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A Novel Method for Automatic Identification of Breathing State

机译:一种自动识别呼吸状态的新方法

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摘要

Sputum deposition blocks the airways of patients and leads to blood oxygen desaturation. Medical staff must periodically check the breathing state of intubated patients. This process increases staff workload. In this paper, we describe a system designed to acquire respiratory sounds from intubated subjects, extract the audio features, and classify these sounds to detect the presence of sputum. Our method uses 13 features extracted from the time-frequency spectrum of the respiratory sounds. To test our system, 220 respiratory sound samples were collected. Half of the samples were collected from patients with sputum present, and the remainder were collected from patients with no sputum present. Testing was performed based on ten-fold cross-validation. In the ten-fold cross-validation experiment, the logistic classifier identified breath sounds with sputum present with a sensitivity of 93.36% and a specificity of 93.36%. The feature extraction and classification methods are useful and reliable for sputum detection. This approach differs from waveform research and can provide a better visualization of sputum conditions. The proposed system can be used in the ICU to inform medical staff when sputum is present in a patient>’s trachea.
机译:痰液沉积会阻塞患者的呼吸道,并导致血氧饱和度降低。医务人员必须定期检查插管患者的呼吸状态。这个过程增加了员工的工作量。在本文中,我们描述了一种旨在从插管对象中获取呼吸音,提取音频特征并将这些声音分类以检测痰液存在的系统。我们的方法使用了从呼吸声的时间频谱中提取的13个特征。为了测试我们的系统,收集了220个呼吸声样本。一半的样本是从有痰的患者那里收集的,其余的是从没有痰的患者中收集的。基于十倍交叉验证进行测试。在十次交叉验证实验中,逻辑分类器识别出痰中出现的呼吸音,其敏感性为93.36%,特异性为93.36%。特征提取和分类方法对于痰液检测是有用且可靠的。这种方法不同于波形研究,可以更好地可视化痰液状况。如果患者> 气管中有痰,建议的系统可在ICU中用于通知医务人员。

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