论文标题
3D螺旋CT重建,具有记忆有效学习的原始偶型体系结构
3D helical CT Reconstruction with a Memory Efficient Learned Primal-Dual Architecture
论文作者
论文摘要
基于深度学习的计算机断层扫描(CT)重建已在模拟的2D低剂量CT数据上表现出出色的性能。这特别适用于域改编的神经网络,该网络结合了用于CT成像的手工物理模型。经验证据表明,采用此类体系结构减少了对训练数据的需求,并在概括后改善。但是,他们的培训需要大量的计算资源,这些计算资源在3D Helical CT中迅速变得越来越高,这是用于医学成像的最常见的采集几何形状。此外,临床数据还带来了模拟中未考虑的其他挑战,例如通量测量,分辨率不匹配的错误以及最重要的是缺乏真实基础真理。进行计算可行的培训以及解决这些问题的必要性的必要性使得很难评估基于深度学习的重建3D螺旋CT的重建。本文修改了域调整的神经网络体系结构,即学习的原始偶(LPD),以便在这种情况下可以训练并应用于重建。我们通过将螺旋轨迹分为部分并将展开的LPD迭代分配到这些部分来实现这一目标。据我们所知,这项工作是第一个将展开的深度学习体系结构应用于全尺寸临床数据上的重建,例如低剂量CT图像和投影数据集(LDCT)的研究。此外,培训和测试是在具有24GB内存的单个GPU卡上进行的。
Deep learning based computed tomography (CT) reconstruction has demonstrated outstanding performance on simulated 2D low-dose CT data. This applies in particular to domain adapted neural networks, which incorporate a handcrafted physics model for CT imaging. Empirical evidence shows that employing such architectures reduces the demand for training data and improves upon generalisation. However, their training requires large computational resources that quickly become prohibitive in 3D helical CT, which is the most common acquisition geometry used for medical imaging. Furthermore, clinical data also comes with other challenges not accounted for in simulations, like errors in flux measurement, resolution mismatch and, most importantly, the absence of the real ground truth. The necessity to have a computationally feasible training combined with the need to address these issues has made it difficult to evaluate deep learning based reconstruction on clinical 3D helical CT. This paper modifies a domain adapted neural network architecture, the Learned Primal-Dual (LPD), so that it can be trained and applied to reconstruction in this setting. We achieve this by splitting the helical trajectory into sections and applying the unrolled LPD iterations to those sections sequentially. To the best of our knowledge, this work is the first to apply an unrolled deep learning architecture for reconstruction on full-sized clinical data, like those in the Low dose CT image and projection data set (LDCT). Moreover, training and testing is done on a single GPU card with 24GB of memory.