의학물리학

본문글자크기
  • [Med Phys .] Attention fusion network with self-supervised learning for staging of osteonecrosis of the femoral head (ONFH) using multiple MR protocols

    [Med Phys .] Attention fusion network with self-supervised learning for staging of osteonecrosis of the femoral head (ONFH) using multiple MR protocols

    중앙의대, KAIST / 김보민, 이근영*, 박성홍*

  • 출처
    Med Phys .
  • 등재일
    2023 Sep
  • 저널이슈번호
    50(9):5528-5540. doi: 10.1002/mp.16380. Epub 2023 Mar 30.
  • 내용

    바로가기  >

    Abstract
    Background: Osteonecrosis of the femoral head (ONFH) is characterized as bone cell death in the hip joint, involving a severe pain in the groin. The staging of ONFH is commonly based on Magnetic resonance imaging and computed tomography (CT), which are important for establishing effective treatment plans. There have been some attempts to automate ONFH staging using deep learning, but few of them used only MR images.

    Purpose: To propose a deep learning model for MR-only ONFH staging, which can reduce additional cost and radiation exposure from the acquisition of CT images.

    Methods: We integrated information from the MR images of five different imaging protocols by a newly proposed attention fusion method, which was composed of intra-modality attention and inter-modality attention. In addition, a self-supervised learning was used to learn deep representations from a large amount of paired MR-CT dataset. The encoder part of the MR-CT translation network was used as a pretraining network for the staging, which aimed to overcome the lack of annotated data for staging. Ablation studies were performed to investigate the contributions of each proposed method. The area under the receiver operating characteristic curve (AUROC) was used to evaluate the performance of the networks.

    Results: Our model improved the performance of the four-way classification of the association research circulation osseous (ARCO) stage using MR images of the multiple protocols by 6.8%p in AUROC over a plain VGG network. Each proposed method increased the performance by 4.7%p (self-supervised learning) and 2.6%p (attention fusion) in AUROC, which was demonstrated by the ablation experiments.

    Conclusions: We have shown the feasibility of the MR-only ONFH staging by using self-supervised learning and attention fusion. A large amount of paired MR-CT data in hospitals can be used to further improve the performance of the staging, and the proposed method has potential to be used in the diagnosis of various diseases that require staging from multiple MR protocols.

     

    그림 제안하는 딥러닝 네트워크의 전체적인 scheme

     

     

    Affiliations

    Bomin Kim 1, Geun Young Lee 2, Sung-Hong Park 1
    1Department of Bio and Brain Engineering, KAIST, Daejeon, Republic of Korea.
    2Department of Radiology, Chung-Ang University Gwangmyeong Hospital, Chung-Ang University College of Medicine, Republic of Korea.

  • 키워드
    MR-only staging; attention fusion; multiple MR protocols; osteonecrosis of femoral head; self-supervised learning.
  • 연구소개
    임상에서는 정확한 대퇴골두 골괴사(ONFH)의 staging을 위하여 MRI와 CT를 모두 이용합니다. 본 논문에서는 MRI만을 이용해서 CT를 함께 이용한 경우와 비슷한 staging 정확도를 보이는 새로운 딥러닝 네트워크를 개발하였습니다. 구체적으로, 데이터 수의 한계를 극복하기 위하여, stage 정보는 없지만 CT와 다중 대조도 MRI가 pair로 있는 많은 데이터를 통해 중요한 feature를 학습(self supervised learning)한 후, 학습한 feature들의 encoder 파트에 대하여 intra-modality attention, inter-modality attention 및 linear classifier을 적용하여 네트워크의 정확도를 크게 개선하였습니다. 본 논문은 대퇴골두 골괴사의 stage를 MRI 촬영만으로 정확하게 진단하는 가능성을 보였고, 향후 다양한 질환을 staging함에 있어 데이터 수의 한계를 극복하고 정확도를 높이는 방법을 제시하고 있습니다.
  • 덧글달기
    덧글달기
       IP : 18.117.216.36

    등록