Clinical implementation of MRI-based organs-at-risk auto-segmentation with convolutional networks for prostate radiotherapy

被引:64
|
作者
Savenije, Mark H. F. [1 ,2 ]
Maspero, Matteo [1 ,2 ]
Sikkes, Gonda G. [1 ]
van der Voort van Zyp, Jochem R. N. [1 ]
T. J. Kotte, Alexis N. [1 ]
Bol, Gijsbert H. [1 ]
T. van den Berg, Cornelis A. [1 ,2 ]
机构
[1] Univ Med Ctr Utrecht, Dept Radiotherapy, Div Imaging & Oncol, Heidelberglaan 100, NL-3508 GA Utrecht, Netherlands
[2] Univ Med Ctr Utrecht, Ctr Image Sci, Computat Imaging Grp MR Diagnost & Therapy, Heidelberglaan 100, NL-3508 GA Utrecht, Netherlands
关键词
Prostate cancer; Radiotherapy; Magnetic resonance imaging; MR-only treatment planning; Delineation; Contouring; Segmentation; Artificial intelligence; Deep learning; COMPUTED-TOMOGRAPHY GENERATION; AUTOMATIC SEGMENTATION; RADIATION-THERAPY; TARGET VOLUME; DELINEATION; CT; FEASIBILITY; IMAGES; ATLAS;
D O I
10.1186/s13014-020-01528-0
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Background Structure delineation is a necessary, yet time-consuming manual procedure in radiotherapy. Recently, convolutional neural networks have been proposed to speed-up and automatise this procedure, obtaining promising results. With the advent of magnetic resonance imaging (MRI)-guided radiotherapy, MR-based segmentation is becoming increasingly relevant. However, the majority of the studies investigated automatic contouring based on computed tomography (CT). Purpose In this study, we investigate the feasibility of clinical use of deep learning-based automatic OARs delineation on MRI. Materials and methods We included 150 patients diagnosed with prostate cancer who underwent MR-only radiotherapy. A three-dimensional (3D) T1-weighted dual spoiled gradient-recalled echo sequence was acquired with 3T MRI for the generation of the synthetic-CT. The first 48 patients were included in a feasibility study training two 3D convolutional networks called DeepMedic and dense V-net (dV-net) to segment bladder, rectum and femurs. A research version of an atlas-based software was considered for comparison. Dice similarity coefficient, 95% Hausdorff distances (HD95), and mean distances were calculated against clinical delineations. For eight patients, an expert RTT scored the quality of the contouring for all the three methods. A choice among the three approaches was made, and the chosen approach was retrained on 97 patients and implemented for automatic use in the clinical workflow. For the successive 53 patients, Dice, HD95 and mean distances were calculated against the clinically used delineations. Results DeepMedic, dV-net and the atlas-based software generated contours in 60 s, 4 s and 10-15 min, respectively. Performances were higher for both the networks compared to the atlas-based software. The qualitative analysis demonstrated that delineation from DeepMedic required fewer adaptations, followed by dV-net and the atlas-based software. DeepMedic was clinically implemented. After retraining DeepMedic and testing on the successive patients, the performances slightly improved. Conclusion High conformality for OARs delineation was achieved with two in-house trained networks, obtaining a significant speed-up of the delineation procedure. Comparison of different approaches has been performed leading to the succesful adoption of one of the neural networks, DeepMedic, in the clinical workflow. DeepMedic maintained in a clinical setting the accuracy obtained in the feasibility study.
