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首页> 外文期刊>Medical Physics >Technical Note: U-net-generated synthetic CT images for magnetic resonance imaging-only prostate intensity-modulated radiation therapy treatment planning
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Technical Note: U-net-generated synthetic CT images for magnetic resonance imaging-only prostate intensity-modulated radiation therapy treatment planning

机译:技术说明:磁共振成像的U型净生成的合成CT图像,仅用于前列腺强度调制的放射治疗治疗计划

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摘要

Purpose 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. Methods 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. Results 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. Conclusion The U-net can generate S-CT images from conventional MR image within seconds with high dosimetric accuracy for prostate IMRT plan.
机译:磁共振成像(MRI)的目的临床实施是针对剂量计算的衍生合成CT图像(S-CT)的方法。本研究调查了为MRI的S-CT生成构建深度卷积神经网络的可行性,并评估了前列腺IMRT规划的剂量准确度。方法从51例前列腺癌患者中获取配对CT和T2加权MR图像。将十五对作为测试集随机选择,剩余的36对作为训练集。通过将人为变形和饲料施加到二维U-净的二维U-NET上,增强训练受试者,该卷材含有23层和25290万可训练参数。 U-Net表示非线性功能,其中输入MR切片并输出相应的S-CT切片。真正的CT和S-CT图像之间的Hounsfield单元(HU)的平均绝对误差(MAE)用于评估HU估计精度。使用真正的CT图像施加具有PTV的剂量79.2 GY的IMRT计划。然后将真实的CT图像由S-CT图像取代,并且剂量矩阵在相同的计划上重新计算,并与使用γ指数分析和绝对点剂量差异的真实CT获得的矩阵相比。结果U-Net使用GP100-GPU从58.67小时的划痕培训。生成新的S-CT卷图像的计算时间为3.84-7.65 s。在身体内,MAE(平均+/- SD)是(29.96 +/- 4.87)胡。 1%/ 1mm和2%/ 2mm的γ通率分别超过98.03%和99.36%。 DVH参数差异小于0.87%,PTV内的最大点剂量差异小于对处方的1.01%。结论U-NET可以在几秒钟内从常规MR图像产生S-CT图像,具有高剂量的前列腺IMRT计划。

著录项

  • 来源
    《Medical Physics 》 |2018年第12期| 共7页
  • 作者单位

    William Beaumont Hosp Dept Radiat Oncol 3601 W 13 Mile Rd Royal Oak MI 48073 USA;

    William Beaumont Hosp Dept Radiat Oncol 3601 W 13 Mile Rd Royal Oak MI 48073 USA;

    Wuhan Univ Renmin Hosp Dept Oncol Wuhan Hubei Peoples R China;

    William Beaumont Hosp Dept Radiat Oncol 3601 W 13 Mile Rd Royal Oak MI 48073 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 基础医学 ;
  • 关键词

    deep learning; IMRT; prostate; synthetic CT; U-net;

    机译:深入学习;IMRT;前列腺;合成CT;U-NET;

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