Zhang Zheng, Chen Buxin, Xia Dan, Sidky Emil Y, Pan Xiaochuan
Department of Radiology, The University of Chicago, Chicago, IL 60637, United States of America.
Department of Radiation and Cellular Oncology, The University of Chicago, Chicago, IL 60637, United States of America.
Phys Med Biol. 2025 Jan 27;70(3):035005. doi: 10.1088/1361-6560/ada7be.
. Accurate image reconstruction from data with truncation in x-ray computed tomography (CT) remains a topic of research interest; and the works reported previously in the literature focus largely on reconstructing an image only within the scanning field-of-view (FOV). We develop algorithms to invert the truncated data model for numerically accurate image reconstruction within the subject support or a region slightly smaller than the subject support.. We formulate image reconstruction from data with truncation as an optimization program, which includes hybrid constraints on region-based image total-variation (TV) and imageℓ1-norm (L1) for effectively suppressing truncation artifacts. An algorithm, referred to as the TV-L1 algorithm, is developed for image reconstruction (i.e. inversion of the data model) from data with truncation through solving the optimization program.. We perform numerical studies to evaluate accuracy and stability of the TV-L1 algorithm by using simulated and real CT data. Accurate images can be obtained stably by use of the TV-L1 algorithm within the subject support, or a region substantially larger than the FOV, from data with truncation of varying degrees.. The TV-L1 algorithm can invert the truncated data model to accurately and stably reconstruct images within the subject support, or a region slightly smaller than the subject support but substantially larger than the FOV.. Accurate image reconstruction within the subject support, or a region substantially larger than the FOV, from data with truncation can be of theoretical and practical implication. The insights and TV-L1 algorithm may also be generalized to accurate image reconstruction from data with truncation in other tomographic imaging modalities.
在X射线计算机断层扫描(CT)中,从截断数据进行精确的图像重建仍然是一个研究热点;文献中先前报道的工作主要集中在仅在扫描视野(FOV)内重建图像。我们开发了算法来反转截断数据模型,以便在受检者支撑区域或略小于受检者支撑区域内进行数值精确的图像重建。我们将从截断数据进行图像重建表述为一个优化程序,该程序包括基于区域的图像总变差(TV)和图像ℓ1范数(L1)的混合约束,以有效抑制截断伪影。通过求解该优化程序,开发了一种称为TV-L1算法的算法,用于从截断数据进行图像重建(即数据模型的反演)。我们使用模拟和真实CT数据进行数值研究,以评估TV-L1算法的准确性和稳定性。通过使用TV-L1算法,可以从不同程度截断的数据中在受检者支撑区域或比FOV大得多的区域内稳定地获得精确图像。TV-L1算法可以反转截断数据模型,以在受检者支撑区域或略小于受检者支撑区域但比FOV大得多的区域内准确、稳定地重建图像。从截断数据在受检者支撑区域或比FOV大得多的区域内进行精确图像重建可能具有理论和实际意义。这些见解和TV-L1算法也可能推广到其他断层成像模态中从截断数据进行精确图像重建。