利用深度学习模型从胸部CT扫描图像诊断COVID-19

Shamik Tiwari
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引用次数: 1

摘要

一种名为COVID-19的新型冠状病毒迅速传播,引发了全球呼吸系统疾病的爆发。早期诊断对于大流行控制始终至关重要。与RT-PCR相比,胸部计算机断层扫描(CT)成像是识别COVID-19患者更一致、更具体、更及时的方法。对于临床诊断,从计算机断层扫描接收的信息是至关重要的。因此,有必要开发一种从计算机断层扫描图像中检测病毒流行的图像分析技术。利用DenseNet、ResNet、CapsNet和3D-ConvNet,提出了四种基于深度机器学习的架构,用于从胸部计算机断层扫描中诊断COVID-19。从实验结果来看,所有的架构都提供了有效的准确率,其中COVID-DNet模型达到了99%的最高准确率。建议的架构可在https://github.com/shamiktiwari/CTscanCovi19上访问,可用于支持放射科医生和研究人员验证他们的初始筛选。
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Diagnosing COVID-19 from Chest CT Scan Images using Deep Learning Models
A novel coronavirus named COVID-19 has spread speedily and has triggered a worldwide outbreak of respiratory illness. Early diagnosis is always crucial for pandemic control. Compared to RT-PCR, chest computed tomography (CT) imaging is the more consistent, concrete, and prompt method to identify COVID-19 patients. For clinical diagnostics, the information received from computed tomography scans is critical. So there is a need to develop an image analysis technique for detecting viral epidemics from computed tomography scan pictures. Using DenseNet, ResNet, CapsNet, and 3D-ConvNet, four deep machine learning-based architectures have been proposed for COVID-19 diagnosis from chest computed tomography scans. From the experimental results, it is found that all the architectures are providing effective accuracy, of which the COVID-DNet model has reached the highest accuracy of 99%. Proposed architectures are accessible at https://github.com/shamiktiwari/CTscanCovi19 can be utilized to support radiologists and reserachers in validating their initial screening.
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