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mmFlow: Facilitating At-Home Spirometry with 5G Smart Devices

机译:mmflow:用5g智能设备促进家庭肺血管测定法

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Respiratory diseases, like Asthma, COPD, have been a significant public health challenge over decades. Portable spirometers are effective in continuous monitoring of respiratory syndromes out-of-clinic. However, existing systems are either costly or provide limited information and require extra hardware. In this paper, we present mmFlow, a low-barrier means to perform at-home spirometry tests using 5G smart devices. mmFlow works like regular spirometers, where a user forcibly exhales onto a device; but instead of relying on special-purpose hardware, mmFlow leverages built-in millimeter-wave technology in general-purpose, ubiquitous mobile devices. mmFlow analyzes the tiny vibrations created by the airflow on the device surface and combines wireless signal processing with deep learning to enable a software-only spirometry solution. From empirical evaluations, we find that, when device distance is fixed, mmFlow can predict the spirometry indicators with performance comparable to inclinic spirometers with <5% prediction errors. Besides, mmFlow generalizes well under different environments and human conditions, making it promising for out-of-clinic daily monitoring.
机译:呼吸疾病,如哮喘,COPD,几十年来一直是重大的公共卫生挑战。便携式肺部计是持续监测临床外呼吸综合征的有效。但是,现有系统要么昂贵或提供有限的信息,需要额外的硬件。在本文中,我们呈现MMFLOF,一种低屏障手段,用于使用5G智能设备进行家庭肺活量测试。 mmflow像常规螺旋计一样,用户强行呼入设备;但而不是依靠专用硬件,MMFLOW利用内置毫米波技术,以通用,无处不在的移动设备。 MMFLOW分析了通过设备表面上的气流产生的微小振动,并结合了深度学习的无线信号处理,使得仅软件肌肉测定液。从经验评估中,我们发现,当设备距离是固定的时,MMFLOW可以预测肺活量测定指示器,性能与具有<5%预测误差的倾斜度血管计相当。此外,MMFLUL在不同的环境和人类条件下概括良好,使其在临床外每日监测中承诺。

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