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Hidden Markov model of cough from pediatric patients with respiratory infections

机译:儿童呼吸道感染咳嗽的隐马尔可夫模型

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Cough is one of the early symptoms of the respiratory tract infections. Cough sound may indicate the physiology of respiratory tract impairment due to the infections. Inflammation, obstruction and excessive mucus may generate specific types of cough sound. In pediatric population, their cough sound may relate to the etiology of the respiratory diseases. Therefore, cough sound is very useful to support the diagnosis. In the physical examination, physicians may assess cough by listening to several episode of cough sounds. This process is similar to the way human recognize speeches. In this paper we present our work on the development of cough model using a Hidden Markov Model (HMM). The data for this work were collected from pediatric population diagnosed as pneumonia and asthma. Our developed model achieved the accuracy of 82.7% and 52.6% for pneumonia and asthma, respectively. It shows that HMM can be used to model different types of cough from respiratory diseases.
机译:咳嗽是呼吸道感染的早期症状之一。咳嗽声可能表明感染引起的呼吸道生理异常。炎症,阻塞和过多的粘液可能会产生特定类型的咳嗽声。在儿科人群中,咳嗽声可能与呼吸道疾病的病因有关。因此,咳嗽声对于支持诊断非常有用。在体格检查中,医生可以通过听几次咳嗽声来评估咳嗽。此过程类似于人类识别语音的方式。在本文中,我们介绍了使用隐马尔可夫模型(HMM)开发咳嗽模型的工作。这项工作的数据来自确诊为肺炎和哮喘的儿科人群。我们开发的模型对肺炎和哮喘的准确率分别为82.7%和52.6%。它表明HMM可用于模拟呼吸系统疾病引起的不同类型的咳嗽。

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