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  • [Med Phys.] Head motion correction based on filtered backprojection for x-ray CT imaging.

    KAIST/ 장석환, 라종범*

  • 출처
    Med Phys.
  • 등재일
    2017 Nov 30
  • 저널이슈번호
    doi: 10.1002/mp.12705. [Epub ahead of;
  • 내용

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    Abstract
    PURPOSE:
    For head x-ray CT imaging, the head needs to remain motionless during the scan. In clinical practice, however, head motion is sometimes unavoidable depending on the patient. The motion can occur abruptly during the scan and can be unpredictable. It thereby causes motion artifacts such as tissue blurring or doubled edges around the skull area. To mitigate this problem, we propose a 3D head motion estimation (ME) and compensation algorithm based on filtered backprojection.

    METHODS:
    If a patient moves his or her head during the scan, a motion-corrupted sinogram is obtained. Modeling the head motion as a 3D rigid transformation, we develop a motion-compensated (MC) reconstruction algorithm based on the FDK algorithm. To determine the head motion of a rigid transformation, we propose two optimization-based ME schemes depending on the degree of head motion, both of which are performed by updating motion parameters and the corresponding MC reconstructed image alternatively until the proposed cost function is minimized for the MC reconstructed image. In particular, to improve the robustness in the case of large motion, we propose attaching a fiducial marker to the head so that more reliable motion parameters can be initialized by determining the marker position, before the optimization. To evaluate the proposed algorithm, a numerical phantom with realistic, continuous, and smoothly varying motion, and a moving physical phantom are used with a gantry rotation time of 1 s.

    RESULTS:
    In the simulation using a numerical phantom and in the experiment using a physical phantom, the proposed algorithm provides well-restored 3D motion-compensated images in both cases of small and large motion. In particular, in the case of large motion of the physical phantom, using a fiducial marker, we obtain remarkable improvement of image quality in cerebral arteries and a lesion as well as the skull. Quantitative evaluations using the image sharpness and root-mean-square error also show noticeable improvement of image quality in both simulations and experiments.

    CONCLUSIONS:
    We propose a framework for head motion correction in an axial CT scan, which consists of motion estimation and compensation steps. Two image-based ME algorithms for rigid motion tracking are developed according to the degree of head motion. The estimated motion information is then used for MC image reconstruction. Both motion estimation and compensation algorithms are based on computationally efficient filtered backprojection. Excellent performance of the proposed framework is illustrated by means of simulations using a numerical phantom and experiments using a physical phantom

     


    Author information

    Jang S1, Kim S1, Kim M1, Ra JB1.
    1 School of Electrical Engineering, KAIST, Daejeon, Republic of Korea.

  • 편집위원

    두부의 움직임을 3D rigid 변환으로 모델링한 FDK 알고리즘 기반 MC 재구성 알고리즘을 제안하여 motion artifact가 감소한 우수한 영상을 획득하였다. Filtered backprojection 방법을 사용하는 CT 영상은 MRI 보다 motion artifact에 강하다고 알려져 있으나 본 논문이 제안한 방법으로 보다 motion arti

    2018-01-19 11:23:51

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