Brain Tumor Semantic Segmentation using Residual U-Net++ Encoder-Decoder Architecture

被引:0
作者
Mokhtar, Mai [1 ]
Abdel-Galil, Hala [1 ]
Khoriba, Ghada [1 ,2 ]
机构
[1] Helwan Univ, Fac Comp & Artificial Intelligence, Comp Sci Dept, Cairo, Egypt
[2] Nile Univ, Sch Informat Technol & Comp Sci ITCS, Giza, Egypt
关键词
Brain tumor segmentation; medical image segmen-tation; BraTS; U-Net; U-Net++; residual network;
D O I
10.14569/IJACSA.2023.01406119
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Image segmentation is considered one of the essen-tial tasks for extracting useful information from an image. Given the brain tumor and its consumption of medical resources, the development of a deep learning method for MRI to segment the brain tumor of patients' MRI is illustrated here. Brain tumor segmentation technique is crucial in detecting and treating MRI brain tumors. Furthermore, it assists physicians in locating and measuring tumors and developing treatment and rehabilitation programs. The residual U-Net++ encoder-decoder-based architec-ture is designed as the primary network, and it is an architecture that is hybridized between ResU-Net and U-Net++. The proposed Residual U-Net++ is applied to MRI brain images for the most recent and well-known global benchmark challenges: BraTS 2017, BraTS 2019, and BraTS 2021. The proposed approach is evaluated based on brain tumor MRI images. The results with the BraST 2021 dataset with a dice similarity coefficient (DSC) is 90.3%, sensitivity is 96%, specificity is 99%, and 95% Hausdorff distance (HD) is 9.9. With the BraST 2019 dataset, a DSC is 89.2%, sensitivity is 96%, specificity is 99%, and HD is 10.2. With the BraST 2017 dataset, a DSC is 87.6%, sensitivity is 94%, specificity is 99%, and HD is 11.2. Furthermore, Residual U-Net++ outperforms the standard brain tumor segmentation approaches. The experimental results indicated that the proposed method is promising and can provide better segmentation than the standard U-Net. The segmentation improvement could help radiologists increase their radiologist segmentation accuracy and save time by 3%.
引用
收藏
页码:1110 / 1117
页数:8
相关论文
共 24 条
  • [21] Generalised Dice Overlap as a Deep Learning Loss Function for Highly Unbalanced Segmentations
    Sudre, Carole H.
    Li, Wenqi
    Vercauteren, Tom
    Ourselin, Sebastien
    Cardoso, M. Jorge
    [J]. DEEP LEARNING IN MEDICAL IMAGE ANALYSIS AND MULTIMODAL LEARNING FOR CLINICAL DECISION SUPPORT, 2017, 10553 : 240 - 248
  • [22] NAS-Unet: Neural Architecture Search for Medical Image Segmentation
    Weng, Yu
    Zhou, Tianbao
    Li, Yujie
    Qiu, Xiaoyu
    [J]. IEEE ACCESS, 2019, 7 : 44247 - 44257
  • [23] MRI Brain Tumor Segmentation Using Deep Encoder-Decoder Convolutional Neural Networks
    Yan, Benjamin B.
    Wei, Yujia
    Jagtap, Jaidip Manikrao M.
    Moassefi, Mana
    Garcia, Diana V. Vera
    Singh, Yashbir
    Vahdati, Sanaz
    Faghani, Shahriar
    Erickson, Bradley J.
    Conte, Gian Marco
    [J]. BRAINLESION: GLIOMA, MULTIPLE SCLEROSIS, STROKE AND TRAUMATIC BRAIN INJURIES, BRAINLES 2021, PT II, 2022, 12963 : 80 - 89
  • [24] Attention Gate ResU-Net for Automatic MRI Brain Tumor Segmentation
    Zhang, Jianxin
    Jiang, Zongkang
    Dong, Jing
    Hou, Yaqing
    Liu, Bin
    [J]. IEEE ACCESS, 2020, 8 : 58533 - 58545