A Novel AI-enabled Framework to Diagnose Coronavirus COVID 19 using Smartphone Embedded Sensors: Design Study
Halgurd S. Maghdid, Kayhan Zrar Ghafoor, Ali Safaa Sadiq and, Kevin Curran, Danda B. Rawat, Khaled Rabie

TL;DR
This paper proposes an AI-enabled framework utilizing smartphone sensors for low-cost, accessible COVID-19 detection, aiming to empower both medical professionals and the general public with a quick diagnostic tool.
Contribution
It introduces a novel framework that leverages built-in smartphone sensors and AI to detect COVID-19, providing an affordable and user-friendly alternative to traditional diagnostic methods.
Findings
Framework can predict COVID-19 severity levels.
Potential for widespread use by non-experts.
Reduces reliance on expensive medical equipment.
Abstract
Coronaviruses are a famous family of viruses that cause illness in both humans and animals. The new type of coronavirus COVID-19 was firstly discovered in Wuhan, China. However, recently, the virus has widely spread in most of the world and causing a pandemic according to the World Health Organization (WHO). Further, nowadays, all the world countries are striving to control the COVID-19. There are many mechanisms to detect coronavirus including clinical analysis of chest CT scan images and blood test results. The confirmed COVID-19 patient manifests as fever, tiredness, and dry cough. Particularly, several techniques can be used to detect the initial results of the virus such as medical detection Kits. However, such devices are incurring huge cost, taking time to install them and use. Therefore, in this paper, a new framework is proposed to detect COVID-19 using built-in smartphone…
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Taxonomy
TopicsCOVID-19 diagnosis using AI
