论文标题
使用深度学习从胸部X射线中识别Covid-19的图像:比较Cognex VisionPro深度学习1.0软件与开源卷积神经网络
Identification of images of COVID-19 from Chest X-rays using Deep Learning: Comparing COGNEX VisionPro Deep Learning 1.0 Software with Open Source Convolutional Neural Networks
论文作者
论文摘要
COVID-19大流行对人类的严重和灾难性影响,被认为是本世纪最关键的健康灾难。检测COVID-19的最佳方法之一是来自放射学图像,即X射线和计算机断层扫描或CT扫描图像。在这场危机期间,许多公司和教育组织都聚集在一起,并创建了各种深度学习模型,以有效地从胸部X射线照相图像中对Covid-19进行有效诊断。例如,滑铁卢大学与达尔文AI一起设计了其深度学习模型Covid-net,并创建了一个名为Covidx的数据集,由13,975张图像组成。在这项研究中,Cognexs深度学习软件 - VisionPro深度学习用于从Covidx数据集中对这些胸部X射线进行分类。将结果与开源社区的Covid-NET和其他各种最先进的深度学习模型的结果进行了比较。深度学习工具通常被称为黑匣子,因为人类无法解释模型如何或为什么将图像分类为特定类。通过使用两个设置测试VisionPro深度学习来解决此问题,首先选择整个图像,即选择整个图像作为兴趣ROI区域,其次是通过在第一步中分割肺,然后仅在分段的肺部进行分类步骤,而不是使用整个图像。 VisionPro深度学习结果是整个图像作为ROI,其总体F评分达到94.0%,并且在分段的肺部,它的F-评分为95.3%,比COVID-NET和其他最先进的开放式深度学习模型的F分数或更好。
The COVID-19 pandemic has been having a severe and catastrophic effect on humankind and is being considered the most crucial health calamity of the century. One of the best methods of detecting COVID-19 is from radiological images, namely X-rays and Computed Tomography or CT scan images. Many companies and educational organizations have come together during this crisis and created various Deep Learning models for the effective diagnosis of COVID-19 from chest radiography images. For example, the University of Waterloo, along with Darwin AI, has designed its Deep Learning model COVID-Net and created a dataset called COVIDx, consisting of 13,975 images. In this study, COGNEXs Deep Learning Software-VisionPro Deep Learning is used to classify these Chest X-rays from the COVIDx dataset. The results are compared with the results of COVID-Net and various other state of the art Deep Learning models from the open-source community. Deep Learning tools are often referred to as black boxes because humans cannot interpret how or why a model is classifying an image into a particular class. This problem is addressed by testing VisionPro Deep Learning with two settings, firstly by selecting the entire image, that is, selecting the entire image as the Region of Interest-ROI, and secondly by segmenting the lungs in the first step, and then doing the classification step on the segmented lungs only, instead of using the entire image. VisionPro Deep Learning results-on the entire image as the ROI it achieves an overall F-score of 94.0 percent, and on the segmented lungs, it gets an F-score of 95.3 percent, which is at par or better than COVID-Net and other state of the art open-source Deep Learning models.