A systematic scoping review of the analysis of COVID-19 disease using chest X-ray images with deep learning models

Kirti Saini, Reeta Devi
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Abstract

The significance of chest X-ray data in screening patients for COVID-19 has been recognised by medical experts. Deep learning (DL) technologies, particularly artificial intelligence (AI) algorithms, have emerged as efficient classifiers for diagnosing disease through the inspection of chest X-rays. Medical professionals may use deep learning skills to effectively allocate resources and prioritise patients, ensuring that people in critical need of medical attention receive it on time. In reviewed papers, chest X-ray images datasets are used in order to investigate if trained convolutional neural networks (CNNs) can be utilized to accurately classify COVID-19 cases. The study is made more fascinating by the availability of many kinds of new DL models designed specifically for this specific purpose. As the findings illustrate the efficacy of fine-tuned pretrained CNNs for COVID-19 identification using chest X-ray data, the usage of AI-based approaches for COVID-19 identification using chest X-ray data should see substantial growth, giving a more quick and cost-effective approach. The combination of CNN technology and the diagnostic capacity of chest X-ray imaging offers a lot of promise in the fight against COVID-19. Ultimately, the goal is to reduce the strain on healthcare resources and improve patient outcomes by providing medical practitioners with dependable technologies, such as those based on the artificial intelligence (AI), that can aid in real-time monitoring, rapid diagnosis, and patient triage. These advancements enable more effective use of healthcare resources, which benefits patients.
利用深度学习模型对使用胸部 X 光图像的 COVID-19 疾病进行分析的系统性范围审查
胸部 X 射线数据在筛查 COVID-19 患者方面的重要性已得到医学专家的认可。深度学习(DL)技术,尤其是人工智能(AI)算法,已成为通过检查胸部 X 光片诊断疾病的高效分类器。医疗专业人员可利用深度学习技能有效分配资源和确定病人的优先次序,确保急需医疗救助的人及时得到救助。在综述论文中,使用了胸部 X 光图像数据集,以研究是否可以利用训练有素的卷积神经网络 (CNN) 对 COVID-19 病例进行准确分类。由于有多种专为这一特定目的设计的新型卷积神经网络模型,这项研究变得更加引人入胜。研究结果表明,经过微调的预训练 CNN 对使用胸部 X 光数据进行 COVID-19 鉴定非常有效,因此基于人工智能的方法在使用胸部 X 光数据进行 COVID-19 鉴定方面的应用应会大幅增长,从而提供更快速、更经济的方法。CNN 技术与胸部 X 射线成像诊断能力的结合为对抗 COVID-19 带来了巨大希望。最终,我们的目标是通过为医疗从业人员提供可靠的技术(如基于人工智能(AI)的技术),帮助他们进行实时监测、快速诊断和患者分流,从而减轻医疗资源的压力,改善患者的治疗效果。这些进步能够更有效地利用医疗资源,使患者受益。
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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