IEEE Trans Med Imaging. 2019 Nov;38(11):2705-2715. doi: 10.1109/TMI.2019.2912791. Epub 2019 Apr 23.
Edges tend to be over-smoothed in total variation (TV) regularized under-sampled images. In this paper, symmetric residual convolutional neural network (SR-CNN), a deep learning based model, was proposed to enhance the sharpness of edges and detailed anatomical structures in under-sampled cone-beam computed tomography (CBCT). For training, CBCT images were reconstructed using TV-based method from limited projections simulated from the ground truth CT, and were fed into SR-CNN, which was trained to learn a restoring pattern from under-sampled images to the ground truth. For testing, under-sampled CBCT was reconstructed using TV regularization and was then augmented by SR-CNN. Performance of SR-CNN was evaluated using phantom and patient images of various disease sites acquired at different institutions both qualitatively and quantitatively using structure similarity (SSIM) and peak signal-to-noise ratio (PSNR). SR-CNN substantially enhanced image details in the TV-based CBCT across all experiments. In the patient study using real projections, SR-CNN augmented CBCT images reconstructed from as low as 120 half-fan projections to image quality comparable to the reference fully-sampled FDK reconstruction using 900 projections. In the tumor localization study, improvements in the tumor localization accuracy were made by the SR-CNN augmented images compared with the conventional FDK and TV-based images. SR-CNN demonstrated robustness against noise levels and projection number reductions and generalization for various disease sites and datasets from different institutions. Overall, the SR-CNN-based image augmentation technique was efficient and effective in considerably enhancing edges and anatomical structures in under-sampled 3D/4D-CBCT, which can be very valuable for image-guided radiotherapy.
在总变差(TV)正则化下,欠采样图像的边缘往往会过度平滑。在本文中,提出了一种基于对称残差卷积神经网络(SR-CNN)的深度学习模型,用于增强欠采样锥形束 CT(CBCT)中边缘和详细解剖结构的锐度。在训练过程中,使用基于 TV 的方法从真实 CT 的有限投影模拟中重建 CBCT 图像,并将其输入到 SR-CNN 中,SR-CNN 被训练以从欠采样图像学习到真实图像的恢复模式。在测试过程中,使用 TV 正则化重建欠采样的 CBCT,然后通过 SR-CNN 进行增强。使用来自不同机构的不同疾病部位的体模和患者图像,通过结构相似性(SSIM)和峰值信噪比(PSNR)对 SR-CNN 的性能进行了定性和定量评估。在所有实验中,SR-CNN 都大大增强了基于 TV 的 CBCT 中的图像细节。在使用真实投影的患者研究中,SR-CNN 增强了从低至 120 个半扇形投影重建的 CBCT 图像,其图像质量可与使用 900 个投影的参考完全采样 FDK 重建相媲美。在肿瘤定位研究中,与传统的 FDK 和基于 TV 的图像相比,SR-CNN 增强的图像提高了肿瘤定位的准确性。SR-CNN 表现出对噪声水平和投影数量减少的鲁棒性,并且可以很好地推广到来自不同机构的各种疾病部位和数据集。总体而言,基于 SR-CNN 的图像增强技术在显著增强 3D/4D-CBCT 中的边缘和解剖结构方面非常有效,这对于图像引导的放射治疗非常有价值。