Fully automated multiorgan segmentation of female pelvic magnetic resonance images with coarse-to-fine convolutional neural network

被引:26
|
作者
Zabihollahy, Fatemeh [1 ]
Viswanathan, Akila N. [1 ]
Schmidt, Ehud J. [2 ]
Morcos, Marc [1 ]
Lee, Junghoon [1 ]
机构
[1] Johns Hopkins Univ, Dept Radiat Oncol & Mol Radiat Sci, Baltimore, MD USA
[2] Johns Hopkins Univ, Dept Med, Div Cardiol, Baltimore, MD USA
基金
美国国家卫生研究院;
关键词
deep learning; magnetic resonance imaging; multiorgan segmentation; radiotherapy; PROSTATE; ORGANS; RISK;
D O I
10.1002/mp.15268
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Purpose Brachytherapy combined with external beam radiotherapy (EBRT) is the standard treatment for cervical cancer and has been shown to improve overall survival rates compared to EBRT only. Magnetic resonance (MR) imaging is used for radiotherapy (RT) planning and image guidance due to its excellent soft tissue image contrast. Rapid and accurate segmentation of organs at risk (OAR) is a crucial step in MR image-guided RT. In this paper, we propose a fully automated two-step convolutional neural network (CNN) approach to delineate multiple OARs from T2-weighted (T2W) MR images. Methods We employ a coarse-to-fine segmentation strategy. The coarse segmentation step first identifies the approximate boundary of each organ of interest and crops the MR volume around the centroid of organ-specific region of interest (ROI). The cropped ROI volumes are then fed to organ-specific fine segmentation networks to produce detailed segmentation of each organ. A three-dimensional (3-D) U-Net is trained to perform the coarse segmentation. For the fine segmentation, a 3-D Dense U-Net is employed in which a modified 3-D dense block is incorporated into the 3-D U-Net-like network to acquire inter and intra-slice features and improve information flow while reducing computational complexity. Two sets of T2W MR images (221 cases for MR1 and 62 for MR2) were taken with slightly different imaging parameters and used for our network training and test. The network was first trained on MR1 which was a larger sample set. The trained model was then transferred to the MR2 domain via a fine-tuning approach. Active learning strategy was utilized for selecting the most valuable data from MR2 to be included in the adaptation via transfer learning. Results The proposed method was tested on 20 MR1 and 32 MR2 test sets. Mean +/- SD dice similarity coefficients are 0.93 +/- 0.04, 0.87 +/- 0.03, and 0.80 +/- 0.10 on MR1 and 0.94 +/- 0.05, 0.88 +/- 0.04, and 0.80 +/- 0.05 on MR2 for bladder, rectum, and sigmoid, respectively. Hausdorff distances (95th percentile) are 4.18 +/- 0.52, 2.54 +/- 0.41, and 5.03 +/- 1.31 mm on MR1 and 2.89 +/- 0.33, 2.24 +/- 0.40, and 3.28 +/- 1.08 mm on MR2, respectively. The performance of our method is superior to other state-of-the-art segmentation methods. Conclusions We proposed a two-step CNN approach for fully automated segmentation of female pelvic MR bladder, rectum, and sigmoid from T2W MR volume. Our experimental results demonstrate that the developed method is accurate, fast, and reproducible, and outperforms alternative state-of-the-art methods for OAR segmentation significantly (p < 0.05).
引用
收藏
页码:7028 / 7042
页数:15
相关论文
共 50 条
  • [31] A fully automated left atrium segmentation approach from late gadolinium enhanced magnetic resonance imaging based on a convolutional neural network
    Borra, Davide
    Andalo, Alice
    Paci, Michelangelo
    Fabbri, Claudio
    Corsi, Cristiana
    QUANTITATIVE IMAGING IN MEDICINE AND SURGERY, 2020, 10 (10) : 1894 - 1907
  • [32] A Coarse-to-Fine Multi-class Object Detection in Drone Images Using Convolutional Neural Networks
    Aburasain, R. Y.
    Edirisinghe, E. A.
    Zamim, M. Y.
    DIGITAL INTERACTION AND MACHINE INTELLIGENCE, MIDI 2021, 2022, 440 : 12 - 33
  • [33] A coarse-to-fine strategy for iterative segmentation using simplified pulse-coupled neural network
    Dongguo Zhou
    Chao Gao
    Yongcai Guo
    Soft Computing, 2014, 18 : 557 - 570
  • [34] Automated nasopharyngeal carcinoma segmentation in magnetic resonance images by combination of convolutional neural networks and graph cut
    Ma, Zongqing
    Wu, Xi
    Song, Qi
    Luo, Yong
    Wang, Yan
    Zhou, Jiliu
    EXPERIMENTAL AND THERAPEUTIC MEDICINE, 2018, 16 (03) : 2511 - 2521
  • [35] Convolutional neural network with a hybrid loss function for fully automated segmentation of lymphoma lesions in FDG PET images
    Yousefirizi, Fereshteh
    Dubljevic, Natalia
    Ahamed, Shadab
    Bloise, Ingrid
    Gowdy, Claire
    Hyun, Joo O.
    Farag, Youssef
    de Schaetzen, Rodrigue
    Martineau, Patrick
    Wilson, Don
    Uribe, Carlos F.
    Rahmim, Arman
    MEDICAL IMAGING 2022: IMAGE PROCESSING, 2022, 12032
  • [36] A coarse-to-fine strategy for iterative segmentation using simplified pulse-coupled neural network
    Zhou, Dongguo
    Gao, Chao
    Guo, Yongcai
    SOFT COMPUTING, 2014, 18 (03) : 557 - 570
  • [37] A Fully-Automatic Segmentation of the Carpal Tunnel from Magnetic Resonance Images Based on the Convolutional Neural Network-Based Approach
    Yang, Tai-Hua
    Yang, Cheng-Wei
    Sun, Yung-Nien
    Horng, Ming-Huwi
    JOURNAL OF MEDICAL AND BIOLOGICAL ENGINEERING, 2021, 41 (05) : 610 - 625
  • [38] A Fully-Automatic Segmentation of the Carpal Tunnel from Magnetic Resonance Images Based on the Convolutional Neural Network-Based Approach
    Tai-Hua Yang
    Cheng-Wei Yang
    Yung-Nien Sun
    Ming-Huwi Horng
    Journal of Medical and Biological Engineering, 2021, 41 : 610 - 625
  • [39] Automated Detection of Brain Tumor through Magnetic Resonance Images Using Convolutional Neural Network
    Gull, Sahar
    Akbar, Shahzad
    Khan, Habib Ullah
    BIOMED RESEARCH INTERNATIONAL, 2021, 2021
  • [40] Segmentation of uterus and placenta in MR images using a fully convolutional neural network
    Shahedi, Maysam
    Dormer, James D.
    Devi, Anusha T. T.
    Do, Quyen N.
    Xi, Yin
    Lewis, Matthew A.
    Madhuranthakam, Ananth J.
    Twickler, Diane M.
    Fei, Baowei
    MEDICAL IMAGING 2020: COMPUTER-AIDED DIAGNOSIS, 2020, 11314