引用
收藏
页数:12
相关论文
共 50 条
  • [21] Automatic Segmentation of Clinical Target Volume and Organs-at-Risk for Breast Conservative Radiotherapy Using a Convolutional Neural Network
    Liu, Zhikai
    Liu, Fangjie
    Chen, Wanqi
    Tao, Yinjie
    Liu, Xia
    Zhang, Fuquan
    Shen, Jing
    Guan, Hui
    Zhen, Hongnan
    Wang, Shaobin
    Chen, Qi
    Chen, Yu
    Hou, Xiaorong
    CANCER MANAGEMENT AND RESEARCH, 2021, 13 : 8209 - 8217
  • [22] Localized fine-tuning and clinical evaluation of deep-learning based auto-segmentation (DLAS) model for clinical target volume (CTV) and organs-at-risk (OAR) in rectal cancer radiotherapy
    Geng, Jianhao
    Sui, Xin
    Du, Rongxu
    Feng, Jialin
    Wang, Ruoxi
    Wang, Meijiao
    Yao, Kaining
    Chen, Qi
    Bai, Lu
    Wang, Shaobin
    Li, Yongheng
    Wu, Hao
    Hu, Xiangmin
    Du, Yi
    RADIATION ONCOLOGY, 2024, 19 (01)
  • [23] Prospective Evaluation of Prostate and Organs at Risk Segmentation Software for MRI-based Prostate Radiation Therapy
    Sanders, Jeremiah W.
    Kudchadker, Rajat J.
    Tang, Chad
    Mok, Henry
    Venkatesan, Aradhana M.
    Thames, Howard D.
    Frank, Steven J.
    RADIOLOGY-ARTIFICIAL INTELLIGENCE, 2022, 4 (02)
  • [24] Development of a Deep Learning-Based Auto-Segmentation of Organs at Risk for Head and Neck Radiotherapy Planning
    Koo, J.
    Latifi, K.
    Caudell, J. J.
    Jordan, P.
    Shen, S.
    Adamson, P. M.
    Feygelman, V.
    INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2022, 112 (05): : E8 - E8
  • [25] Auto-segmentation of head and neck organs at risk in radiotherapy and its dependence on anatomic similarity
    Ayyalusamy, Anantharaman
    Vellaiyan, Subramani
    Subramanian, Shanmuga
    Ilamurugu, Arivarasan
    Satpathy, Shyama
    Nauman, Mohammed
    Katta, Gowtham
    Madineni, Aneesha
    RADIATION ONCOLOGY JOURNAL, 2019, 37 (02): : 134 - 142
  • [26] Fast Validation of Auto-Segmentation Based on MRI Texture Features for MRI-Based Online Adaptive Replanning
    Zhang, Y.
    Schott, D.
    Li, A.
    INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2018, 102 (03): : S55 - S56
  • [27] Evaluation of Atlas-Based Auto-Segmentation(ABAS) of Organs-At-Risk(OARs) in Cervical Cancer Using Different Atlas Sizes
    Wang, J.
    Liu, B.
    Zhang, H.
    Yang, W.
    Qu, B.
    Zhang, G.
    Xu, S.
    MEDICAL PHYSICS, 2018, 45 (06) : E230 - E230
  • [28] MRI-based Proton Radiotherapy for Prostate Cancer Using Deep Convolutional Neural Networks
    Yang, X.
    Liu, Y.
    Lei, Y.
    Wang, Y.
    Shafai-Erfani, G.
    Wang, T.
    Tian, S.
    Patel, P. R.
    Jani, A.
    Curran, W. J., Jr.
    McDonald, M. W.
    Zhou, J.
    Liu, T.
    INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2019, 105 (01): : S200 - S200
  • [29] Clinical evaluation of deep learning and atlas-based auto-segmentation for organs at risk delineation
    Yamauchi, Ryohei
    Itazawa, Tomoko
    Kobayashi, Takako
    Kashiyama, Shiho
    Akimoto, Hiroyoshi
    Mizuno, Norifumi
    Kawamori, Jiro
    MEDICAL DOSIMETRY, 2024, 49 (03) : 167 - 176
  • [30] Boosting-based cascaded convolutional neural networks for the segmentation of CT organs-at-risk in nasopharyngeal carcinoma
    Zhong, Tao
    Huang, Xia
    Tang, Fan
    Liang, Shujun
    Deng, Xiaogang
    Zhang, Yu
    MEDICAL PHYSICS, 2019, 46 (12) : 5602 - 5611