Detection of COVID-19 Using Deep Learning

Dr. N. Sri, M. R. Sri, N. S. Harshitha, M. VenkataNaga, Sai Kumar
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Abstract

The world health organization states that the coronavirus epidemic has created a daily threat to the global healthcare system. After numerous deaths around the world, the pandemic unlocked a new threat making people ready for something which is similar and unpredictable. There were many challenges including the shortage of medical staff, beds, diagnosis centres, and intensive care units. Correct detection of disease is also crucial in surviving the pandemic. So, with a growing need for accurate and rapid diagnosis, there are many alternatives that are derived to identify the disease with the help of Radiology and Computed Tomography (CT) scans. This paper proposes a deep-learning-based approach for the detection of COVID-19 from X-ray and CT-scan images and is based on Predefined CNN architectures such as DenseNet201 and ResNet152, which are fine-tuned to classify images as COVID-19 positive or negative. The results obtained demonstrate that the proposed methods achieve high accuracy in detecting COVID-19 cases from X-ray and CT scan images. Hence, this project can be used as a valuable tool for frontline healthcare workers and public health officials to fight against the COVID-19
利用深度学习检测COVID-19
世界卫生组织表示,冠状病毒疫情每天都对全球医疗体系构成威胁。在世界各地大量死亡之后,这场大流行引发了一种新的威胁,使人们准备好应对类似且不可预测的威胁。存在许多挑战,包括缺少医务人员、床位、诊断中心和重症监护病房。正确发现疾病对于在大流行中生存也至关重要。因此,随着对准确和快速诊断的需求日益增长,在放射学和计算机断层扫描(CT)扫描的帮助下,衍生出许多替代方法来识别疾病。本文提出了一种基于深度学习的方法,用于从x射线和ct扫描图像中检测COVID-19,该方法基于预定义的CNN架构,如DenseNet201和ResNet152,这些架构经过微调,可以将图像分类为COVID-19阳性或阴性。结果表明,该方法在x线和CT扫描图像中检测COVID-19病例具有较高的准确性。因此,该项目可作为一线医护人员和公共卫生官员抗击COVID-19的宝贵工具
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