迈向COVID-19智能诊断方法:医学成像深度学习综述

Marjan Jalali Moghaddam, Mina Ghavipour
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摘要

自2019年12月以来,被称为COVID-19的传染病在世界各地急剧蔓延。快速诊断和隔离受感染患者是减缓该病毒传播和更好地管理大流行的关键因素。尽管CT和x射线模式通常用于诊断COVID-19,但从医学图像中识别COVID-19患者是一项耗时且容易出错的任务。人工智能在加快和优化新冠肺炎的预后和诊断过程中显示出巨大的潜力。本文回顾了2020年1月至2021年10月期间使用CT和x射线胸部图像诊断COVID-19患者的深度学习(DL)技术应用的出版物。我们的审查只关注同行评议的、记录良好的文章。它提供了这些文章中开发的模型的技术细节的全面总结,并讨论了使用DL技术对COVID-19进行智能诊断的挑战。基于这些挑战,似乎开发的模型在临床应用中的有效性需要进一步研究。本文提供了一些建议,以帮助研究人员开发更准确的预测模型。
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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Towards smart diagnostic methods for COVID-19: Review of deep learning for medical imaging

The infectious disease known as COVID-19 has spread dramatically all over the world since December 2019. The fast diagnosis and isolation of infected patients are key factors in slowing down the spread of this virus and better management of the pandemic. Although the CT and X-ray modalities are commonly used for the diagnosis of COVID-19, identifying COVID-19 patients from medical images is a time-consuming and error-prone task. Artificial intelligence has shown to have great potential to speed up and optimize the prognosis and diagnosis process of COVID-19. Herein, we review publications on the application of deep learning (DL) techniques for diagnostics of patients with COVID-19 using CT and X-ray chest images for a period from January 2020 to October 2021. Our review focuses solely on peer-reviewed, well-documented articles. It provides a comprehensive summary of the technical details of models developed in these articles and discusses the challenges in the smart diagnosis of COVID-19 using DL techniques. Based on these challenges, it seems that the effectiveness of the developed models in clinical use needs to be further investigated. This review provides some recommendations to help researchers develop more accurate prediction models.

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来源期刊
IPEM-translation
IPEM-translation Medicine and Dentistry (General)
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