Alghamdi Hanan S, Amoudi Ghada, Elhag Salma, Saeedi Kawther, Nasser Jomanah
Information Systems DepartmentFaculty of Computing and Information TechnologyKing Abdulaziz University Jeddah 21589 Saudi Arabia.
Faculty of MedicineKing Abdulaziz University Jeddah 80215 Saudi Arabia.
IEEE Access. 2021 Jan 25;9:20235-20254. doi: 10.1109/ACCESS.2021.3054484. eCollection 2021.
Chest X-ray (CXR) imaging is a standard and crucial examination method used for suspected cases of coronavirus disease (COVID-19). In profoundly affected or limited resource areas, CXR imaging is preferable owing to its availability, low cost, and rapid results. However, given the rapidly spreading nature of COVID-19, such tests could limit the efficiency of pandemic control and prevention. In response to this issue, artificial intelligence methods such as deep learning are promising options for automatic diagnosis because they have achieved state-of-the-art performance in the analysis of visual information and a wide range of medical images. This paper reviews and critically assesses the preprint and published reports between March and May 2020 for the diagnosis of COVID-19 via CXR images using convolutional neural networks and other deep learning architectures. Despite the encouraging results, there is an urgent need for public, comprehensive, and diverse datasets. Further investigations in terms of explainable and justifiable decisions are also required for more robust, transparent, and accurate predictions.
胸部X光(CXR)成像 是用于疑似冠状病毒病(COVID-19)病例的一种标准且关键的检查方法。在受影响严重或资源有限的地区,CXR成像因其可用性、低成本和快速出结果而更受青睐。然而,鉴于COVID-19的快速传播特性,此类检测可能会限制疫情防控的效率。针对这一问题,诸如深度学习等人工智能方法是自动诊断的有前景的选择,因为它们在视觉信息分析和广泛的医学图像分析中已取得了领先的性能。本文回顾并批判性地评估了2020年3月至5月期间通过使用卷积神经网络和其他深度学习架构的CXR图像诊断COVID-19的预印本和已发表报告。尽管取得了令人鼓舞的结果,但迫切需要公开、全面且多样的数据集。为了做出更稳健、透明和准确的预测,还需要在可解释和合理决策方面进行进一步研究。