Review of Deep Learning-based Approaches for COVID-19 Detection

Jinyang Liu
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Abstract

As the COVID-19 pandemic broke out worldwide, many deep learning-based methods are proposed to assist the doctors in COVID-19 diagnosis. This paper introduces open-source datasets of COVID-19 images and tests state-of-the-art COVID-19 diagnosis methods to provide a comprehensive review of these technologies. According to the experimental results, this paper introduces two interesting observations: 1) deep learning-based methods focus on big visual features rather than small detailed features; 2) the convolutional neural networks pay attention to the region of Lung Ultrasound images, which is also considered as crucial observation region from doctors' perspectives. These observations prove the efficiency of deep-learning solutions since they can learn essential doctors' COVID-19 diagnosis rules.
基于深度学习的COVID-19检测方法综述
随着新冠肺炎疫情在全球范围内的爆发,人们提出了许多基于深度学习的方法来辅助医生进行新冠肺炎的诊断。本文介绍了COVID-19图像的开源数据集,并对最新的COVID-19诊断方法进行了测试,以全面回顾这些技术。根据实验结果,本文介绍了两个有趣的观察结果:1)基于深度学习的方法侧重于大的视觉特征而不是小的细节特征;2)卷积神经网络关注的是肺超声图像的区域,这也是医生认为至关重要的观察区域。这些观察结果证明了深度学习解决方案的有效性,因为它们可以学习医生的基本诊断规则。
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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