Matos Sergio, Birring Surinder S, Pavord Ian D, Evans David H
Department of Medical Physics, University Hospitals of Leicester, UK.
IEEE Trans Biomed Eng. 2006 Jun;53(6):1078-83. doi: 10.1109/TBME.2006.873548.
Cough is a common symptom of many respiratory diseases. The evaluation of its intensity and frequency of occurrence could provide valuable clinical information in the assessment of patients with chronic cough. In this paper we propose the use of hidden Markov models (HMMs) to automatically detect cough sounds from continuous ambulatory recordings. The recording system consists of a digital sound recorder and a microphone attached to the patient's chest. The recognition algorithm follows a keyword-spotting approach, with cough sounds representing the keywords. It was trained on 821 min selected from 10 ambulatory recordings, including 2473 manually labeled cough events, and tested on a database of nine recordings from separate patients with a total recording time of 3060 min and comprising 2155 cough events. The average detection rate was 82% at a false alarm rate of seven events/h, when considering only events above an energy threshold relative to each recording's average energy. These results suggest that HMMs can be applied to the detection of cough sounds from ambulatory patients. A postprocessing stage to perform a more detailed analysis on the detected events is under development, and could allow the rejection of some of the incorrectly detected events.
咳嗽是许多呼吸道疾病的常见症状。评估其强度和发生频率可为慢性咳嗽患者的评估提供有价值的临床信息。在本文中,我们建议使用隐马尔可夫模型(HMM)从连续的动态记录中自动检测咳嗽声音。记录系统由一个数字录音机和一个连接到患者胸部的麦克风组成。识别算法采用关键词检测方法,咳嗽声音代表关键词。它在从10份动态记录中选取的821分钟上进行训练,包括2473个手动标注的咳嗽事件,并在一个由9份来自不同患者的记录组成的数据库上进行测试,总记录时间为3060分钟,包含2155个咳嗽事件。当仅考虑相对于每个记录平均能量高于能量阈值的事件时,平均检测率为82%,误报率为每小时7个事件。这些结果表明,HMM可应用于动态患者咳嗽声音的检测。一个对检测到的事件进行更详细分析的后处理阶段正在开发中,并且可以剔除一些错误检测到的事件。