synthetic cough samples for each class of major respiratory disease, to balance and increase our dataset size. We experimented on cough samples collected with a smartphone from 45 subjects in a clinic. Our CoughGAN-improved Support Vector Machine and Random Forest models show up to 76% test accuracy and 83% F1 score in classifying subjects’ conditions between healthy and three major respiratory diseases. Adding our synthetic coughs improves the performance we can obtain from a relatively small unbalanced healthcare dataset by boosting the accuracy over 30%. Our data augmentation reduces overfitting and discourages the prediction of a single, dominant class. These results highlight the feasibility of automatic, cough-based respiratory disease diagnosis using smartphones or wearables in the wild.
机译:尽管呼吸系统疾病的患病率,但临床医生的诊断是挑战性的。准确评估气道的声音需要广泛的临床训练和设备,可能不易使用。通过使用需要肺功能测试的功能来阻碍自动化此诊断的当前方法。我们利用咳嗽的音频特征来创建可以区分成人常见呼吸系统疾病的分类剂。此外,我们建立了最近的生成对策网络的进步,以增加我们的数据集,以增加每类主要呼吸道疾病的巧妙工程合成咳嗽样本,以平衡和增加我们的数据集大小。我们在临床中的45个受试者中使用智能手机收集的咳嗽样本进行了实验。我们的咳嗽改进的支持向量机和随机林模型显示出高达76%的测试精度和83%的F1分数在健康和三种主要呼吸疾病之间分类的受试者的条件。添加我们的合成咳嗽可以通过提高30%以上的精度来提高性能,从相对较小的不平衡医疗保健数据集中获得。我们的数据增强减少了过度装备并阻止预测单个优势课程。这些结果突出了使用智能手机或可穿戴的自动咳嗽的呼吸道疾病诊断的可行性。

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