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  • Data consistency-driven scatter kernel optimization for x-ray cone-beam CT

    Data consistency-driven scatter kernel optimization for x-ray cone-beam CT

    KAIST /김창환, 조승룡*

  • 출처
    Phys Med Biol
  • 등재일
    2015 Aug 7
  • 저널이슈번호
    60(15):5971-94
  • 내용

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    [Abstract]

    Accurate and efficient scatter correction is essential for acquisition of high-quality x-ray cone-beam CT (CBCT) images for various applications. This study was conducted to demonstrate the feasibility of using the data consistency condition (DCC) as a criterion for scatter kernel optimization in scatter deconvolution methods in CBCT. As in CBCT, data consistency in the mid-plane is primarily challenged by scatter, we utilized data consistency to confirm the degree of scatter correction and to steer the update in iterative kernel optimization. By means of the parallel-beam DCC via fan-parallel rebinning, we iteratively optimized the scatter kernel parameters, using a particle swarm optimization algorithm for its computational efficiency and excellent convergence. The proposed method was validated by a simulation study using the XCAT numerical phantom and also by experimental studies using the ACS head phantom and the pelvic part of the Rando phantom. The results showed that the proposed method can effectively improve the accuracy of deconvolution-based scatter correction. Quantitative assessments of image quality parameters such as contrast and structure similarity (SSIM) revealed that the optimally selected scatter kernel improves the contrast of scatter-free images by up to 99.5%, 94.4%, and 84.4%, and of the SSIM in an XCAT study, an ACS head phantom study, and a pelvis phantom study by up to 96.7%, 90.5%, and 87.8%, respectively. The proposed method can achieve accurate and efficient scatter correction from a single cone-beam scan without need of any auxiliary hardware or additional experimentation. 

     

    [Author information]

    Kim C1, Park M, Sung Y, Lee J, Choi J, Cho S.

    1Department of Nuclear and Quantum Engineering, KAIST, Daejeon, 305-701, Korea. 

  • 연구소개
    Cone-beam CT의 영상 품질에 큰 영향을 주는 산란을 보정하기 위한 새로운 방법을 제안한 논문입니다. 산란 커널을 통해 deconvolution 방식으로 산란을 보정하는 기술은 구현이 용이하고 계산이 빠르다는 점에서 여타 산란 보정 기술에 비해 우위에 있으나, 커널 모델 파라미터에 보정 결과가 매우 민감한 면이 있어서 최적화된 커널을 사용하는 것이 중요합니다. 본 연구에서는 스캔 중앙 단면에 해당하는 프로젝션 데이터들 간에 상호 만족되어야 할 수학적 일관성을 충족시키는 방향으로 산란 커널을 최적화하는 독창적인 아이디어로 다양한 환자 및 환부 스캔에 있어서 능동적으로 커널을 최적화할 수 있는 길을 열어주었습니다.
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