Cone Beam CT (CBCT) is an important imaging modality nowadays, however lower image quality of CBCT compared to more conventional Computed Tomography (CT) remains a limiting factor in CBCT applications. Deep learning reconstruction methods are a promising alternative to classical analytical and iterative reconstruction methods, but applying such methods to CBCT is often difficult due to the lack of ground truth data, memory limitations and the need for fast inference at clinically-relevant resolutions. In this work we propose LIRE++, an end-to-end rotationally-equivariant multiscale learned invertible primal-dual scheme for fast and memory-efficient CBCT reconstruction. Memory optimizations and multiscale reconstruction allow for fast training and inference, while rotational equivariance improves parameter efficiency. LIRE++ was trained on simulated projection data from a fast quasi-Monte Carlo CBCT projection simulator that we developed as well. Evaluated on synthetic data, LIRE++ gave an average improvement of 1 dB in Peak Signal-to-Noise Ratio over alternative deep learning baselines. On real clinical data, LIRE++ improved the average Mean Absolute Error between the reconstruction and the corresponding planning CT by 10 Hounsfield Units with respect to current proprietary state-of-the-art hybrid deep-learning/iterative method.
翻译:锥束CT(CBCT)是当前一种重要的成像模态,然而与更传统的计算机断层扫描(CT)相比,CBCT较低的图像质量仍然是其应用中的一个限制因素。深度学习重建方法是经典解析和迭代重建方法的一种有前景的替代方案,但由于缺乏真实数据、内存限制以及在临床相关分辨率下需要快速推理,将此类方法应用于CBCT通常很困难。在这项工作中,我们提出了LIRE++,一种端到端的旋转等变多尺度可学习可逆原始-对偶方案,用于快速且内存高效的CBCT重建。内存优化和多尺度重建实现了快速的训练和推理,而旋转等变性则提高了参数效率。LIRE++在我们开发的快速准蒙特卡洛CBCT投影模拟器生成的模拟投影数据上进行了训练。在合成数据上的评估表明,LIRE++在峰值信噪比上相对于其他深度学习基线方法平均提高了1 dB。在真实临床数据上,与当前专有的最先进混合深度学习/迭代方法相比,LIRE++将重建图像与对应计划CT之间的平均绝对误差降低了10个亨斯菲尔德单位。