首页> 外国专利> USING NEURAL NETWORKS TO ESTIMATE MOTION VECTORS FOR MOTION CORRECTED PET IMAGE RECONSTRUCTION

USING NEURAL NETWORKS TO ESTIMATE MOTION VECTORS FOR MOTION CORRECTED PET IMAGE RECONSTRUCTION

机译:利用神经网络来估计运动校正PET图像重建的运动向量

摘要

To reduce the effect(s) caused by patient breathing and movement during PET data acquisition, an unsupervised non-rigid image registration framework using deep learning is used to produce motion vectors for motion correction. In one embodiment, a differentiable spatial transformer layer is used to warp the moving image to the fixed image and use a stacked structure for deformation field refinement. Estimated deformation fields can be incorporated into an iterative image reconstruction process to perform motion compensated PET image reconstruction. The described method and system, using simulation and clinical data, provide reduced error compared to at least one iterative image registration process.
机译:为了减少由患者呼吸和移动期间的运动引起的效果,使用深度学习的无监督的非刚性图像登记框架用于产生运动校正的运动矢量。 在一个实施例中,可分离的空间变压器层用于将运动图像经过固定图像,并使用堆叠结构进行变形场改进。 估计的变形字段可以结合到迭代图像重建过程中以执行运动补偿PET图像重建。 与至少一个迭代图像配准过程相比,所描述的方法和系统提供了减少的误差。

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