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Robust Non-rigid Registration Through Agent-Based Action Learning

机译:通过基于代理的动作学习进行稳健的非刚性注册

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Robust image registration in medical imaging is essential for comparison or fusion of images, acquired from various perspectives, modalities or at different times. Typically, an objective function needs to be minimized assuming specific a priori deformation models and predefined or learned similarity measures. However, these approaches have difficulties to cope with large deformations or a large variability in appear-ance. Using modern deep learning (DL) methods with automated feature design, these limitations could be resolved by learning the intrinsic mapping solely from experience. We investigate in this paper how DL could help organ-specific (ROI-specific) deformable registration, to solve motion compensation or atlas-based segmentation problems for instance in prostate diagnosis. An artificial agent is trained to solve the task of non-rigid registration by exploring the parametric space of a statistical deformation model built from training data. Since it is difficult to extract trustworthy ground-truth deformation fields, we present a training scheme with a large number of synthetically deformed image pairs requiring only a small number of real inter-subject pairs. Our approach was tested on inter-subject registration of prostate MR data and reached a median DICE score of .88 in 2-D and .76 in 3-D, therefore showing improved results compared to state-of-the-art registration algorithms.
机译:在医学成像中,强大的图像配准对于从各种角度,方式或在不同时间获取的图像的比较或融合至关重要。通常,需要假设特定的先验变形模型以及预定义的或获悉的相似性度量,以最小化目标函数。然而,这些方法难以应对大的变形或外观上的大的变化。使用具有自动功能设计的现代深度学习(DL)方法,可以通过仅从经验中学习内在映射来解决这些限制。我们在本文中研究了DL如何帮助器官特异性(ROI特异性)可变形配准,以解决运动补偿或基于图集的分割问题,例如在前列腺诊断中。通过探索由训练数据构建的统计变形模型的参数空间,对人工代理进行训练以解决非刚性配准的任务。由于很难提取可信赖的地面真实变形场,因此我们提出了一种训练方案,其中包含大量仅需要少量真实对象间对的合成变形图像对。我们的方法在受试者MR数据的受试者间配准上进行了测试,在2D中DICE得分中位数为0.88,在3D中DICE得分为0.76,因此与最新的配准算法相比,其结果得到了改善。

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