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Statistical Iterative CBCT Reconstruction Based on Neural Network

机译:基于神经网络的统计迭代CBCT重构

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摘要

Cone-beam CT (CBCT) plays an important role in radiation therapy. Statistical iterative reconstruction (SIR) algorithms with specially designed penalty terms provide good performance for low-dose CBCT imaging. Among others, the total variation (TV) penalty is the current state-of-the-art in removing noises and preserving edges, but one of its well-known limitations is its staircase effect. Recently, various penalty terms with higher-order differential operators were proposed to replace the TV penalty to avoid the staircase effect, at the cost of slightly blurring object edges. We developed a novel SIR algorithm using a neural network for CBCT reconstruction. We used a data-driven method to learn the “potential regularization term” rather than design a penalty term manually. This approach converts the problem of designing a penalty term in the traditional statistical iterative framework to designing and training a suitable neural network for CBCT reconstruction. We proposed using transfer learning to overcome the data deficiency problem, and an iterative deblurring approach specially designed for the CBCT iterative reconstruction process during which the noise level and resolution of the reconstructed images may change. Through experiments conducted on two physical phantoms, two simulation digital phantoms, and patient data, we demonstrated the excellent performance of the proposed network-based SIR for CBCT reconstruction, both visually and quantitatively. Our proposed method can overcome the staircase effect, preserve both edges and regions with smooth intensity transition, and provide reconstruction results at high resolution and low noise level.
机译:锥形束CT(CBCT)在放射治疗中起着重要作用。具有特殊设计的惩罚项的统计迭代重建(SIR)算法为低剂量CBCT成像提供了良好的性能。其中,总变化量(TV)罚分是消除噪声和保留边缘的最新技术,但其众所周知的局限性之一是其阶梯效应。最近,提出了具有高阶微分算子的各种惩罚项来代替TV惩罚以避免阶梯效应,但代价是物体边缘稍微模糊。我们使用神经网络开发了一种新颖的SIR算法,用于CBCT重建。我们使用数据驱动的方法来学习“潜在正则化项”,而不是手动设计惩罚项。这种方法将在传统的统计迭代框架中设计惩罚项的问题转换为设计和训练适合于CBCT重建的神经网络。我们提出了使用转移学习来克服数据不足问题的方法,以及一种专门为CBCT迭代重建过程设计的迭代去模糊方法,在此过程中,重建图像的噪声水平和分辨率可能会发生变化。通过在两个物理模型,两个模拟数字模型和患者数据上进行的实验,我们在视觉和定量上证明了所提出的基于网络的SIR在CBCT重建中的出色性能。我们提出的方法可以克服阶梯效应,保持边缘和区域平滑的强度过渡,并以高分辨率和低噪声水平提供重建结果。

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