1. A semi-supervised learning approach for COVID-19 detection from chest CT scans.
- Author
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Zhang, Yong, Su, Li, Liu, Zhenxing, Tan, Wei, Jiang, Yinuo, and Cheng, Cheng
- Subjects
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SUPERVISED learning , *COMPUTED tomography , *RECEIVER operating characteristic curves , *COVID-19 , *COVID-19 pandemic , *CONVOLUTIONAL neural networks - Abstract
• An semi-supervised learning method is proposed to improve diagnostic efficiency of covid-19 CT images. • Based on MixMatch, new data enhancement methods and training methods are introduced to reduce the risk of model over fitting. • Data enhancement method with MixMatch is introduced to reduce model over fitting. • CNN with attention mechanism is constructed to learn features from images more effectively. COVID-19 has spread rapidly all over the world and has infected more than 200 countries and regions. Early screening of suspected infected patients is essential for preventing and combating COVID-19. Computed Tomography (CT) is a fast and efficient tool which can quickly provide chest scan results. To reduce the burden on doctors of reading CTs, in this article, a high precision diagnosis algorithm of COVID-19 from chest CTs is designed for intelligent diagnosis. A semi-supervised learning approach is developed to solve the problem when only small amount of labelled data is available. While following the MixMatch rules to conduct sophisticated data augmentation, we introduce a model training technique to reduce the risk of model over-fitting. At the same time, a new data enhancement method is proposed to modify the regularization term in MixMatch. To further enhance the generalization of the model, a convolutional neural network based on an attention mechanism is then developed that enables to extract multi-scale features on CT scans. The proposed algorithm is evaluated on an independent CT dataset of the chest from COVID-19 and achieves the area under the receiver operating characteristic curve (AUC) value of 0.932, accuracy of 90.1%, sensitivity of 91.4%, specificity of 88.9%, and F1-score of 89.9%. The results show that the proposed algorithm can accurately diagnose whether a chest CT belongs to a positive or negative indication of COVID-19, and can help doctors to diagnose rapidly in the early stages of a COVID-19 outbreak. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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