CoviDetector:一种基于迁移学习的半监督方法,使用CXR图像检测Covid-19

Deepraj Chowdhury , Anik Das , Ajoy Dey , Soham Banerjee , Muhammed Golec , Dimitrios Kollias , Mohit Kumar , Guneet Kaur , Rupinder Kaur , Rajesh Chand Arya , Gurleen Wander , Praneet Wander , Gurpreet Singh Wander , Ajith Kumar Parlikad , Sukhpal Singh Gill , Steve Uhlig
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引用次数: 2

摘要

新冠肺炎是本世纪最致命、最具传染性的疾病之一。已经进行了减少大流行死亡人数和减缓其传播的研究。新冠肺炎检测调查利用了具有深度学习技术的胸部X射线(CXR)图像,其在识别肺炎改变方面的敏感性。然而,由于用户的隐私问题,CXR图像尚未公开,这给从头开始训练高度准确的深度学习模型带来了挑战。因此,我们提出了CoviDetector,这是一种基于迁移学习和聚类的新的半监督方法,它显示出改进的性能,并且需要更少的训练数据。CXR图像被作为该模型的输入,个体被分为三类:(1)新冠肺炎阳性;(2) 病毒性肺炎;和(3)正常。CoviDetector的性能已经在四个不同的数据集上进行了评估,在这些数据集上实现了99%以上的准确率。此外,我们使用Grad-CAM生成热图,并将其覆盖在CXR图像上,以呈现突出显示的区域,这些区域是检测新冠肺炎的决定性因素。最后,我们开发了一个Android应用程序,提供了一个用户友好的界面。我们发布CoviDetector的代码、数据集和结果脚本,以实现再现性;它们可在以下位置获得:https://github.com/dasanik2001/CoviDetector
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CoviDetector: A transfer learning-based semi supervised approach to detect Covid-19 using CXR images

COVID-19 was one of the deadliest and most infectious illnesses of this century. Research has been done to decrease pandemic deaths and slow down its spread. COVID-19 detection investigations have utilised Chest X-ray (CXR) images with deep learning techniques with its sensitivity in identifying pneumonic alterations. However, CXR images are not publicly available due to users’ privacy concerns, resulting in a challenge to train a highly accurate deep learning model from scratch. Therefore, we proposed CoviDetector, a new semi-supervised approach based on transfer learning and clustering, which displays improved performance and requires less training data. CXR images are given as input to this model, and individuals are categorised into three classes: (1) COVID-19 positive; (2) Viral pneumonia; and (3) Normal. The performance of CoviDetector has been evaluated on four different datasets, achieving over 99% accuracy on them. Additionally, we generate heatmaps utilising Grad-CAM and overlay them on the CXR images to present the highlighted areas that were deciding factors in detecting COVID-19. Finally, we developed an Android app to offer a user-friendly interface. We release the code, datasets and results’ scripts of CoviDetector for reproducibility purposes; they are available at: https://github.com/dasanik2001/CoviDetector

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