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An automated and unobtrusive system for cough detection

机译:一种用于咳嗽检测的自动化和不显眼的系统

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Cough monitoring is useful for people suffering from chronic obstructive pulmonary disease (COPD) since cough is associated with an increased risk of frequent exacerbations and hospitalizations. Differently from what exists in the literature, this paper presents an automated cough detector that can be used for long term and remote monitoring. A dataset of sound traces collected in 7 COPD patients' home was used to test the performance of different machine learning approaches. Audio sounds were recorded for 90 days and they contain cough events or environmental noises with the last being the larger proportion. This suggests us to consider supervised methods that can deal with class imbalance learning. The data allow also to investigate the possibility to distinguish between patient coughs and coughs coming from other people in the same environment. The results, presented using a stratified leave-one-subject out cross validation, are promising since the area under the Receiver Operating Characteristic (ROC) curve gets as high as 0.916 ± 0.027.
机译:咳嗽监测对于患有慢性阻塞性肺病(COPD)的人来说是有用的,因为咳嗽与频繁恶化和住院的风险增加有关。与文献中存在的不同之处,本文介绍了一种可用于长期和远程监控的自动咳嗽探测器。 7 COPD患者家中收集的声音迹线数据集用于测试不同机器学习方法的性能。音频声音被记录90天,它们包含咳嗽事件或环境噪音,最后是较大的比例。这表明我们要考虑可以处理课程不平衡学习的监督方法。数据还允许调查区分患者咳嗽和来自同一环境中其他人的咳嗽的可能性。使用分层的休假 - 单次交叉验证提出的结果是有前途的,因为接收器操作特性(ROC)曲线下的区域高达0.916±0.027。

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