The use and significance of machine learning to screening COVID-19 pandemic

Nadeem Sarfraz, Faisal Rehman, Ammara Zahid
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引用次数: 0

Abstract

The COVID-19 virus was first seen in 2019 December in China and rapidly spread all over the world and millions of people are infected with this virus. This disease has sited the entire world in dangerous circumstances. At the start of this virus, it was a very serious matter in China but now it is being observed all over the world. The virus is life-threatening, and other public who are affected by previous diseases or those people whose age is more than 60 are more affected by this virus. The healthcare and drug industries have tried to find a treatment. While machine learning (ML) algorithms are largely applied in other areas, at this time every health care unit has to want to use ML techniques to find and predict, tracking, screening, spread COVID-19, and try to find the treatment of it. we show what is the journey of ML to find and track the COVID-19 virus and also observing it from a screening and detecting the COVID-19 virus. We show how much research has been done yet to detection of COVID-19 and which algorithm of machine learning is best for the detection and screening of the COVID-19.
机器学习在COVID-19大流行筛查中的应用及意义
2019年12月,新冠肺炎病毒首次在中国被发现,并迅速传播到世界各地,数百万人感染了这种病毒。这种疾病使整个世界处于危险的境地。在这种病毒开始的时候,它在中国是一个非常严重的问题,但现在全世界都在观察它。这种病毒是危及生命的,其他曾患过疾病的公众或年龄超过60岁的人更容易受到这种病毒的影响。医疗保健和制药行业试图找到一种治疗方法。虽然机器学习(ML)算法在其他领域得到了广泛应用,但目前每个医疗保健单位都必须希望使用ML技术来发现和预测、跟踪、筛查、传播COVID-19,并尝试找到治疗方法。我们展示了机器学习发现和跟踪COVID-19病毒的过程,以及从筛查和检测COVID-19病毒中观察它的过程。我们展示了在COVID-19检测方面已经做了多少研究,以及哪种机器学习算法最适合COVID-19的检测和筛选。
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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