Author: Dong, Jiale; Liu, Caiwei; Man, Panpan; Zhao, Guohua; Wu, Yaping; Lin, Yusong
                    Title: Fp(roi)-GAN with Fused Regional Features for the Synthesis of High-Quality Paired Medical Images  Cord-id: udurlif3  Document date: 2021_4_26
                    ID: udurlif3
                    
                    Snippet: The use of medical image synthesis with generative adversarial networks (GAN) is effective for expanding medical samples. The structural consistency between the synthesized and actual image is a key indicator of the quality of the synthesized image, and the region of interest (ROI) of the synthesized image is related to its usability, and these parameters are the two key issues in image synthesis. In this paper, the fusion-ROI patch GAN (Fp(roi)-GAN) model was constructed by incorporating a prio
                    
                    
                    
                     
                    
                    
                    
                    
                        
                            
                                Document: The use of medical image synthesis with generative adversarial networks (GAN) is effective for expanding medical samples. The structural consistency between the synthesized and actual image is a key indicator of the quality of the synthesized image, and the region of interest (ROI) of the synthesized image is related to its usability, and these parameters are the two key issues in image synthesis. In this paper, the fusion-ROI patch GAN (Fp(roi)-GAN) model was constructed by incorporating a priori regional feature based on the two-stage cycle consistency mechanism of cycleGAN. This model has improved the tissue contrast of ROI and achieved the pairwise synthesis of high-quality medical images and their corresponding ROIs. The quantitative evaluation results in two publicly available datasets, INbreast and BRATS 2017, show that the synthesized ROI images have a DICE coefficient of 0.981 ± 0.11 and a Hausdorff distance of 4.21 ± 2.84 relative to the original images. The classification experimental results show that the synthesized images can effectively assist in the training of machine learning models, improve the generalization performance of prediction models, and improve the classification accuracy by 4% and sensitivity by 5.3% compared with the cycleGAN method. Hence, the paired medical images synthesized using Fp(roi)-GAN have high quality and structural consistency with real medical images.
 
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