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Magnetic resonance image (MRI) synthesis from brain computed tomography (CT) images based on deep learning methods for magnetic resonance (MR)-guided radiotherapy

机译:基于磁共振的深度学习方法(MR)-Guided放射治疗的深度学习方法,磁共振图像(MRI)从脑计算断层扫描(CT)图像中合成

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Background: Precise patient setup is critical in radiation therapy. Medical imaging plays an essential role in patient setup. As compared to computed tomography (CT) images, magnetic resonance image (MRI) has high contrast for soft tissues, which becomes a promising imaging modality during treatment. In this paper, we proposed a method to synthesize brain MRI images from corresponding planning CT (pCT) images. The synthetic MRI (sMRI) images can be used to align with positioning MRI (pMRI) equipped by an MRI-guided accelerator to account for the disadvantages of multi-modality image registration. Methods: Several deep learning network models were applied to implement this brain MRI synthesis task, including CycleGAN, Pix2Pix model, and U-Net. We evaluated these methods using several metrics, including mean absolute error (MAE), mean squared error (MSE), structural similarity index (SSIM), and peak signal-to-noise ratio (PSNR). Results: In our experiments, U-Net with L1+L2 loss achieved the best results with the lowest overall average MAE of 74.19 and MSE of 1.035*104, respectively, and produced the highest SSIM of 0.9440 and PSNR of 32.44. Conclusions: Quantitative comparisons suggest that the performance of U-Net, a supervised deep learning method, is better than the performance of CycleGAN, a typical unsupervised method, in our brain MRI synthesis procedure. The proposed method can convert pCT/pMRI multi-modality registration into mono-modality registration, which can be used to reduce registration error and achieve a more accurate patient setup.
机译:背景:精确的患者设置在放射疗法中至关重要。医学成像在患者设置中起着重要作用。与计算的断层扫描(CT)图像相比,磁共振图像(MRI)对软组织具有高对比度,其在处理期间成为有希望的成像模态。在本文中,我们提出了一种从相应的规划CT(PCT)图像中综合脑MRI图像的方法。合成MRI(SMRI)图像可用于将由MRI引导加速器配备的定位MRI(PMRI)对准,以考虑多种模式图像配准的缺点。方法:应用了几种深度学习网络模型来实现此脑MRI综合任务,包括Conscangan,Pix2Pix模型和U-Net。我们使用几个度量评估这些方法,包括平均绝对误差(MAE),均方误差(MSE),结构相似度指数(SSIM)和峰值信噪比(PSNR)。结果:在我们的实验中,具有L1 + L2损失的U-Net达到了最佳效果,分别为74.19和MSE为1.035 * 104的最低总体,并产生了0.9440的最高SSSIM和32.44的PSNR。结论:定量比较表明,U-Net的性能,监督的深度学习方法,优于Crycangan,典型的无监督方法,在我们的脑MRI合成程序中的性能。所提出的方法可以将PCT / PMRI多模态注册转换为单片式登记,可用于减少登记误差并实现更准确的患者设置。

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