移动平台上的自动咳嗽评估。

Mark Sterling, Hyekyun Rhee, Mark Bocko
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引用次数: 33

摘要

描述了哮喘监测自动化系统(ADAM)的开发。这包括一个运行自定义应用程序的消费电子移动平台。应用程序从连接到设备模数转换器(麦克风输入)的外部用户佩戴的麦克风获取音频信号。对这个信号进行处理,以确定咳嗽声的存在与否。记录症状计数和原始音频波形,并使其易于访问,供医疗保健提供者稍后查看。症状检测算法基于标准语音识别和机器学习范例,包括音频特征提取步骤,然后是基于隐马尔可夫模型的Viterbi解码器,该解码器已经在来自各种主题的音频示例的大型数据库上进行了训练。研究了多个隐马尔可夫模型的拓扑结构和阶数。识别器的性能是根据在交叉验证测试中确定的灵敏度和误报率来提出的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Automated Cough Assessment on a Mobile Platform.

The development of an Automated System for Asthma Monitoring (ADAM) is described. This consists of a consumer electronics mobile platform running a custom application. The application acquires an audio signal from an external user-worn microphone connected to the device analog-to-digital converter (microphone input). This signal is processed to determine the presence or absence of cough sounds. Symptom tallies and raw audio waveforms are recorded and made easily accessible for later review by a healthcare provider. The symptom detection algorithm is based upon standard speech recognition and machine learning paradigms and consists of an audio feature extraction step followed by a Hidden Markov Model based Viterbi decoder that has been trained on a large database of audio examples from a variety of subjects. Multiple Hidden Markov Model topologies and orders are studied. Performance of the recognizer is presented in terms of the sensitivity and the rate of false alarm as determined in a cross-validation test.

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