의학물리학

본문글자크기
  • [Front. Vet. Sci.] Deep-Learning-Based Automatic Segmentation of Head and Neck Organs for Radiation Therapy in Dogs

    2021년 09월호
    [Front. Vet. Sci.] Deep-Learning-Based Automatic Segmentation of Head and Neck Organs for Radiation Therapy in Dogs

    건국대, 연세의대 / 박정수, 최병수, 엄기동*, 김진성*

  • 출처
    Front. Vet. Sci.
  • 등재일
    2021 September
  • 저널이슈번호
    https://doi.org/10.3389/fvets.2021.721612
  • 내용

    바로가기  >

    Purpose: This study was conducted to develop a deep learning-based automatic segmentation (DLBAS) model of head and neck organs for radiotherapy (RT) in dogs, and to evaluate the feasibility for delineating the RT planning.

    Materials and Methods: The segmentation indicated that there were potentially 15 organs at risk (OARs) in the head and neck of dogs. Post-contrast computed tomography (CT) was performed in 90 dogs. The training and validation sets comprised 80 CT data sets, including 20 test sets. The accuracy of the segmentation was assessed using both the Dice similarity coefficient (DSC) and the Hausdorff distance (HD), and by referencing the expert contours as the ground truth. An additional 10 clinical test sets with relatively large displacement or deformation of organs were selected for verification in cancer patients. To evaluate the applicability in cancer patients, and the impact of expert intervention, three methods–HA, DLBAS, and the readjustment of the predicted data obtained via the DLBAS of the clinical test sets (HA_DLBAS)–were compared.

    Results: The DLBAS model (in the 20 test sets) showed reliable DSC and HD values; it also had a short contouring time of ~3 s. The average (mean ± standard deviation) DSC (0.83 ± 0.04) and HD (2.71 ± 1.01 mm) values were similar to those of previous human studies. The DLBAS was highly accurate and had no large displacement of head and neck organs. However, the DLBAS in the 10 clinical test sets showed lower DSC (0.78 ± 0.11) and higher HD (4.30 ± 3.69 mm) values than those of the test sets. The HA_DLBAS was comparable to both the HA (DSC: 0.85 ± 0.06 and HD: 2.74 ± 1.18 mm) and DLBAS presented better comparison metrics and decreased statistical deviations (DSC: 0.94 ± 0.03 and HD: 2.30 ± 0.41 mm). In addition, the contouring time of HA_DLBAS (30 min) was less than that of HA (80 min).

    Conclusion: In conclusion, HA_DLBAS method and the proposed DLBAS was highly consistent and robust in its performance. Thus, DLBAS has great potential as a single or supportive tool to the key process in RT planning.

     

     

    Affiliations

    Jeongsu Park1†,  Byoungsu Choi2†,  Jaeeun Ko1,  Jaehee Chun2,  Inkyung Park3,  Juyoung Lee3,  Jayon Kim1,  Jaehwan Kim1,  Kidong Eom1*‡ and  Jin Sung Kim2*‡
    1Department of Veterinary Medical Imaging, College of Veterinary Medicine, Konkuk University, Seoul, South Korea
    2Department of Radiation Oncology, Yonsei Cancer Center, Yonsei University College of Medicine, Seoul, South Korea
    3Department of Integrative Medicine, Yonsei Cancer Center, Yonsei University College of Medicine, Seoul, South Korea

  • 키워드
    radiation therapy; deep-learning-based automatic segmentation; head and neck cancer; dog head and neck; artificial intelligence
  • 편집위원

    논문의 강점은 최근 강아지 방사선치료에 대한 관심이 증가하지만 딥러닝을 이용한 연구가 진행되지 않았습니다. 본 연구는 처음으로 방사선 치료를 위한 강아지의 head & neck deep learning-based automatic segmentation (DLBAS) 모델을 개발했습니다. 논문에서 강아지의 head & neck 장기들의 자동분할이 가능한 것을 보여줬으며 다양한 평가를 통해 RT segmentation 도구로 임상에서도 활용될 수 있다는 것을 보여줬습니다. 본 연구를 통해 딥러닝을 이용해서 임상에서의 작업량을 최적화해서 임상에 큰 도움을 줄 수 있을 것으로 파악됩니다.

    덧글달기2021-09-07 14:41:49

  • 덧글달기
    덧글달기
       IP : 3.133.137.17

    등록