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Automatic cough detection based on airflow signals for portable spirometry system

机译:基于空气流量信号的自动咳嗽检测,用于便携式肺动量系统

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摘要

We give a short introduction to cough detection efforts that were undertaken during the last decade and we describe the solution for automatic cough detection developed for the AioCare portable spirometry system. In contrast to more popular analysis of sound and audio recordings, we fully based our approach on airflow signals only. As the system is intended to be used in a large variety of environments and different patients, we trained and validated the algorithm using AioCare-collected data and the large database of spirometry curves from the NHANES database by the American National Center for Health Statistics. We trained different classifiers, such as logistic regression, feed-forward artificial neural network, support vector machine, and random forest to choose the one with the best performance. The ANN solution was selected as the final classifier. The classification results on the test set (AioCare data) are: 0.86 (sensitivity), 0.91 (specificity), 0.91 (accuracy) and 0.88 (F1 score). The classification methodology developed in this study is robust for detecting cough events during spirometry measurements. As far as we know, the solution presented in this work is the first fully reproducible description of the automatic cough detection algorithm based totally on airflow signals and the first cough detection implemented in a commercial spirometry system that is published.
机译:我们介绍了过去十年中开展的咳嗽检测工作简介,我们描述了为AIOCare便携式肺活量系统开发的自动咳嗽检测解决方案。相反,对于声音和录音的更普遍分析,我们完全基于我们的方法仅在气流信号上。由于系统旨在用于各种环境和不同的患者,我们使用美国国家健康统计中心从NHANES数据库中培训并验证了算法和验证了算法。我们培训了不同的分类器,如逻辑回归,前馈人工神经网络,支持向量机和随机森林,选择具有最佳性能的森林。选择ANN溶液作为最终分类器。测试集(AIOCare数据)的分类结果是:0.86(灵敏度),0.91(特异性),0.91(精度)和0.88(F1得分)。该研究中开发的分类方法对于检测肺活量测量测量期间的咳嗽事件是稳健的。据我们所知,在本作工作中提出的解决方案是基于气流信号的自动咳嗽检测算法的第一个完全可再现描述,以及在公开的商业肺动量系统中实现的第一咳嗽检测。

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