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Learning Deformable Point Set Registration with Regularized Dynamic Graph CNNs for Large Lung Motion in COPD Patients

机译:学习可变形点设置注册与COPD患者的大肺动量的正则化动态图CNN

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Deformable registration continues to be one of the key challenges in medical image analysis. While iconic registration methods have started to benefit from the recent advances in medical deep learning, the same does not yet apply for the registration of point sets, e.g. registration based on surfaces, keypoints or landmarks. This is mainly due to the restriction of the convolution operator in modern CNNs to densely grid-ded input. However, with the newly developed methods from the field of geometric deep learning suitable tools are now emerging, which enable powerful analysis of medical data on irregular domains. In this work, we present a new method that enables the learning of regularized feature descriptors with dynamic graph CNNs. By incorporating the learned geometric features as prior probabilities into the well-established coherent point drift (CPD) algorithm, formulated as differentiable network layer, we establish an end-to-end framework for robust registration of two point sets. Our approach is evaluated on the challenging task of aligning keypoints extracted from lung CT scans in inhale and exhale states with large deformations and without any additional intensity information. Our results indicate that the inherent geometric structure of the extracted keypoints is sufficient to establish descriptive point features, which yield a significantly improved performance and robustness of our registration framework.
机译:可变形的登记仍然是医学图像分析中的关键挑战之一。虽然标志性的登记方法已开始受益于最近医学深度学习的进步,但尚未申请点集的登记,例如,尚未申请点数,例如基于曲面,关键点或地标的注册。这主要是由于在现代CNN中的卷积运算符的限制,以密集的网格输入。然而,随着来自几何深度学习领域的新开发方法,现在正在出现合适的工具,这使得能够强大地分析不规则结构域的医疗数据。在这项工作中,我们提出了一种新方法,可以使用动态图CNNS来学习正则化功能描述符。通过将学习的几何特征作为现有概率结合到建立的良好的相干点漂移(CPD)算法中,配制为可分辨率网络层,我们建立了一个稳健登记的端到端框架,用于两点集。我们的方法是对对准从肺CT扫描中提取的关键点的具有挑战性的任务,具有大变形,没有任何额外的强度信息。我们的结果表明,所提取的关键点的固有几何结构是足以建立描述点的功能,其产生我们的注册框架的显著改进的性能和鲁棒性。

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