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On the Adaptability of Unsupervised CNN-Based Deformable Image Registration to Unseen Image Domains

机译:基于无监督的CNN的可变形图像配准对看不见的图像域的适应性

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摘要

Deformable image registration is a fundamental problem in medical image analysis. During the last years, several methods based on deep convolutional neural networks (CNN) proved to be highly accurate to perform this task. These models achieved state-of-the-art accuracy while drastically reducing the required computational time, but mainly focusing on images of specific organs and modalities. To date, no work has reported on how these models adapt across different domains. In this work, we ask the question: can we use CNN-based registration models to spatially align images coming from a domain different than the one/s used at training time? We explore the adaptability of CNN-based image registration to different organs/modalities. We employ a fully convolutional architecture trained following an unsupervised approach. We consider a simple transfer learning strategy to study the generalisation of such model to unseen target domains, and devise a one-shot learning scheme taking advantage of the unsupervised nature of the proposed method. Evaluation on two publicly available datasets of X-Ray lung images and cardiac cine magnetic resonance sequences is provided. Our experiments suggest that models learned in different domains can be transferred at the expense of a decrease in performance, and that one-shot learning in the context of unsupervised CNN-based registration is a valid alternative to achieve consistent registration performance when only a pair of images from the target domain is available.
机译:可变形的图像配准是医学图像分析中的基本问题。在过去的几年中,事实证明,基于深度卷积神经网络(CNN)的几种方法可以非常准确地执行此任务。这些模型达到了最先进的精度,同时大大减少了所需的计算时间,但主要集中在特定器官和形态的图像上。迄今为止,还没有关于这些模型如何适应不同领域的报告。在这项工作中,我们提出一个问题:我们可以使用基于CNN的注册模型来对来自与训练时所使用的域不同的域的图像进行空间对齐吗?我们探索基于CNN的图像配准对不同器官/方式的适应性。我们采用经过无监督方法训练的完全卷积架构。我们考虑一种简单的转移学习策略,以研究这种模型对看不见的目标域的泛化,并利用所提出方法的无监督性质设计一种一次性学习方案。提供了对两个公共可用的X射线肺图像和心脏电影磁共振序列的数据集的评估。我们的实验表明,可以以降低性能的代价为代价转让在不同域中学习的模型,并且在仅基于一对CNN的注册的情况下,在无监督的基于CNN的注册情况下进行一次学习是实现一致注册性能的有效替代方法。来自目标域的图像可用。

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  • 来源
  • 会议地点 Granada(ES)
  • 作者单位

    Research Institute for Signals, Systems and Computational Intelligence, Sinc(i), FICH-UNL/CONICET, Santa Fe, Argentina;

    Biomedical Image Analysis Group, Imperial College London, London, UK;

    Biomedical Image Analysis Group, Imperial College London, London, UK;

    Research Institute for Signals, Systems and Computational Intelligence, Sinc(i), FICH-UNL/CONICET, Santa Fe, Argentina;

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  • 正文语种 eng
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