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A fast Total Variation-based iterative algorithm for digital breast tomosynthesis image reconstruction

机译:一种基于总变化量的快速迭代算法,用于数字乳腺断层合成图像重建

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In this work, we propose a fast iterative algorithm for the reconstruction of digital breast tomosynthesis images. The algorithm solves a regularization problem, expressed as the minimization of the sum of a least-squares term and a weighted smoothed version of the Total Variation regularization function. We use a Fixed Point method for the solution of the minimization problem, requiring the solution of a linear system at each iteration, whose coefficient matrix is a positive definite approximation of the Hessian of the objective function. We propose an efficient implementation of the algorithm, where the linear system is solved by a truncated Conjugate Gradient method. We compare the Fixed Point implementation with a fast first order method such as the Scaled Gradient Projection method, that does not require any linear system solution. Numerical experiments on a breast phantom widely used in tomographic simulations show that both the methods recover microcalcifications very fast while the Fixed Point is more efficient in detecting masses, when more time is available for the algorithm execution.
机译:在这项工作中,我们提出了一种快速迭代算法,用于重建数字乳房断层合成图像。该算法解决了一个正则化问题,表示为最小二乘项和总变异正则化函数的加权平滑版本之和的最小值。我们使用固定点方法来求解最小化问题,每次迭代都需要线性系统的解,其系数矩阵是目标函数的Hessian的正定近似。我们提出了一种有效的算法实现方法,其中线性系统通过截断的共轭梯度法求解。我们将定点实现与不需要任何线性系统解决方案的快速一阶方法(例如缩放梯度投影法)进行了比较。在广泛用于断层扫描模拟中的人体模型上进行的数值实验表明,这两种方法都可以非常快速地恢复微钙化,而固定点在执行算法的时间更长时可以更有效地检测质量。

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