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Diffeomorphic Demons using Normalised Mutual Information, Evaluation on Multi-Modal Brain MR Images

机译:泛色的互信息的扩散恶魔,对多模态脑MR图像的评估

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The demons algorithm is a fast non-parametric non-rigid registration method. In recent years great efforts have been made to improve the approach; the state of the art version yields symmetric inverse-consistent large-deformation diffeomorphisms. However, only limited work has explored inter-modal similarity metrics, with no practical evaluation on multi-modality data. We present a diffeomorphic demons implementation using the analytical gradient of Normalised Mutual Information (NMI) in a conjugate gradient optimiser. We report the first qualitative and quantitative assessment of the demons for inter-modal registration. Experiments to spatially normalise real MR images, and to recover simulated deformation fields, demonstrate (i) similar accuracy from NMI-demons and classical demons when the latter may be used, and (ii) similar accuracy for NMI-demons on T1w-T1w and T1w-T2w registration, demonstrating its potential in multi-modal scenarios.
机译:恶魔算法是一种快速的非参数非刚性登记方法。近年来,已经努力提高了这种方法;最先进的版本产生对称的反向一致的大变形扩散偏心。但是,只有有限的工作探索了模态相似度指标,对多模态数据没有实际评估。我们在共轭梯度优化器中使用归一化互信息(NMI)的分析梯度呈现了扩散梯度。我们报告了对莫代尔间登记的恶魔的第一个定性和定量评估。在空间上正常化真实MR图像的实验,并恢复模拟变形场,演示(i)当可以使用后者时的NMI-DEMONS和经典恶魔的类似精度,并且(ii)在T1W-T1W上的NMI-DEMONS类似的准确度和T1W-T2W注册,展示其在多模态方案中的潜力。

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