Wang Tonghe, Lei Yang, Tian Zhen, Dong Xue, Liu Yingzi, Jiang Xiaojun, Curran Walter J, Liu Tian, Shu Hui-Kuo, Yang Xiaofeng
Emory University, Winship Cancer Institute, Department of Radiation Oncology, Atlanta, Georgia, United States.
J Med Imaging (Bellingham). 2019 Oct;6(4):043504. doi: 10.1117/1.JMI.6.4.043504. Epub 2019 Oct 24.
Low-dose computed tomography (CT) is desirable for treatment planning and simulation in radiation therapy. Multiple rescanning and replanning during the treatment course with a smaller amount of dose than a single conventional full-dose CT simulation is a crucial step in adaptive radiation therapy. We developed a machine learning-based method to improve image quality of low-dose CT for radiation therapy treatment simulation. We used a residual block concept and a self-attention strategy with a cycle-consistent adversarial network framework. A fully convolution neural network with residual blocks and attention gates (AGs) was used in the generator to enable end-to-end transformation. We have collected CT images from 30 patients treated with frameless brain stereotactic radiosurgery (SRS) for this study. These full-dose images were used to generate projection data, which were then added with noise to simulate the low-mAs scanning scenario. Low-dose CT images were reconstructed from this noise-contaminated projection data and were fed into our network along with the original full-dose CT images for training. The performance of our network was evaluated by quantitatively comparing the high-quality CT images generated by our method with the original full-dose images. When mAs is reduced to 0.5% of the original CT scan, the mean square error of the CT images obtained by our method is , with respect to the original full-dose images. The proposed method successfully improved the noise, contract-to-noise ratio, and nonuniformity level to be close to those of full-dose CT images and outperforms a state-of-the-art iterative reconstruction method. Dosimetric studies show that the average differences of dose-volume histogram metrics are ( ). These quantitative results strongly indicate that the denoised low-dose CT images using our method maintains image accuracy and quality and are accurate enough for dose calculation in current CT simulation of brain SRS treatment. We also demonstrate the great potential for low-dose CT in the process of simulation and treatment planning.
低剂量计算机断层扫描(CT)对于放射治疗中的治疗计划和模拟是理想的。在治疗过程中进行多次重新扫描和重新计划,且剂量比单次传统全剂量CT模拟要小,这是自适应放射治疗的关键步骤。我们开发了一种基于机器学习的方法来提高用于放射治疗模拟的低剂量CT的图像质量。我们使用了残差块概念和带有循环一致对抗网络框架的自注意力策略。生成器中使用了带有残差块和注意力门(AG)的全卷积神经网络来实现端到端转换。我们为本研究收集了30例接受无框架脑立体定向放射外科手术(SRS)治疗的患者的CT图像。这些全剂量图像用于生成投影数据,然后添加噪声以模拟低毫安扫描情况。从这些受噪声污染的投影数据中重建低剂量CT图像,并将其与原始全剂量CT图像一起输入我们的网络进行训练。通过将我们方法生成的高质量CT图像与原始全剂量图像进行定量比较来评估我们网络的性能。当毫安降低到原始CT扫描的0.5%时,我们方法获得的CT图像相对于原始全剂量图像的均方误差为 。所提出的方法成功地将噪声、对比度噪声比和不均匀性水平提高到接近全剂量CT图像的水平,并且优于一种先进的迭代重建方法。剂量学研究表明,剂量体积直方图指标的平均差异为 ( )。这些定量结果有力地表明,使用我们方法去噪后的低剂量CT图像保持了图像准确性和质量,并且在当前脑SRS治疗的CT模拟中进行剂量计算时足够准确。我们还展示了低剂量CT在模拟和治疗计划过程中的巨大潜力。