의학물리학

본문글자크기
  • [Phys Med Biol .] Deep learning method for reducing metal artifacts in dental cone-beam CT using supplementary information from intra-oral scan

    국가수리과학연구소 / 현창민, 박형석*

  • 출처
    Phys Med Biol .
  • 등재일
    2022 Aug 25
  • 저널이슈번호
    67(17). doi: 10.1088/1361-6560/ac8852.
  • 내용

    바로가기  >

    Abstract
    Objective.Recently, dental cone-beam computed tomography (CBCT) methods have been improved to significantly reduce radiation dose while maintaining image resolution with minimal equipment cost. In low-dose CBCT environments, metallic inserts such as implants, crowns, and dental fillings cause severe artifacts, which result in a significant loss of morphological structures of teeth in reconstructed images. Such metal artifacts prevent accurate 3D bone-teeth-jaw modeling for diagnosis and treatment planning. However, the performance of existing metal artifact reduction (MAR) methods in handling the loss of the morphological structures of teeth in reconstructed CT images remains relatively limited. In this study, we developed an innovative MAR method to achieve optimal restoration of anatomical details.Approach.The proposed MAR approach is based on a two-stage deep learning-based method. In the first stage, we employ a deep learning network that utilizes intra-oral scan data as side-inputs and performs multi-task learning of auxiliary tooth segmentation. The network is designed to improve the learning ability of capturing teeth-related features effectively while mitigating metal artifacts. In the second stage, a 3D bone-teeth-jaw model is constructed with weighted thresholding, where the weighting region is determined depending on the geometry of the intra-oral scan data.Main results.The results of numerical simulations and clinical experiments are presented to demonstrate the feasibility of the proposed approach.Significance.We propose for the first time a MAR method using radiation-free intra-oral scan data as supplemental information on the tooth morphological structures of teeth, which is designed to perform accurate 3D bone-teeth-jaw modeling in low-dose CBCT environments.

     

     

    Affiliations

    Chang Min Hyun 1, Taigyntuya Bayaraa 1, Hye Sun Yun 1, Tae-Jun Jang 1, Hyoung Suk Park 2, Jin Keun Seo 1
    1School of Mathematics and Computing (Computational Science and Engineering), Yonsei University, Seoul, 03722, Republic of Korea.
    2National Institute for Mathematical Sciences, Daejeon, 34047, Republic of Korea.

  • 키워드
    cone beam computed tomography; deep learning; digital dentistry; intra-oral scan; metal artifact reduction.
  • 덧글달기
    덧글달기
       IP : 18.221.165.246

    등록