变形:学习变形图像的外观变化

Jian Wang, Jiarui Xing, J.T. Druzgal, W. Wells, Miaomiao Zhang
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引用次数: 1

摘要

本文提出了一种新的预测模型MetaMorph,用于具有外观变化(即由脑肿瘤引起)的图像的变质配准。与之前基于学习的注册方法很少或根本不控制外观变化相比,我们的模型引入了一种新的正则化方法,可以有效地抑制外观变化区域的负面影响。特别是,我们通过学习异常区域的分割映射,在微分同构变换的切空间(也称为初始速度场)上开发了分段正则化。几何变换和外观变化被视为互惠互利的联合任务。我们的模型MetaMorph在分割指导下寻找最优配准解时更加鲁棒和准确,从而通过提供适当的增强训练标签来提高分割性能。我们在真实的三维人类脑肿瘤磁共振成像(MRI)扫描上验证了MetaMorph。实验结果表明,我们的模型优于目前最先进的基于学习的配准模型。所提出的MetaMorph在各种图像引导的临床干预中具有很大的潜力,例如用于肿瘤切除手术的实时图像引导导航系统。
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MetaMorph: Learning Metamorphic Image Transformation With Appearance Changes
This paper presents a novel predictive model, MetaMorph, for metamorphic registration of images with appearance changes (i.e., caused by brain tumors). In contrast to previous learning-based registration methods that have little or no control over appearance-changes, our model introduces a new regularization that can effectively suppress the negative effects of appearance changing areas. In particular, we develop a piecewise regularization on the tangent space of diffeomorphic transformations (also known as initial velocity fields) via learned segmentation maps of abnormal regions. The geometric transformation and appearance changes are treated as joint tasks that are mutually beneficial. Our model MetaMorph is more robust and accurate when searching for an optimal registration solution under the guidance of segmentation, which in turn improves the segmentation performance by providing appropriately augmented training labels. We validate MetaMorph on real 3D human brain tumor magnetic resonance imaging (MRI) scans. Experimental results show that our model outperforms the state-of-the-art learning-based registration models. The proposed MetaMorph has great potential in various image-guided clinical interventions, e.g., real-time image-guided navigation systems for tumor removal surgery.
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