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SymBA: Diffeomorphic Registration Based on Gradient Orientation Alignment and Boundary Proximity of Sparsely Selected Voxels

机译:Symba:基于梯度取向对准和稀疏选择血管凝胶的边界接近的漫反射配准

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We propose a novel non-linear registration strategy which seeks an optimal deformation that maps corresponding boundaries of similar orientation. Our approach relies on a local similarity metric based on gradient orientation alignment and distance to the nearest inferred boundary and is evaluated on a reduced set of locations corresponding to inferred boundaries. The deformation model is characterized as the integration of a time-constant velocity field and optimization is performed in coarse to fine multi-level strategy with a gradient ascent technique. Our approach is computational efficient since it relies on a sparse selection of voxels corresponding to detected boundaries, yielding robust and accurate results with reduced processing times. We demonstrate quantitative results in the context of the non-linear registration of inter-patient magnetic resonance brain volumes obtained from a public dataset (CUMC12). Our proposed approach achieves a similar level of accuracy as other state-of-the-art methods but with processing times as short as 1.5 minutes. We also demonstrate preliminary qualitative results in the time-sensitive registration contexts of registering MR brain volumes to intra-operative ultrasound for improved guidance in neurosurgery.
机译:我们提出了一种新颖的非线性登记策略,可寻求映射相应方向的相应边界的最佳变形。我们的方法依赖于基于梯度方向对准和与最近推断边界的距离的局部相似度量,并且在对应于推断边界的减少的位置集中评估。变形模型的特征在于时常数速度场的积分,并且在具有梯度上升技术的粗略多级策略中执行优化。我们的方法是计算有效,因为它依赖于对应于检测到的边界的体素的稀疏选择,因此通过降低的处理时间产生稳健和准确的结果。我们证明了从公共数据集(CUMC12)获得的患者间磁共振脑体积的非线性注册的背景下的定量结果。我们所提出的方法实现了与其他最先进的方法相似的准确度,但加工时间短至1.5分钟。我们还证明了在将MR脑体积的时间敏感的登记上下规背景下展示初步定性结果,以改善神经外科的改善引导。

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