论文标题
学到的光谱计算机断层扫描
Learned Spectral Computed Tomography
论文作者
论文摘要
光谱光子计算计算机断层扫描(SPCCT)是一项有前途的技术,它比常规X射线计算机断层扫描(CT)具有许多优势,其形式是材料分离,人工制品去除和增强的图像质量。但是,由于SPCCT方程的复杂性和非线性增加,基于模型的重建算法通常需要手工制作的正则化项和精心调整超参数的调整,使其在可变条件下进行校准不切实际。此外,它们通常会产生高计算成本,并且在有限角度数据的情况下,其成像能力会大大恶化。最近,深度学习已被证明可以在医学成像应用中提供最先进的重建性能,同时规避大多数这些挑战。受这些进步的启发,我们提出了一种用于SPCCT的深度学习成像方法,该方法利用了神经网络的表达能力,同时还合并了模型知识。该方法采用了使用特定于案例的数据训练的两步学到的原始偶对算法的形式。所提出的方法的特征是快速重建能力和高成像性能,即使在有限的数据案例中,同时避免了其他优化方法所需的手工调节。我们通过受心血管成像的应用启发,以重建图像和质量指标来证明该方法的性能。
Spectral Photon-Counting Computed Tomography (SPCCT) is a promising technology that has shown a number of advantages over conventional X-ray Computed Tomography (CT) in the form of material separation, artefact removal and enhanced image quality. However, due to the increased complexity and non-linearity of the SPCCT governing equations, model-based reconstruction algorithms typically require handcrafted regularisation terms and meticulous tuning of hyperparameters making them impractical to calibrate in variable conditions. Additionally, they typically incur high computational costs and in cases of limited-angle data, their imaging capability deteriorates significantly. Recently, Deep Learning has proven to provide state-of-the-art reconstruction performance in medical imaging applications while circumventing most of these challenges. Inspired by these advances, we propose a Deep Learning imaging method for SPCCT that exploits the expressive power of Neural Networks while also incorporating model knowledge. The method takes the form of a two-step learned primal-dual algorithm that is trained using case-specific data. The proposed approach is characterised by fast reconstruction capability and high imaging performance, even in limited-data cases, while avoiding the hand-tuning that is required by other optimisation approaches. We demonstrate the performance of the method in terms of reconstructed images and quality metrics via numerical examples inspired by the application of cardiovascular imaging.