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Image-domain multimaterial decomposition for dual-energy computed tomography with nonconvex sparsity regularization

机译:具有非透露稀疏正规化的双能计算断层扫描的图像域多维分解

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摘要

Dual-energy computed tomography (CT) has the potential to decompose tissues into different materials. However, the classic direct inversion (DI) method for multimaterial decomposition (MMD) cannot accurately separate more than two basis materials due to the ill-posed problem and amplified image noise. We propose an integrated MMD method that addresses the piecewise smoothness and intrinsic sparsity property of the decomposition image. The proposed MMD was formulated as an optimization problem including a quadratic data fidelity term, an isotropic total variation term that encourages image smoothness, and a nonconvex penalty function that promotes decomposition image sparseness. The mass and volume conservation rule was formulated as the probability simplex constraint. An accelerated primal-dual splitting approach with line search was applied to solve the optimization problem. The proposed method with different penalty functions was compared against DI on a digital phantom, a Catphan® 600 phantom, a quantitative imaging phantom, and a pelvis patient. The proposed framework distinctly separated the CT image up to 12 basis materials plus air with high decomposition accuracy. The cross talks between two different materials are substantially reduced, as shown by the decreased nondiagonal elements of the normalized cross correlation (NCC) matrix. The mean square error of the measured electron densities was reduced by 72.6%. Across all datasets, the proposed method improved the average volume fraction accuracy from 61.2% to 99.9% and increased the diagonality of the NCC matrix from 0.73 to 0.96. Compared with DI, the proposed MMD framework improved decomposition accuracy and material separation.
机译:双能计算机断层扫描(CT)有可能将组织分解成不同的材料。然而,由于存在不良问题和放大的图像噪声,多国分解(MMD)的经典直接反转(MMD)不能准确地分离多于两个基础材料。我们提出了一种集成的MMD方法,用于解决分解图像的分段平滑度和内在稀疏性。该提议的MMD被配制成优化问题,包括二次数据保真术语,这是鼓励图像平滑度的各向同性总变化术语,以及促进分解图像稀疏性的非凸损函数。质量和音量保护规则被配制为概率单纯性约束。应用了具有线路搜索的加速的原始双重分割方法来解决优化问题。将具有不同惩罚功能的提出方法与数码幻影,CATPHAN®600幻影,定量成像幻影和骨盆患者进行比较。所提出的框架明显地将CT图像与12个基材加空气明显地分离出高度分解精度。两种不同材料之间的交叉谈话基本上减少,如归一化互相关(NCC)矩阵的降低的非透析元件所示。测量的电子密度的平均方形误差减少了72.6%。在所有数据集中,所提出的方法将平均体积分数精度从61.2%提高到99.9%,并将NCC矩阵的对角增加0.93至0.96。与DI相比,所提出的MMD框架改善了分解精度和材料分离。

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