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Evaluating Deep Learning for CT Scan COVID-19 Automatic Detection

机译:C2019冠状病毒疾病CT扫描深度学习评价

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Aside from Reverse Transcription Polymerase Chain Reaction (RT-PCR), another common method to check for the 2019 novel Coronavirus disease (COVID-19) is by using a chest CT scan. Imaging data is profoundly useful in the diagnosis, detection of complications, and prognostication of COVID-19, displaying various spots in the lungs affected by the viral infection. The complex results often require some time before radiologists can analyze them and are more prone to human errors. Inventions of medical assisting tools, through enhancement of artificial intelligence, are crucial in fighting the COVID-19 pandemic through automation of classifications and the future of medicine. To overcome the above challenges, this paper aims to propose and evaluate the performance between Convolution Neural Network (CNN) and Transfer Learning (TL) in the detection of COVID-19 infections from a Lung CT Scan. Gradient-Weighted Class Activation Mapping (Grad-CAM) will also be utilized to display the infected areas in the lungs for explorative experiments. Transfer-learning using our pre-trained model resulted in a detection accuracy result of 89% while our proposed CNN demonstrated the best result in terms of classification accuracy at 97%. Training time required for the two frameworks are 12 and 22 minutes respectively. By and large, our comparison of using the CNN model versus the pre-trained model gives rise to the conclusion that using the former method proves to be a more effective technique of COVID-19 detection by CT-scan.
机译:除了逆转录聚合酶链反应(RT-PCR),另一种常见的检查2019种新冠状病毒病(COVID-19)的方法是使用胸部CT扫描。成像数据在诊断、检测并发症和预测COVID-19方面是非常有用的,显示受病毒感染影响的肺部中的各种斑点。复杂的结果往往需要一段时间,放射科医生才能对其进行分析,而且更容易出现人为错误。通过人工智能的增强,医学辅助工具的发明对于通过分类自动化和医学的未来来对抗COVID-19流行病至关重要。为了克服上述2019冠状病毒疾病,本文提出并评价卷积神经网络(美国有线电视新闻网)和转移学习(TL)在COVID-19感染肺部CT扫描中的性能。梯度加权类激活图(Grad-CAM)也将用于显示肺部感染区域,用于探索性实验。使用我们预先训练的模型进行迁移学习,检测准确率达到89%,而我们提出的CNN在分类准确率方面达到了97%的最佳结果。两个框架所需的培训时间分别为12分钟和22分钟。总的来说,我们使用美国有线电视新闻网模型与预先训练的模型的比较得出结论,使用前一种方法被证明是一种更有效的COVID-19检测的CT扫描技术。

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