• Acta Optica Sinica
  • Vol. 42, Issue 1, 0117001 (2022)
Haibo Zhang1, Jiaojiao Kou1, Qichen Huang1, Yingjie Liu1, Yuqing Hou1, Xiaowei He1, Mingquan Zhou1, and Rui Zhang2、*
Author Affiliations
  • 1School of Information Science & Technology, Northwest University, Xi′an, Shaanxi 710127, China;
  • 2State Key Laboratory of Military Stomatology, National Clinical Research Center for Oral Diseases, Clinical Research Center of Oral Diseases of Shaanxi Province, Department of Orthodontics, Stomatological Hospital of Fourth Military Medical University, Xian, Shaanxi 710032, China
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    DOI: 10.3788/AOS202242.0117001 Cite this Article Set citation alerts
    Haibo Zhang, Jiaojiao Kou, Qichen Huang, Yingjie Liu, Yuqing Hou, Xiaowei He, Mingquan Zhou, Rui Zhang. Sparse-View Cone-Beam X-Ray Luminescence Computed Tomography Imaging for Optimized Regional Prior Knowledge[J]. Acta Optica Sinica, 2022, 42(1): 0117001 Copy Citation Text show less

    Abstract

    Cone-beam X-ray luminescence computed tomography (CB-XLCT) imaging is a new medical imaging technique that can effectively detect early tumors in vitro. Sparse-view CB-XLCT imaging brings this technology a step closer to real-time imaging of CB-XLCT technique. Nevertheless, it suffers from a much more severe ill-conditioned inverse problem compared with traditional multi-view imaging, which poses a challenge to the extension of the traditional approach. A sparse non-convex Lp (0<p<1) model was employed to formulate an iteratively reweighted splitting augmented Lagrangian shrinkage algorithm. The classic non-convex operator was then combined with the algorithm to design a robust and steady method of extracting permissible regions so that it could guide the accurate reconstruction of the target as optimized prior knowledge. Digital rat and physical phantom experiments were designed and combined respectively with the classic representative algorithms of the L1-norm and L0-norm to evaluate the efficiency and robustness of the proposed method. The experimental results demonstrate that our proposed method can effectively solve the inverse problem of sparse-view CB-XLCT imaging and possesses expandability.
    Haibo Zhang, Jiaojiao Kou, Qichen Huang, Yingjie Liu, Yuqing Hou, Xiaowei He, Mingquan Zhou, Rui Zhang. Sparse-View Cone-Beam X-Ray Luminescence Computed Tomography Imaging for Optimized Regional Prior Knowledge[J]. Acta Optica Sinica, 2022, 42(1): 0117001
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