School of Communications and Information Engineering, Chongqing University of Posts and Telecommunications, Chongqing 400065, People's Republic of China.
School of Medical Information and Engineering, Southwest Medical University, Luzhou 646000, People's Republic of China.
Phys Med Biol. 2024 Aug 9;69(16). doi: 10.1088/1361-6560/ad69f7.
Deep learning has markedly enhanced the performance of sparse-view computed tomography reconstruction. However, the dependence of these methods on supervised training using high-quality paired datasets, and the necessity for retraining under varied physical acquisition conditions, constrain their generalizability across new imaging contexts and settings.To overcome these limitations, we propose an unsupervised approach grounded in the deep image prior framework. Our approach advances beyond the conventional single noise level input by incorporating multi-level linear diffusion noise, significantly mitigating the risk of overfitting. Furthermore, we embed non-local self-similarity as a deep implicit prior within a self-attention network structure, improving the model's capability to identify and utilize repetitive patterns throughout the image. Additionally, leveraging imaging physics, gradient backpropagation is performed between the image domain and projection data space to optimize network weights.Evaluations with both simulated and clinical cases demonstrate our method's effective zero-shot adaptability across various projection views, highlighting its robustness and flexibility. Additionally, our approach effectively eliminates noise and streak artifacts while significantly restoring intricate image details.. Our method aims to overcome the limitations in current supervised deep learning-based sparse-view CT reconstruction, offering improved generalizability and adaptability without the need for extensive paired training data.
深度学习显著提高了稀疏视角计算机断层扫描重建的性能。然而,这些方法依赖于使用高质量配对数据集进行监督训练,并且需要根据不同的物理采集条件进行重新训练,这限制了它们在新的成像环境和设置中的通用性。为了克服这些限制,我们提出了一种基于深度图像先验框架的无监督方法。我们的方法超越了传统的单一噪声水平输入,采用了多级线性扩散噪声,显著降低了过拟合的风险。此外,我们将非局部自相似性作为一个深度隐式先验嵌入到自注意网络结构中,提高了模型识别和利用图像中重复模式的能力。此外,利用成像物理,在图像域和投影数据空间之间进行梯度反向传播,以优化网络权重。通过模拟和临床案例的评估,我们的方法在各种投影视角下表现出有效的零样本适应性,突出了其稳健性和灵活性。此外,我们的方法有效地消除了噪声和条纹伪影,同时显著恢复了复杂的图像细节。我们的方法旨在克服当前基于监督深度学习的稀疏视角 CT 重建的局限性,提供了更好的通用性和适应性,而无需大量的配对训练数据。