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Review Paper for Detection of COVID-19 from Medical Images and/ or Symptoms of Patient using Machine Learning Approaches

机译:使用机器学习方法检测来自医学图像和/或患者症状的Covid-19的纸张

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The new type of coronavirus COVID-19 virus was first detected in Wuhan-China. A COVID-19 certified patient is characterized by fever, fatigue, and dry cough. The coronavirus (COVID-19) epidemic is spreading worldwide. In this review paper, a database of X-ray, CT-Scan images from patients with common bacterial pneumonia, confirmed Covid-19 infection, and common cases, were used to automatically detect Coronavirus infection. The purpose of the study was to evaluate the effectiveness of COVID-19 acquisition. During the COVID-19 scenario, the number of infected cases rises in huge number globally. Due to this fact, a vital decision had been taken by medical experts and infected patients to adopt various medical facilities within a reasonable amount of time.
机译:在武汉 - 中国首次检测到新型的冠状病毒Covid-19病毒。 Covid-19认证患者的特点是发烧,疲劳和干咳。冠状病毒(Covid-19)疫情正在全世界传播。在本文中,使用常见细菌肺炎患者,确认的Covid-19感染和常见病例的X射线,CT扫描图像数据库用于自动检测冠状病毒感染。该研究的目的是评估Covid-19收购的有效性。在Covid-19场景期间,受感染病例的数量在全球范围内升高。由于这一事实,医疗专家和感染患者采取了重要的决定,在合理的时间内采用各种医疗设施。

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