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Can Machine Learning Be Used to Recognize and Diagnose Coughs?

机译:机器学习可以用来识别和诊断咳嗽吗?

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Emerging wireless technologies, such as 5G and beyond, are bringing new use cases to the forefront, one of the most prominent being machine learning empowered health care. One of the notable modern medical concerns that impose an immense worldwide health burden are respiratory infections. Since cough is an essential symptom of many respiratory infections, an automated system to screen for respiratory diseases based on raw cough data would have a multitude of beneficial research and medical applications. In literature, machine learning has already been successfully used to detect cough events in controlled environments. In this paper, we present a low complexity, automated recognition and diagnostic tool for screening respiratory infections that utilizes Convolutional Neural Networks (CNNs) to detect cough within environment audio and diagnose three potential illnesses (i.e., bronchitis, bronchiolitis and pertussis) based on their unique cough audio features. Both proposed detection and diagnosis models achieve an accuracy of over 89%, while also remaining computationally efficient. Results show that the proposed system is successfully able to detect and separate cough events from background noise. Moreover, the proposed single diagnosis model is capable of distinguishing between different illnesses without the need of separate models.
机译:新兴的无线技术,如5G及以后,正在为最前沿带来新的用例,最突出的机器学习赋予了保健。强加巨大的全球健康负担的显着现代医学问题之一是呼吸道感染。由于咳嗽是许多呼吸道感染的基本症状,因此基于原始咳嗽数据筛选呼吸系统的自动化系统将具有多种有益的研究和医疗应用。在文献中,机器学习已经成功地用于检测受控环境中的咳嗽事件。在本文中,我们提出了一个低复杂度,自动识别和诊断工具的基础上筛选呼吸道感染,利用卷积神经网络(细胞神经网络)环境音频内检测咳嗽和诊断三个潜在的疾病(如支气管炎,细支气管炎和百日咳)的独特的咳嗽音频功能。两个提出的检测和诊断模型都达到了89%以上的准确性,而且还剩下计算效率。结果表明,所提出的系统成功地检测和将咳嗽事件与背景噪声分开。此外,所提出的单一诊断模型能够区分不同的疾病,而无需单独的模型。

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