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CBCT-Based Synthetic MRI Generation for CBCT-Guided Adaptive Radiotherapy

机译:基于CBCT的自适应MRI的合成MRI生成

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Cone-beam computed tomography (CBCT) has been widely used in image-guided radiation therapy for patient setup to improve treatment performance. However, the low soft tissue contrast on CBCT may limit its utility when soft tissue alignment is of interest. Moreover, the potential application of CBCT in adaptive radiation therapy also requires superior soft tissue contrast for online target and organ-at-risk delineation and localization. The purpose of this study is to develop a deep learning-based approach to generate synthetic MRI (sMRI) from CBCT to provide a high soft tissue contrast on CBCT anatomy. The proposed method integrates a dense block and self-attention concept into a cycle-consistent adversarial network (cycleGAN) framework, called attention-cycleGAN, to learn a mapping between CBCT images and paired MRI. Compared with a GAN, a cycleGAN includes an inverse transformation from CBCT to MRI, which constrains the model by forcing a one-to-one mapping. A fully convolution neural network (FCN) with U-Net architecture is used in the generator to enable end-to-end CBCT-to-MRI transformations. Dense blocks and self-attention strategy are used to learn the information to well represent the CBCT image and to map to the specific MRI structure. The experimental results demonstrated that the proposed method could accurately generate sMRI with a similar soft-tissue contract as real MRI.
机译:锥束计算机断层扫描(CBCT)已广泛用于图像引导的放射治疗中,以提高患者的治疗水平。但是,当关注软组织对齐时,CBCT上的低软组织对比度可能会限制其实用性。此外,CBCT在适应性放射治疗中的潜在应用还需要卓越的软组织对比度,以进行在线靶标和有风险的器官描绘和定位。这项研究的目的是开发一种基于深度学习的方法,以从CBCT生成合成MRI(sMRI),以在CBCT解剖结构上提供较高的软组织对比度。所提出的方法将密集块和自我注意的概念集成到称为“关注周期GAN”的周期一致对抗网络(cycleGAN)框架中,以学习CBCT图像与配对MRI之间的映射。与GAN相比,cycleGAN包括从CBCT到MRI的逆变换,它通过强制一对一映射来约束模型。生成器中使用具有U-Net架构的全卷积神经网络(FCN),以实现端到端CBCT到MRI的转换。密集块和自我注意策略用于学习信息,以很好地表示CBCT图像并映射到特定的MRI结构。实验结果表明,该方法可以准确产生具有与真实MRI相似的软组织收缩的sMRI。

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