Impact of face coverings on cough measurement characterization

Madison Cohen-McFarlane, P. Xi, Bruce Wallace, J. J. Valdés, R. Goubran, F. Knoefel
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引用次数: 2

Abstract

In light of the current COVID-19 pandemic response, researchers around the world have been evaluating ways to support all aspects of disease identification, monitoring and tracking. The idea of using audio-based processing methods to evaluate cough events, one of the most common symptoms of COVID-19, in terms of their frequency, severity and characterization has become a promising possible solution. In addition to physical distancing measures, the vast majority of the health authority also recommends the adoption of face coverings (i.e. masks) while in the presence of others and covering one’s cough with a bent elbow. The covering of cough events may present an issue when evaluating recordings using pre-existing cough analysis tools. This paper presents a modeling approach used to characterize the effects of both coughing while wearing a mask and coughing into a bent elbow. These two models were then applied to an existing dataset for evaluating the influence of the face coverings on selected data features that have been used for differentiating wet and dry cough types. It was found that one of the features (number of peaks in the energy spectrum) did not change after mask and elbow modeling, however the second feature (power ratio) was greatly affected and was unable to differentiate between the cough types. The application of these models are therefore recommended when using classification tools that were designed using uncovered clear cough sounds in order to ensure that they will be robust to the presence of face coverings.
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口罩对咳嗽测量特征的影响
鉴于目前COVID-19大流行的应对措施,世界各地的研究人员一直在评估支持疾病识别、监测和跟踪各个方面的方法。咳嗽是COVID-19最常见的症状之一,使用基于音频的处理方法来评估咳嗽事件的频率、严重程度和特征,这一想法已成为一种有希望的解决方案。除了保持身体距离措施外,绝大多数卫生当局还建议在他人在场的情况下使用面罩(即口罩),并用弯曲的肘部遮住咳嗽。当使用已有的咳嗽分析工具评估记录时,咳嗽事件的覆盖可能会出现问题。本文提出了一种建模方法,用于描述戴口罩咳嗽和弯曲肘部咳嗽的影响。然后将这两个模型应用于现有数据集,以评估面部覆盖物对用于区分干咳和干咳类型的选定数据特征的影响。结果发现,口罩和肘部建模后,其中一个特征(能谱峰数)没有变化,但第二个特征(功率比)受到很大影响,无法区分咳嗽类型。因此,建议在使用分类工具时应用这些模型,这些分类工具是使用未覆盖的清晰咳嗽声设计的,以确保它们对面部覆盖物的存在具有鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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