Department of Radiation Oncology, William Beaumont Hospital, 3601 W. 13 Mile Rd, Royal Oak, MI, 48073, USA.
Department of Oncology, Renmin Hospital of Wuhan University, Wuhan, Hubei, China.
Med Phys. 2018 Dec;45(12):5659-5665. doi: 10.1002/mp.13247. Epub 2018 Nov 13.
Clinical implementation of magnetic resonance imaging (MRI)-only radiotherapy requires a method to derive synthetic CT image (S-CT) for dose calculation. This study investigated the feasibility of building a deep convolutional neural network for MRI-based S-CT generation and evaluated the dosimetric accuracy on prostate IMRT planning.
A paired CT and T2-weighted MR images were acquired from each of 51 prostate cancer patients. Fifteen pairs were randomly chosen as tested set and the remaining 36 pairs as training set. The training subjects were augmented by applying artificial deformations and feed to a two-dimensional U-net which contains 23 convolutional layers and 25.29 million trainable parameters. The U-net represents a nonlinear function with input an MR slice and output the corresponding S-CT slice. The mean absolute error (MAE) of Hounsfield unit (HU) between the true CT and S-CT images was used to evaluate the HU estimation accuracy. IMRT plans with dose 79.2 Gy prescribed to the PTV were applied using the true CT images. The true CT images then were replaced by the S-CT images and the dose matrices were recalculated on the same plan and compared to the one obtained from the true CT using gamma index analysis and absolute point dose discrepancy.
The U-net was trained from scratch in 58.67 h using a GP100-GPU. The computation time for generating a new S-CT volume image was 3.84-7.65 s. Within body, the (mean ± SD) of MAE was (29.96 ± 4.87) HU. The 1%/1 mm and 2%/2 mm gamma pass rates were over 98.03% and 99.36% respectively. The DVH parameters discrepancy was less than 0.87% and the maximum point dose discrepancy within PTV was less than 1.01% respect to the prescription.
The U-net can generate S-CT images from conventional MR image within seconds with high dosimetric accuracy for prostate IMRT plan.
磁共振成像(MRI)仅放疗的临床实施需要一种方法来推导用于剂量计算的合成 CT 图像(S-CT)。本研究旨在探讨基于 MRI 的 S-CT 生成的深度卷积神经网络构建的可行性,并评估前列腺调强放疗计划的剂量学准确性。
从 51 例前列腺癌患者中分别采集了一对 CT 和 T2 加权 MR 图像。随机选择 15 对作为测试集,其余 36 对作为训练集。通过应用人工变形来增加训练对象,并将其输入到二维 U-net 中,该 U-net 包含 23 个卷积层和 2529 万个可训练参数。U-net 表示一个非线性函数,其输入为一个 MR 切片,输出为相应的 S-CT 切片。真 CT 和 S-CT 图像之间的平均绝对误差(MAE)的 HU 用于评估 HU 估计的准确性。使用真 CT 图像对 PTV 给予 79.2Gy 的剂量,为其制定 IMRT 计划。然后用 S-CT 图像代替真 CT 图像,并在相同的计划上重新计算剂量矩阵,然后使用伽马指数分析和绝对点剂量差异与从真 CT 获得的剂量矩阵进行比较。
使用 GP100-GPU 从头开始训练 U-net ,需要 58.67 小时。生成新的 S-CT 体图像的计算时间为 3.84-7.65s。在体内,MAE 的平均值为(29.96 ± 4.87)HU。1%/1mm 和 2%/2mm 伽马通过率均超过 98.03%和 99.36%。DVH 参数差异小于 0.87%,PTV 内最大点剂量差异小于 1.01%,符合处方要求。
U-net 可以在几秒钟内从常规 MR 图像生成 S-CT 图像,具有很高的前列腺调强放疗计划剂量学准确性。