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Artifacts reduction method for phase-resolved Cone-Beam CT (CBCT) images via a prior-guided CNN

机译:通过先前引导的CNN的相位解析锥形光束CT(CBCT)图像的伪影减少方法

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Conventional Cone-Beam Computed Tomography (CBCT) acquisition suffers from motion blurring artifacts at the region of the thorax, and consequently, it may result in inaccuracy in localizing the target of treatment and verifying delivered dose in radiation therapy. Although 4D-CBCT reconstruction technology is available to alleviate the motion blurring artifacts with the strategy of projection sorting followed by independent reconstruction, under-sampling streaking artifacts and noise are observed in the set of 4D-CBCT images due to relatively fewer projections and large angular spacing in each phase. Aiming at improving the overall quality of 4D-CBCT images, we explored the performance of the deep learning model on 4D-CBCT images, which has been paid little attention before. Inspired by the high correlation among the 4D-CBCT images at different phases, we incorporated a prior image reconstructed from full-sampled projections beforehand into a lightweight structured convolutional neural network (CNN) as one input channel. The prior image used in the CNN model can guide the final output image to restore detailed features in the testing process, so it is referred to as Prior-guided CNN. Both simulation and real data experiments have been carried out to verify the effectiveness of our CNN model. Experimental results demonstrate the effectiveness of the proposed CNN regarding artifact suppression and preservation of anatomical structures. Quantitative evaluations also indicate that 33.3% and 21.2% increases in terms of Structural Similarity Index (SSIM) have been achieved by our model when comparing with gated reconstruction and images tested on CNN without prior knowledge, respectively.
机译:传统的锥形光束计算机断层扫描(CBCT)采集遭受胸部区域的运动模糊伪像,因此,它可能导致定位治疗的目标和验证放射疗法中的递送剂量的不准确性。尽管4D-CBCT重建技术可用于缓解具有投影分选策略的运动模糊伪像,随后是独立的重建,由于相对较少的突起和大角度,在4D-CBCT图像组中观察到欠采样条纹伪影和噪声每个阶段间隔。旨在提高4D-CBCT图像的整体质量,我们探讨了在4D-CBCT图像上的深度学习模型的性能,这在之前已经收到了很少的注意。灵感来自不同阶段的4D-CBCT图像之间的高相关,我们将预先从全抽样突起重建的先前图像以重量级结构化的卷积神经网络(CNN)作为一个输入通道。在CNN模型中使用的先前图像可以指导最终输出图像来恢复测试过程中的详细特征,因此它被称为先前引导的CNN。已经进行了模拟和实际数据实验,以验证我们的CNN模型的有效性。实验结果表明了所提出的CNN关于神器抑制和保存解剖结构的有效性。定量评估还表明,在与未经证实的CNN上测试的GATED重建和图像比较时,我们的模型已经通过了结构相似性指数(SSIM)的增加33.3%和21.2%。

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