基于物联网和机器学习的COVID-19感染早期预测

Chow Man Pan, Kamalanathan Shanmugam, Muhammad Ehsan Rana, M. Jayabalan
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摘要

新冠肺炎疫情给各国带来严重冲击,造成大量人员伤亡。这是一种前所未有的情况,对医疗保健部门构成了极大的挑战。对社会和经济的破坏是毁灭性的,导致数百万人生活在贫困中。大多数公民生活异常困难,容易感染传染性病毒,同时由于无法获得优质保健服务而易受伤害。这项研究将普适计算作为最先进的方法引入,以减轻COVID-19的传播,并为真正需要的人腾出更多的ICU床位。普适计算提供了一个很好的解决方案,其概念是随时随地都可以访问。由于COVID-19高度复杂和不可预测,感染COVID-19的人可能不知道,仍然继续生活。这导致COVID-19的传播无法控制。因此,及早发现COVID-19感染至关重要,这不仅是为了减缓传播,也是为了获得最佳治疗。通过这种方式,本研究引入了可穿戴传感器的概念,用于收集健康信息并将其作为输入馈送到机器学习中,以确定COVID-19感染或COVID-19状态监测。
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Early Prediction of COVID-19 Infection with IoT and Machine Learning
The deadly virus COVID-19 has heavily impacted all countries and brought a dramatic loss of human life. It is an unprecedented scenario and poses an extreme challenge to the healthcare sector. The disruption to society and the economy is devastating, causing millions of people to live in poverty. Most citizens live in exceptional hardship and are exposed to the contagious virus while being vulnerable due to the inaccessibility of quality healthcare services. This study introduces ubiquitous computing as a state-of-the-art method to mitigate the spread of COVID-19 and spare more ICU beds for those truly needed. Ubiquitous computing offers a great solution with the concept of being accessible anywhere and anytime. As COVID-19 is highly complicated and unpredictable, people infected with COVID-19 may be unaware and still live on with their life. This resulted in the spread of COVID-19 being uncontrollable. Therefore, it is essential to identify the COVID-19 infection early, not only because of the mitigation of spread but also for optimal treatment. This way, the concept of wearable sensors to collect health information and use it as an input to feed into machine learning to determine COVID-19 infection or COVID-19 status monitoring is introduced in this study.
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