COVID-19 detection and classification: key AI challenges and recommendations for the way forward

Althinyan Albatoul, Mirza Abdulrahman, Aly Sherin, Nouh Thamer, Mahboub Bassam, Salameh Laila, Alkubeyyer Metab, AlSalamah Shada A
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Abstract

Coronavirus disease (COVID-19) is a viral pneumonia that is found in China and has spread globally. Early diagnosis is important for effective and timely treatment. Thus, many ongoing studies attempt to solve key COVID-19 problems such as workload classification, detection, and differentiation from other pneumonia and healthy lungs using different imaging modalities. Researchers have identified some limitations in the deployment of deep learning methods to detect COVID-19, but there are still unmet challenges to be addressed. The use of binary classifiers or building classifiers based on only a few classes is some of the limitations that most of the existing research on the COVID-19 classification problem suffers from. Additionally, most prior studies have focused on model or ensemble models that depend on a flat single-feature imaging modality without using any clinical information or benefiting from the hierarchical structure of pneumonia, which leads to clinical challenges, and evaluated their systems using a small public dataset. Additionally, reliance on diagnostic processes based on CT as the main imaging modality, ignoring chest X-rays. Radiologists, computer scientists, and physicians all need to come to an understanding of these interdisciplinary issues. This article first highlights the challenges of deep learning deployment for COVID-19 detection using a literature review and document analysis. Second, it provides six key recommendations that could assist future researchers in this field in improving the diagnostic process for COVID-19. However, there is a need for a collective effort from all of them to consider the provided recommendations to effectively solve these issues.
COVID-19的检测和分类:人工智能的主要挑战和未来的建议
冠状病毒病(COVID-19)是一种在中国发现并在全球传播的病毒性肺炎。早期诊断对于有效和及时的治疗非常重要。因此,许多正在进行的研究试图通过不同的成像方式解决COVID-19的关键问题,如工作量分类、检测以及与其他肺炎和健康肺的区分。研究人员已经发现,在部署深度学习方法检测COVID-19方面存在一些局限性,但仍有未解决的挑战需要解决。使用二元分类器或仅基于少数类构建分类器是大多数现有研究COVID-19分类问题所面临的一些局限性。此外,大多数先前的研究都集中在模型或集成模型上,这些模型或集成模型依赖于扁平的单一特征成像模式,而不使用任何临床信息或受益于肺炎的分层结构,这导致了临床挑战,并使用小型公共数据集评估了他们的系统。此外,依赖以CT为主要成像方式的诊断过程,忽视了胸部x光片。放射科医生、计算机科学家和内科医生都需要了解这些跨学科的问题。本文首先通过文献综述和文档分析强调了在COVID-19检测中部署深度学习的挑战。其次,它提出了六项关键建议,可以帮助该领域的未来研究人员改进COVID-19的诊断过程。但是,需要所有这些国家共同努力,考虑提供的建议,以有效地解决这些问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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