GE Healthcare, Munich, Germany.
Department of Quantitative Biomedicine, University of Zurich, Zurich, Switzerland.
Phys Med Biol. 2023 Sep 18;68(19). doi: 10.1088/1361-6560/acefa3.
. In MR-only clinical workflow, replacing CT with MR image is of advantage for workflow efficiency and reduces radiation to the patient. An important step required to eliminate CT scan from the workflow is to generate the information provided by CT via an MR image. In this work, we aim to demonstrate a method to generate accurate synthetic CT (sCT) from an MR image to suit the radiation therapy (RT) treatment planning workflow. We show the feasibility of the method and make way for a broader clinical evaluation.. We present a machine learning method for sCT generation from zero-echo-time (ZTE) MRI aimed at structural and quantitative accuracies of the image, with a particular focus on the accurate bone density value prediction. The misestimation of bone density in the radiation path could lead to unintended dose delivery to the target volume and results in suboptimal treatment outcome. We propose a loss function that favors a spatially sparse bone region in the image. We harness the ability of the multi-task network to produce correlated outputs as a framework to enable localization of region of interest (RoI) via segmentation, emphasize regression of values within RoI and still retain the overall accuracy via global regression. The network is optimized by a composite loss function that combines a dedicated loss from each task.. We have included 54 brain patient images in this study and tested the sCT images against reference CT on a subset of 20 cases. A pilot dose evaluation was performed on 9 of the 20 test cases to demonstrate the viability of the generated sCT in RT planning. The average quantitative metrics produced by the proposed method over the test set were-(a) mean absolute error (MAE) of 70 ± 8.6 HU; (b) peak signal-to-noise ratio (PSNR) of 29.4 ± 2.8 dB; structural similarity metric (SSIM) of 0.95 ± 0.02; and (d) Dice coefficient of the body region of 0.984 ± 0.. We demonstrate that the proposed method generates sCT images that resemble visual characteristics of a real CT image and has a quantitative accuracy that suits RT dose planning application. We compare the dose calculation from the proposed sCT and the real CT in a radiation therapy treatment planning setup and show that sCT based planning falls within 0.5% target dose error. The method presented here with an initial dose evaluation makes an encouraging precursor to a broader clinical evaluation of sCT based RT planning on different anatomical regions.
. 在仅磁共振(MR)临床工作流程中,用 MR 图像替代 CT 对工作流程效率和减少患者辐射均有益处。从工作流程中消除 CT 扫描的一个重要步骤是通过 MR 图像生成 CT 提供的信息。在这项工作中,我们旨在展示一种从 MR 图像生成准确的合成 CT(sCT)的方法,以适应放射治疗(RT)治疗计划工作流程。我们展示了该方法的可行性,并为更广泛的临床评估铺平了道路。. 我们提出了一种用于从零回波时间(ZTE)MRI 生成 sCT 的机器学习方法,旨在实现图像的结构和定量准确性,特别关注准确预测骨密度值。骨密度在辐射路径中的误估计可能导致靶区意外剂量输送,并导致治疗结果不理想。我们提出了一种有利于图像中空间稀疏骨区域的损失函数。我们利用多任务网络的能力来生成相关的输出,作为一种通过分割定位感兴趣区域(ROI)的框架,强调 ROI 内值的回归,并通过全局回归仍然保留整体准确性。该网络通过组合每个任务的专用损失函数进行优化。. 我们在这项研究中纳入了 54 例脑患者图像,并在 20 例患者的亚组中对 sCT 图像与参考 CT 进行了测试。在 20 例测试病例中的 9 例中进行了初步剂量评估,以证明生成的 sCT 在 RT 计划中的可行性。该方法在测试集上产生的平均定量指标为:(a)平均绝对误差(MAE)为 70±8.6HU;(b)峰值信噪比(PSNR)为 29.4±2.8dB;结构相似性度量(SSIM)为 0.95±0.02;(d)身体区域的 Dice 系数为 0.984±0.。我们证明,所提出的方法生成的 sCT 图像类似于真实 CT 图像的视觉特征,并且具有适合 RT 剂量计划应用的定量准确性。我们在放射治疗计划设置中比较了来自所提出的 sCT 和真实 CT 的剂量计算,并表明基于 sCT 的计划的靶区剂量误差在 0.5%以内。本文提出的方法具有初始剂量评估,为基于 sCT 的不同解剖区域的 RT 计划的更广泛临床评估奠定了令人鼓舞的基础。