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TL-med: A Two-stage transfer learning recognition model for medical images of COVID-19

机译:TL-med:一种针对 COVID-19 医学图像的两阶段迁移学习识别模型

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摘要

The recognition of medical images with deep learning techniques can assist physicians in clinical diagnosis, but the effectiveness of recognition models relies on massive amounts of labeled data. With the rampant development of the novel coronavirus (COVID-19) world-wide, rapid COVID-19 diagnosis has become an effective measure to combat the outbreak. However, labeled COVID-19 data are scarce. Therefore, we propose a two-stage transfer learning recognition model for medical images of COVID-19 (TL-Med) based on the concept of "generic domain-target-related domain-target domain". First, we use the Vision Trans-former (ViT) pretraining model to obtain generic features from massive heterogeneous data and then learn medical features from large-scale homogeneous data. Two-stage transfer learning uses the learned primary features and the underlying information for COVID-19 image recognition to solve the problem by which data insufficiency leads to the inability of the model to learn underlying target dataset information. The experimental results obtained on a COVID-19 dataset using the TL-Med model produce a recognition accuracy of 93.24, which shows that the proposed method is more effective in detecting COVID-19 images than other approaches and may greatly alleviate the problem of data scarcity in this field. (c) 2022 Published by Elsevier B.V. on behalf of Nalecz Institute of Biocybernetics and Bio-medical Engineering of the Polish Academy of Sciences.
机译:利用深度学习技术对医学图像进行识别可以帮助医生进行临床诊断,但识别模型的有效性依赖于大量的标记数据。随着新型冠状病毒(COVID-19)在全球范围内的猖獗发展,快速诊断COVID-19已成为抗击疫情的有效措施。然而,标记的 COVID-19 数据很少。因此,我们提出了一种基于“通用领域-靶点-相关领域-靶点领域”概念的COVID-19医学图像两阶段迁移学习识别模型(TL-Med)。首先,我们使用视觉变形器(ViT)预训练模型从海量异构数据中获取通用特征,然后从大规模同质数据中学习医学特征。两阶段迁移学习利用学习到的主要特征和基础信息进行 COVID-19 图像识别,以解决数据不足导致模型无法学习底层目标数据集信息的问题。使用TL-Med模型在COVID-19数据集上获得的实验结果产生了93.24%的识别准确率,这表明所提方法在检测COVID-19图像方面比其他方法更有效,并可能大大缓解该领域的数据稀缺问题。(c) 2022 年由 Elsevier B.V. 代表波兰科学院 Nalecz 生物控制论和生物医学工程研究所出版。

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