IEEE Trans Med Imaging. 2018 Jan;37(1):116-127. doi: 10.1109/TMI.2017.2732824. Epub 2017 Jul 27.
This paper describes a new image reconstruction method for digital breast tomosynthesis (DBT). The new method incorporates detector blur into the forward model. The detector blur in DBT causes correlation in the measurement noise. By making a few approximations that are reasonable for breast imaging, we formulated a regularized quadratic optimization problem with a data-fit term that incorporates models for detector blur and correlated noise (DBCN). We derived a computationally efficient separable quadratic surrogate (SQS) algorithm to solve the optimization problem that has a non-diagonal noise covariance matrix. We evaluated the SQS-DBCN method by reconstructing DBT scans of breast phantoms and human subjects. The contrast-to-noise ratio and sharpness of microcalcifications were analyzed and compared with those by the simultaneous algebraic reconstruction technique. The quality of soft tissue lesions and parenchymal patterns was examined. The results demonstrate the potential to improve the image quality of reconstructed DBT images by incorporating the system physics model. This paper is a first step toward model-based iterative reconstruction for DBT.
本文描述了一种用于数字乳腺断层合成(DBT)的新图像重建方法。新方法将探测器模糊纳入正向模型。在 DBT 中,探测器模糊会导致测量噪声相关。通过对合理的乳腺成像模型进行一些近似,我们制定了一个正则化二次优化问题,其中包含探测器模糊和相关噪声(DBCN)的模型。我们推导了一种具有非对角噪声协方差矩阵的计算效率高的可分离二次逼近(SQS)算法来求解优化问题。我们通过重建乳腺体模和人体受试者的 DBT 扫描来评估 SQS-DBCN 方法。分析并比较了对比噪声比和微钙化的锐度,与同时代的代数重建技术相比。检查了软组织病变和实质模式的质量。结果表明,通过纳入系统物理模型,有可能改善重建 DBT 图像的图像质量。本文是 DBT 基于模型的迭代重建的第一步。