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An Improved Capsule Network for Glioma Segmentation on Mri Images: A Curriculum Learning Approach Publisher Pubmed



Amiri Tehrani Zade A1, 2 ; Aziz MJ1, 2 ; Masoudnia S3, 5 ; Mirbagheri A2, 4 ; Ahmadian A1, 2
Authors
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Authors Affiliations
  1. 1. Image-Guided Surgery Group, Research Centre of Biomedical Technology and Robotics (RCBTR), Tehran University of Medical Sciences, Tehran, Iran
  2. 2. Medical Physics and Biomedical Engineering Department, Faculty of Medicine, Tehran University of Medical Sciences (TUMS), Iran
  3. 3. Research Center for Molecular and Cellular Imaging, Advanced Medical Technologies and Equipment Institute (AMTEI), Tehran University of Medical Sciences, Tehran, Iran
  4. 4. Research the Center for Biomedical Technologies and Robotics (RCBTR), Advanced Medical Technologies and Equipment Institute (AMTEI), Tehran University of Medical Sciences (TUMS), Tehran, Iran
  5. 5. School of Cognitive Sciences, Institute for Research in Fundamental Sciences (IPM), Tehran, Iran

Source: Computers in Biology and Medicine Published:2022


Abstract

Glioma segmentation is an essential step in tumor identification and treatment planning. Glioma segmentation is a challenging task because it appears with blurred and irregular boundaries in a variety of shapes. In this paper, we propose an efficient and novel model for automatic glioma segmentation based on capsule neural networks. We improved the architecture and training of the SegCaps model, the first capsule-based segmentation network. The proposed architecture is improved by introducing dilation blocks in the primary capsule block to get deeper features while avoiding resolution reduction. The prediction layer of the network is also modified using one-dimensional convolution filters, enabling the network to not only maximize tumor existence likelihood but also regularize the capsule orientations within the tumor. Our main contribution, however, is to introduce an enhanced curriculum-based training algorithm into the proposed SegCaps model. We adapt the curriculum learning for the model by suggesting a new pacing mechanism based on a roulette-wheel selection algorithm that enriches randomness in the network and prevents bias. A hybrid dice loss function is also employed, which is better adapted to the introduced curriculum-based training procedure. We evaluated the performance of improved SegCaps on the BraTS2020, a multimodal benchmark dataset for brain tumor segmentation. The experimental results confirmed that the improvements yield a top-performing yet memory-efficient deep capsule architecture. The proposed model outperformed the best-reported accuracies on the BraTS2020, achieving improved dice scores of 85.16% and 81.88% for tumor core and enhancing tumor segmentation, respectively. Using 90%, fewer parameters than the popular U-Net also confirmed the high memory efficiency of our proposed model. © 2022
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1. Accurate Automatic Glioma Segmentation in Brain Mri Images Based on Capsnet, Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society# EMBS (2021)
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)
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