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Residual U-Network for Breast Tumor Segmentation from Magnetic Resonance Images
Authors:Ishu Anand  Himani Negi  Deepika Kumar  Mamta Mittal  Tai-hoon Kim  Sudipta Roy
Affiliation:1.Department of Computer Science & Engineering, Bharati Vidyapeeth’s College of Engineering, New Delhi, 110063, India2 Department of Computer Science & Engineering, G B Pant Govt. College of Engineering, New Delhi, 110020, India3 Glocal Campus, Konkuk University, Chungju-si Chungcheongbuk-do, 27478, Korea4 Washington University in St. Louis, MO, 63110, USA
Abstract:Breast cancer positions as the most well-known threat and the main source of malignant growth-related morbidity and mortality throughout the world. It is apical of all new cancer incidences analyzed among females. Two features substantially influence the classification accuracy of malignancy and benignity in automated cancer diagnostics. These are the precision of tumor segmentation and appropriateness of extracted attributes required for the diagnosis. In this research, the authors have proposed a ResU-Net (Residual U-Network) model for breast tumor segmentation. The proposed methodology renders augmented, and precise identification of tumor regions and produces accurate breast tumor segmentation in contrast-enhanced MR images. Furthermore, the proposed framework also encompasses the residual network technique, which subsequently enhances the performance and displays the improved training process. Over and above, the performance of ResU-Net has experimentally been analyzed with conventional U-Net, FCN8, FCN32. Algorithm performance is evaluated in the form of dice coefficient and MIoU (Mean Intersection of Union), accuracy, loss, sensitivity, specificity, F1score. Experimental results show that ResU-Net achieved validation accuracy & dice coefficient value of 73.22% & 85.32% respectively on the Rider Breast MRI dataset and outperformed as compared to the other algorithms used in experimentation.
Keywords:UNet  segmentation  residual network  breast cancer  dice coefficient  MRI
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