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基于磁共振成像利用深度卷积神经网络方法生成合成CT图像

MR-based synthetic CT generation using a deep convolutional neural network method.

作者信息

Han Xiao

机构信息

Elekta Inc., Maryland Heights, MO, 63043, USA.

出版信息

Med Phys. 2017 Apr;44(4):1408-1419. doi: 10.1002/mp.12155. Epub 2017 Mar 21.

Abstract

PURPOSE

Interests have been rapidly growing in the field of radiotherapy to replace CT with magnetic resonance imaging (MRI), due to superior soft tissue contrast offered by MRI and the desire to reduce unnecessary radiation dose. MR-only radiotherapy also simplifies clinical workflow and avoids uncertainties in aligning MR with CT. Methods, however, are needed to derive CT-equivalent representations, often known as synthetic CT (sCT), from patient MR images for dose calculation and DRR-based patient positioning. Synthetic CT estimation is also important for PET attenuation correction in hybrid PET-MR systems. We propose in this work a novel deep convolutional neural network (DCNN) method for sCT generation and evaluate its performance on a set of brain tumor patient images.

METHODS

The proposed method builds upon recent developments of deep learning and convolutional neural networks in the computer vision literature. The proposed DCNN model has 27 convolutional layers interleaved with pooling and unpooling layers and 35 million free parameters, which can be trained to learn a direct end-to-end mapping from MR images to their corresponding CTs. Training such a large model on our limited data is made possible through the principle of transfer learning and by initializing model weights from a pretrained model. Eighteen brain tumor patients with both CT and T1-weighted MR images are used as experimental data and a sixfold cross-validation study is performed. Each sCT generated is compared against the real CT image of the same patient on a voxel-by-voxel basis. Comparison is also made with respect to an atlas-based approach that involves deformable atlas registration and patch-based atlas fusion.

RESULTS

The proposed DCNN method produced a mean absolute error (MAE) below 85 HU for 13 of the 18 test subjects. The overall average MAE was 84.8 ± 17.3 HU for all subjects, which was found to be significantly better than the average MAE of 94.5 ± 17.8 HU for the atlas-based method. The DCNN method also provided significantly better accuracy when being evaluated using two other metrics: the mean squared error (188.6 ± 33.7 versus 198.3 ± 33.0) and the Pearson correlation coefficient(0.906 ± 0.03 versus 0.896 ± 0.03). Although training a DCNN model can be slow, training only need be done once. Applying a trained model to generate a complete sCT volume for each new patient MR image only took 9 s, which was much faster than the atlas-based approach.

CONCLUSIONS

A DCNN model method was developed, and shown to be able to produce highly accurate sCT estimations from conventional, single-sequence MR images in near real time. Quantitative results also showed that the proposed method competed favorably with an atlas-based method, in terms of both accuracy and computation speed at test time. Further validation on dose computation accuracy and on a larger patient cohort is warranted. Extensions of the method are also possible to further improve accuracy or to handle multi-sequence MR images.

摘要

目的

由于磁共振成像(MRI)具有出色的软组织对比度,且人们希望减少不必要的辐射剂量,放射治疗领域对用MRI取代CT的兴趣迅速增长。仅使用MR的放射治疗还简化了临床工作流程,并避免了将MR与CT对齐时的不确定性。然而,需要从患者的MR图像中得出等效CT表示(通常称为合成CT,即sCT),用于剂量计算和基于DRR的患者定位。合成CT估计对于混合PET-MR系统中的PET衰减校正也很重要。在这项工作中,我们提出了一种用于生成sCT的新型深度卷积神经网络(DCNN)方法,并在一组脑肿瘤患者图像上评估其性能。

方法

所提出的方法基于计算机视觉文献中深度学习和卷积神经网络的最新进展。所提出的DCNN模型有27个卷积层,中间穿插着池化层和解池化层,有3500万个自由参数,可以对其进行训练,以学习从MR图像到其相应CT的直接端到端映射。通过迁移学习原理并从预训练模型初始化模型权重,使得在我们有限的数据上训练这样一个大型模型成为可能。将18例同时拥有CT和T1加权MR图像的脑肿瘤患者用作实验数据,并进行六折交叉验证研究。将生成的每个sCT与同一患者的真实CT图像逐体素进行比较。还与基于图谱的方法进行了比较,该方法涉及可变形图谱配准和基于补丁的图谱融合。

结果

对于18名测试对象中的13名,所提出的DCNN方法产生的平均绝对误差(MAE)低于85 HU。所有对象的总体平均MAE为84.8±17.3 HU,发现这明显优于基于图谱方法的平均MAE(94.5±17.8 HU)。当使用其他两个指标进行评估时,DCNN方法也提供了明显更高的准确性:均方误差(分别为188.6±33.7和198.3±33.0)以及皮尔逊相关系数(分别为0.906±0.03和0.896±)。虽然训练一个DCNN模型可能会很慢,但只需要训练一次。将训练好的模型应用于为每个新的患者MR图像生成完整的sCT体积仅需9秒,这比基于图谱的方法快得多。

结论

开发了一种DCNN模型方法,并证明其能够从传统的单序列MR图像中近乎实时地生成高精度的sCT估计。定量结果还表明,所提出的方法在测试时的准确性和计算速度方面与基于图谱的方法相比具有优势。有必要对剂量计算准确性和更大的患者队列进行进一步验证。该方法也有可能进行扩展,以进一步提高准确性或处理多序列MR图像。

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