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Regularization in deformable registration of biomedical images based on divergence and curl operators

机译:基于散度和卷曲运算符的生物医学图像可变形配准的正则化

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Background: Similarity measures in medical images do not uniquely determine the correspondence between two voxels in deformable image registration. Uncertainties in the final computed deformation exist, questioning the actual physiological consistency of the deformation between the two images. Objectives: We developed a deformable image registration method that regularizes the deformation field in order to model a deformation with physiological properties, relying on vector calculus based operators as a regularization function. Method: We implemented a 3D multi-resolution parametric deformable image registration, containing divergence and curl of the deformation field as regularization terms. Exploiting a BSpline model, we fit the transformation to optimize histogram-based mutual information similarity measure. In order to account for compression/expansion, we extract sink/source/circulation components as irregularities in the warped image and compensate them. The registration performance was evaluated using Jacobian determinant of the deformation field, inverse-consistency, landmark errors and residual image difference along with displacement field errors. Finally, we compare our results to a robust combination of second derivative regularization, as well as to non-regularized methods. Results: The implementation was tested on synthetic phantoms and clinical data, leading to increased image similarity and reduced inverse-consistency errors. The statistical analysis on clinical cases showed that regularized methods are able to achieve better image similarity than non regularized methods. Also, divergence/curl regularization improves anatomical landmark errors compared to second derivative regularization. Conclusion: The implemented divergence/ curl regularization was successfully tested, leading to promising results in comparison with competitive regularization methods. Future work is required to establish parameter tuning and reduce the computational cost.
机译:背景:医学图像中的相似性度量不能唯一确定可变形图像配准中两个体素之间的对应关系。最终计算出的变形存在不确定性,这质疑了两个图像之间变形的实际生理一致性。目的:我们开发了一种可变形的图像配准方法,该方法可对变形场进行正则化,以对具有生理特性的变形进行建模,并依靠基于矢量演算的算子作为正则化函数。方法:我们实现了3D多分辨率参数化可变形图像配准,其中包含变形场的发散和卷曲作为正则项。利用BSpline模型,我们拟合转换以优化基于直方图的互信息相似性度量。为了解决压缩/扩展问题,我们提取了汇/源/循环分量作为扭曲图像中的不规则性,并对其进行了补偿。使用变形场,反一致性,界标误差和残留图像差异以及位移场误差的雅可比行列式评估配准性能。最后,我们将结果与二阶导数正则化的强大组合以及非正则化方法进行比较。结果:在合成体模和临床数据上对该实现进行了测试,从而提高了图像相似性并减少了反一致性误差。对临床病例的统计分析表明,正规化方法比非正规化方法能够实现更好的图像相似性。而且,与二阶导数正则化相比,散度/卷曲正则化改善了解剖界标错误。结论:已成功测试了所执行的发散/卷曲正则化,与竞争性正则化方法相比,产生了可喜的结果。需要进一步的工作来建立参数调整并降低计算成本。

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