Rahman Sejuti, Sarker Sujan, Miraj Md Abdullah Al, Nihal Ragib Amin, Nadimul Haque A K M, Noman Abdullah Al
Department of Robotics and Mechatronics Engineering, University of Dhaka, Dhaka, Bangladesh.
Cognit Comput. 2021 Mar 2:1-30. doi: 10.1007/s12559-020-09779-5.
The COVID-19 pandemic has wreaked havoc on the whole world, taking over half a million lives and capsizing the world economy in unprecedented magnitudes. With the world scampering for a possible vaccine, early detection and containment are the only redress. Existing diagnostic technologies with high accuracy like RT-PCRs are expensive and sophisticated, requiring skilled individuals for specimen collection and screening, resulting in lower outreach. So, methods excluding direct human intervention are much sought after, and artificial intelligence-driven automated diagnosis, especially with radiography images, captured the researchers' interest. This survey marks a detailed inspection of the deep learning-based automated detection of COVID-19 works done to date, a comparison of the available datasets, methodical challenges like imbalanced datasets and others, along with probable solutions with different preprocessing methods, and scopes of future exploration in this arena. We also benchmarked the performance of 315 deep models in diagnosing COVID-19, normal, and pneumonia from X-ray images of a custom dataset created from four others. The dataset is publicly available at https://github.com/rgbnihal2/COVID-19-X-ray-Dataset. Our results show that DenseNet201 model with Quadratic SVM classifier performs the best (accuracy: 98.16%, sensitivity: 98.93%, specificity: 98.77%) and maintains high accuracies in other similar architectures as well. This proves that even though radiography images might not be conclusive for radiologists, but it is so for deep learning algorithms for detecting COVID-19. We hope this extensive review will provide a comprehensive guideline for researchers in this field.
新冠疫情给全球带来了巨大破坏,夺走了超过50万人的生命,使世界经济遭受了前所未有的重创。在全球竞相寻找可能的疫苗之际,早期检测和防控是唯一的补救措施。像逆转录聚合酶链反应(RT-PCR)这样的高精度现有诊断技术昂贵且复杂,需要专业人员进行样本采集和筛查,导致覆盖范围较低。因此,不依赖直接人工干预的方法备受青睐,人工智能驱动的自动诊断,尤其是利用X光图像的诊断,引起了研究人员的兴趣。本调查详细审视了迄今为止基于深度学习的新冠病毒自动检测工作,比较了可用数据集、数据集不平衡等方法上的挑战以及其他问题,同时介绍了不同预处理方法的可能解决方案以及该领域未来的探索方向。我们还对从其他四个数据集创建的自定义数据集中的X光图像诊断新冠、正常和肺炎的315个深度模型的性能进行了基准测试。该数据集可在https://github.com/rgbnihal2/COVID-19-X-ray-Dataset上公开获取。我们的结果表明,采用二次支持向量机分类器的DenseNet201模型表现最佳(准确率:98.16%,灵敏度:98.93%,特异性:98.77%),并且在其他类似架构中也保持了较高的准确率。这证明,尽管X光图像对放射科医生来说可能不具有决定性,但对于检测新冠病毒的深度学习算法来说却是如此。我们希望这一全面的综述能为该领域的研究人员提供全面的指导。