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One-Shot Learning for Deformable Medical Image Registration and Periodic Motion Tracking

机译:可变形医学图像配准和周期性运动跟踪的一次性学习

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摘要

Deformable image registration is a very important field of research in medical imaging. Recently multiple deep learning approaches were published in this area showing promising results. However, drawbacks of deep learning methods are the need for a large amount of training datasets and their inability to register unseen images different from the training datasets. One shot learning comes without the need of large training datasets and has already been proven to be applicable to 3D data. In this work we present a one shot registration approach for periodic motion tracking in 3D and 4D datasets. When applied to a 3D dataset the algorithm calculates the inverse of the registration vector field simultaneously. For registration we employed a U-Net combined with a coarse to fine approach and a differential spatial transformer module. The algorithm was thoroughly tested with multiple 4D and 3D datasets publicly available. The results show that the presented approach is able to track periodic motion and to yield a competitive registration accuracy. Possible applications are the use as a stand-alone algorithm for 3D and 4D motion tracking or in the beginning of studies until enough datasets for a separate training phase are available.
机译:可变形图像配准是医学成像的一个非常重要的研究领域。最近,在这个区域发表了多种深入学习方法,显示出现有希望的结果。然而,深度学习方法的缺点是需要大量的训练数据集及其无法注册与训练数据集不同的看不见的图像。一个拍摄学习而没有需要大型训练数据集,并且已被证明适用于3D数据。在这项工作中,我们为3D和4D数据集中的定期运动跟踪提供了一个拍摄的登记方法。当应用于3D数据集时,算法同时计算注册矢量字段的倒数。对于注册,我们使用U-Net与粗略的方法和差分空间变压器模块相结合。通过公开可用的多个4D和3D数据集进行彻底测试该算法。结果表明,所提出的方法能够跟踪周期性运动并产生竞争性的登记准确性。可能的应用是用作3D和4D运动跟踪的独立算法,或者在研究的开头,直到可用的单独训练阶段的足够数据集。

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