Qurra : an Offline AI-based Mobile Doctor

Hamza Alsharif, Alaa Badokhon, Khaled Alhazmi
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Abstract

The recent global health pandemic has shifted the way healthcare is provided. Healthcare providers are overwhelmed with hospitals' beds being occupied and concerned about well being of visiting patients in need of regular checkups. Hence, innovative mobile-based healthcare solutions are needed. This work named Qurra or in Arabic presents a real-time solution that uses pre-trained built-in machine learning (ML)-models on mobile devices for convenient health checkups. The Qurra application operates by sampling data from various mobile sensors and uses the sampled data as input to different machine learning modules to produce a meaningful health diagnosis. The developed modules are the heart rate and cough detection. These modules are the focus of this paper. The approach used in this work relies on externally ML- based trained models that are ported to the application. Then, sensory inputs are tested against these pre-trained models, locally computed and analyzed on the mobile phone. The results are displayed to the user in real-time. This approach of having the models embedded to the mobile phone eliminates the need for internet connectivity. Moreover, the developed system is compared with a third party application in addition to its native model on a desktop computer. Also, the app has fast overall processing time of approximately 2-3.5 seconds.
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Qurra:一个基于离线人工智能的移动医生
最近的全球卫生大流行改变了提供卫生保健的方式。由于医院的床位被占用,医疗保健提供者不堪重负,他们担心需要定期检查的来访病人的健康。因此,需要创新的基于移动的医疗保健解决方案。这项名为Qurra或阿拉伯语的工作提供了一种实时解决方案,它在移动设备上使用预训练的内置机器学习(ML)模型来方便地进行健康检查。Qurra应用程序通过从各种移动传感器中采样数据,并将采样数据作为不同机器学习模块的输入,以产生有意义的健康诊断。开发的模块有心率检测和咳嗽检测。这些模块是本文的重点。这项工作中使用的方法依赖于移植到应用程序的外部基于ML的训练模型。然后,根据这些预先训练的模型对感官输入进行测试,并在手机上进行本地计算和分析。结果将实时显示给用户。这种将模型嵌入移动电话的方法消除了对互联网连接的需求。此外,所开发的系统除了在台式计算机上的本地模型外,还与第三方应用程序进行了比较。此外,该应用程序的整体处理时间大约为2-3.5秒。
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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