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Accurate Automatic Glioma Segmentation in Brain Mri Images Based on Capsnet Publisher Pubmed



Aziz MJ1, 2 ; Amiri Tehrani Zade A1, 2 ; Farnia P1, 2 ; Alimohamadi M3 ; Makkiabadi B4 ; Ahmadian A1, 2 ; Alirezaie J5
Authors
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Authors Affiliations
  1. 1. Tehran University of Medical Sciences, Image-Guided Surgery Group, Research Centre of Biomedical Technology and Robotics (RCBTR), Tehran, Iran
  2. 2. Medical Physics and Biomedical Engineering Department, Faculty of Medicine, Tehran University of Medical Sciences (TUMS)
  3. 3. Brain and spinal cord injury research center, Neuroscience Institute, Tehran University of Medical Sciences (TUMS), Tehran, Iran
  4. 4. Medical Physics and Biomedical Engineering Department, Faculty of Medicine, Tehran University of Medical Sciences
  5. 5. Department of Electrical and Computer Engineering, Ryerson University, Toronto, ON, Canada

Source: Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society# EMBS Published:2021


Abstract

Glioma is a highly invasive type of brain tumor with an irregular morphology and blurred infiltrative borders that may affect different parts of the brain. Therefore, it is a challenging task to identify the exact boundaries of the tumor in an MR image. In recent years, deep learning-based Convolutional Neural Networks (CNNs) have gained popularity in the field of image processing and have been utilized for accurate image segmentation in medical applications. However, due to the inherent constraints of CNNs, tens of thousands of images are required for training, and collecting and annotating such a large number of images poses a serious challenge for their practical implementation. Here, for the first time, we have optimized a network based on the capsule neural network called SegCaps, to achieve accurate glioma segmentation on MR images. We have compared our results with a similar experiment conducted using the commonly utilized U-Net. Both experiments were performed on the BraTS2020 challenging dataset. For U-Net, network training was performed on the entire dataset, whereas a subset containing only 20% of the whole dataset was used for the SegCaps. To evaluate the results of our proposed method, the Dice Similarity Coefficient (DSC) was used. SegCaps and U-Net reached DSC of 87.96% and 85.56% on glioma tumor core segmentation, respectively. The SegCaps uses convolutional layers as the basic components and has the intrinsic capability to generalize novel viewpoints. The network learns the spatial relationship between features using dynamic routing of capsules. These capabilities of the capsule neural network have led to a 3% improvement in results of glioma segmentation with fewer data while it contains 95.4% fewer parameters than U-Net. © 2021 IEEE.
2. A Hybrid Capsule Network for Automatic 3D Mandible Segmentation Applied in Virtual Surgical Planning, Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society# EMBS (2022)
3. Fundamentals of Navigation Surgery, Navigation in Oral and Maxillofacial Surgery: Applications# Advances# and Limitations (2022)
4. Light-Emitting Diode Based Photoacoustic Imaging System, Frontiers in Biomedical Technologies (2020)
6. Curvelet Based Residual Complexity Objective Function for Non-Rigid Registration of Pre-Operative Mri With Intra-Operative Ultrasound Images, Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society# EMBS (2016)
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