Dose reduction in computed tomography (CT) is essential for decreasing radiation risk in clinical applications. Iterative reconstruction is one of the most promising ways to compensate for the increased noise due to reduction of photon flux. Rather than most existing prior-driven algorithms that benefit from manually designed prior functions or supervised learning schemes, in this work we integrate the data-consistency as a conditional term into the iterative generative model for low-dose CT. At the stage of prior learning, the gradient of data density is directly learned from normal-dose CT images as a prior. Then at the iterative reconstruction stage, the stochastic gradient descent is employed to update the trained prior with annealed and conditional schemes. The distance between the reconstructed image and the manifold is minimized along with data fidelity during reconstruction. Experimental comparisons demonstrated the noise reduction and detail preservation abilities of the proposed method.
翻译:对减少临床应用中的辐射风险而言,减少计算断层摄影(CT)是减少放射风险的关键。循环重建是弥补光子通量减少导致噪音增加的最有希望的方法之一。比起从人工设计的先前功能或受监督的学习计划中受益的大多数现有先动算法,在这项工作中,我们将数据一致性作为条件条件条件纳入低剂量CT的迭代基因化模型中。在先前学习阶段,数据密度的梯度是以前从正常剂量的CT图像中直接学习的。然后,在迭接重建阶段,使用随机梯度梯度梯度下沉来更新以前经过培训的防疫和有条件计划。在重建过程中,将重建后的图像和元体之间的距离与数据对等性最小化。实验性比较显示,拟议方法的噪音减少和详细保存能力。