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On the usefulness of gradient information in multi-objective deformable image registration using a B-spline-based dual-dynamic transformation model: comparison of three optimization algorithms

机译:基于B样条双动态变换模型的梯度信息在多目标可变形图像配准中的实用性:三种优化算法的比较

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The use of gradient information is well-known to be highly useful in single-objective optimization-based image registration methods. However, its usefulness has not yet been investigated for deformable image registration from a multi-objective optimization perspective. To this end, within a previously introduced multi-objective optimization framework, we use a smooth B-spline-based dual-dynamic transformation model that allows us to derive gradient information analytically, while still being able to account for large deformations. Within the multi-objective framework, we previously employed a powerful evolutionary algorithm (EA) that computes and advances multiple outcomes at once, resulting in a set of solutions (a so-called Pareto front) that represents efficient trade-offs between the objectives. With the addition of the B-spline-based transformation model, we studied the usefulness of gradient information in multi-objective deformable image registration using three different optimization algorithms: the (gradient-less) EA, a gradient-only algorithm, and a hybridization of these two. We evaluated the algorithms to register highly deformed images: 2D MRI slices of the breast in prone and supine positions. Results demonstrate that gradient-based multi-objective optimization significantly speeds up optimization in the initial stages of optimization. However, allowing sufficient computational resources, better results could still be obtained with the EA. Ultimately, the hybrid EA found the best overall approximation of the optimal Pareto front, further indicating that adding gradient-based optimization for multi-objective optimization-based deformable image registration can indeed be beneficial.
机译:众所周知,在基于单目标优化的图像配准方法中,梯度信息的使用非常有用。但是,从多目标优化角度出发,尚未研究其在变形图像配准中的有用性。为此,在先前引入的多目标优化框架内,我们使用基于B样条的平滑双动态变换模型,该模型允许我们分析性地得出梯度信息,同时仍然能够解决较大的变形。在多目标框架内,我们以前使用了功能强大的进化算法(EA),该算法可一次计算并提高多个结果,从而产生了一组表示目标之间有效权衡的解决方案(所谓的Pareto前沿)。通过添加基于B样条的变换模型,我们使用三种不同的优化算法(无梯度EA),仅梯度算法和混合算法研究了梯度信息在多目标可变形图像配准中的实用性在这两个中。我们评估了用于注册高度变形图像的算法:俯卧和仰卧位的2D乳腺MRI切片。结果表明,基于梯度的多目标优化可在优化的初始阶段显着加快优化速度。但是,如果有足够的计算资源,使用EA仍可以获得更好的结果。最终,混合EA找到了最佳Pareto前沿的最佳整体近似值,进一步表明,为基于多目标优化的可变形图像配准添加基于梯度的优化确实是有益的。

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