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Improving effectiveness of different deep learning-based models for detecting COVID-19 from computed tomography (CT) images

机译:提高不同基于深度学习的模型从计算机断层扫描 (CT) 图像检测 COVID-19 的有效性

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摘要

COVID-19 has caused a pandemic crisis that threatens the world in many areas, especially in public health. For the diagnosis of COVID-19, computed tomography has a prognostic role in the early diagnosis of COVID-19 as it provides both rapid and accurate results. This is crucial to assist clinicians in making decisions for rapid isolation and appropriate patient treatment. Therefore, many researchers have shown that the accuracy of COVID-19 patient detection from chest CT images using various deep learning systems is extremely optimistic. Deep learning networks such as convolutional neural networks (CNNs) require substantial training data. One of the biggest problems for researchers is accessing a significant amount of training data. In this work, we combine methods such as segmentation, data augmentation and generative adversarial network (GAN) to increase the effectiveness of deep learning models. We propose a method that generates synthetic chest CT images using the GAN method from a limited number of CT images. We test the performance of experiments (with and without GAN) on internal and external dataset. When the CNN is trained on real images and synthetic images, a slight increase in accuracy and other results are observed in the internal dataset, but between 3 and 9 in the external dataset. It is promising according to the performance results that the proposed method will accelerate the detection of COVID-19 and lead to more robust systems.
机译:COVID-19 引发了一场大流行危机,在许多领域威胁着世界,尤其是在公共卫生方面。对于 COVID-19 的诊断,计算机断层扫描在 COVID-19 的早期诊断中具有预后作用,因为它可以提供快速和准确的结果。这对于帮助临床医生做出快速隔离和适当患者治疗的决定至关重要。因此,许多研究人员已经表明,使用各种深度学习系统从胸部 CT 图像中检测 COVID-19 患者的准确性非常乐观。卷积神经网络 (CNN) 等深度学习网络需要大量的训练数据。研究人员面临的最大问题之一是访问大量训练数据。在这项工作中,我们结合了分割、数据增强和生成对抗网络(GAN)等方法,以提高深度学习模型的有效性。我们提出了一种使用GAN方法从有限数量的CT图像生成合成胸部CT图像的方法。我们在内部和外部数据集上测试实验(有和没有 GAN)的性能。当 CNN 在真实图像和合成图像上训练时,在内部数据集中观察到准确性和其他结果略有提高,但在外部数据集中观察到 3% 到 9% 之间。根据性能结果,所提出的方法将加速 COVID-19 的检测并导致更强大的系统,这是有希望的。

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