论文标题

PDCOVIDNET:平行滴定的卷积神经网络结构,用于从胸部X射线图像中检测COVID-19

PDCOVIDNet: A Parallel-Dilated Convolutional Neural Network Architecture for Detecting COVID-19 from Chest X-Ray Images

论文作者

Chowdhury, Nihad Karim, Rahman, Md. Muhtadir, Kabir, Muhammad Ashad

论文摘要

COVID-19的大流行继续严重破坏了全球卫生系统的繁荣。为了打击这种大流行,对感染患者的有效筛查技术是必不可少的。毫无疑问,将胸部X射线图像用于放射学评估是必不可少的筛选技术之一。一些早期研究表明,患者的胸部X射线图像显示异常,这对于感染了Covid-19的患者是很自然的。在本文中,我们提出了一个基于平行删除的卷积神经网络(CNN)的COVID-19检测系统,从胸部X射线图像,称为平行二元的Covidnet(PDCOVIDNET)。首先,公开可用的胸部X射线收集完全预加载和增强,然后按建议的方法进行分类。平行形式的不同卷积扩张率证明了使用PDCOVIDNET提取放射学特征进行共vid-19检测的原理证明。因此,我们通过两种可视化方法协助了我们的方法,这些方法是专门设计的,以增加对与Covid-19感染相关的关键成分的理解。两种可视化方法都计算给定图像类别的梯度与最后一个卷积层的特征图相关,以创建类歧视区域。在我们的实验中,我们总共使用了2,905张胸部X射线图像,其中包括三种病例(例如Covid-19,正常和病毒性肺炎),经验评估表明,该提出的方法提取了与可疑疾病相关的更重要的特征。实验结果表明,我们提出的方法显着提高了性能指标:准确性,精度,召回和F1分数分别达到96.58%,96.58%,96.59%和96.58%,这是相当或增强的,与目前的方法相比,这是可比的或增强的。

The COVID-19 pandemic continues to severely undermine the prosperity of the global health system. To combat this pandemic, effective screening techniques for infected patients are indispensable. There is no doubt that the use of chest X-ray images for radiological assessment is one of the essential screening techniques. Some of the early studies revealed that the patient's chest X-ray images showed abnormalities, which is natural for patients infected with COVID-19. In this paper, we proposed a parallel-dilated convolutional neural network (CNN) based COVID-19 detection system from chest x-ray images, named as Parallel-Dilated COVIDNet (PDCOVIDNet). First, the publicly available chest X-ray collection fully preloaded and enhanced, and then classified by the proposed method. Differing convolution dilation rate in a parallel form demonstrates the proof-of-principle for using PDCOVIDNet to extract radiological features for COVID-19 detection. Accordingly, we have assisted our method with two visualization methods, which are specifically designed to increase understanding of the key components associated with COVID-19 infection. Both visualization methods compute gradients for a given image category related to feature maps of the last convolutional layer to create a class-discriminative region. In our experiment, we used a total of 2,905 chest X-ray images, comprising three cases (such as COVID-19, normal, and viral pneumonia), and empirical evaluations revealed that the proposed method extracted more significant features expeditiously related to the suspected disease. The experimental results demonstrate that our proposed method significantly improves performance metrics: accuracy, precision, recall, and F1 scores reach 96.58%, 96.58%, 96.59%, and 96.58%, respectively, which is comparable or enhanced compared with the state-of-the-art methods.

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