Machine Learning Techniques on X-ray Images for Covid-19 Classification

Luciano Caroprese, E. Vocaturo, E. Zumpano
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Abstract

The Public Health Commission of Hubei Province, China, at the end of 2019reported cases of severe and unknown pneumonia, marked by fever, malaise, dry cough, dyspnea, and respiratory failure, that occurred in the urban area of Wuhan, according to the World Health Organization (WHO). The lung infection, SARS-CoV-2, also known as COVID-19, was caused by a brand-new coronavirus (coronavirus disease 2019). Since then, infections have increased exponentially, and the WHO labeled the outbreak a worldwide emergency at the beginning of March 2020. Infected and asymptomatic individuals who can spread the virus are the main sources of it. The transmission occurs mainly by airthrough the air through the droplets, however indirect transmission is also possible, such as through contact with infected surfaces. It becomes essential to identify viral carriers as soon as possible in order to stop the spread of the disease and reduce morbidity and mortality. Imaging examinations, which are among the specific tests used to make the definite diagnosis, are crucial in the patient’s management when COVID-19 is suspected. Numerous papers that use machine learning techniques discuss the use of X-ray chest radiographs as a component that aids in diagnosis and permits disease follow-up. The goal of this work is to supply the scientific community with information on the most widely used Machine Learning algorithms applied to chest X-ray images.
基于x射线图像的机器学习技术用于Covid-19分类
根据世界卫生组织(世卫组织)的数据,中国湖北省卫生健康委员会于2019年底报告了武汉市区发生的严重和不明原因肺炎病例,其特征是发烧、不适、干咳、呼吸困难和呼吸衰竭。肺部感染,SARS-CoV-2,也被称为COVID-19,是由一种全新的冠状病毒(冠状病毒病2019)引起的。从那时起,感染呈指数级增长,世界卫生组织在2020年3月初将此次疫情列为全球紧急情况。可以传播病毒的感染者和无症状个体是病毒的主要来源。主要通过空气通过飞沫传播,但也有间接传播的可能,例如通过接触受感染的表面。为了阻止疾病的传播并降低发病率和死亡率,必须尽快查明病毒携带者。影像学检查是用于明确诊断的特定检查之一,在怀疑COVID-19时对患者的管理至关重要。许多使用机器学习技术的论文讨论了使用x射线胸片作为辅助诊断和疾病随访的组成部分。这项工作的目标是为科学界提供有关应用于胸部x射线图像的最广泛使用的机器学习算法的信息。
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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