Deep Learning based Inter-Modality Image Registration Supervised by Intra-Modality Similarity.

Xiaohuan Cao, Jianhua Yang, Li Wang, Zhong Xue, Qian Wang, Dinggang Shen
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引用次数: 75

Abstract

Non-rigid inter-modality registration can facilitate accurate information fusion from different modalities, but it is challenging due to the very different image appearances across modalities. In this paper, we propose to train a non-rigid inter-modality image registration network, which can directly predict the transformation field from the input multimodal images, such as CT and MR images. In particular, the training of our inter-modality registration network is supervised by intra-modality similarity metric based on the available paired data, which is derived from a pre-aligned CT and MR dataset. Specifically, in the training stage, to register the input CT and MR images, their similarity is evaluated on the warped MR image and the MR image that is paired with the input CT. So that, the intra-modality similarity metric can be directly applied to measure whether the input CT and MR images are well registered. Moreover, we use the idea of dual-modality fashion, in which we measure the similarity on both CT modality and MR modality. In this way, the complementary anatomies in both modalities can be jointly considered to more accurately train the inter-modality registration network. In the testing stage, the trained inter-modality registration network can be directly applied to register the new multimodal images without any paired data. Experimental results have shown that, the proposed method can achieve promising accuracy and efficiency for the challenging non-rigid inter-modality registration task and also outperforms the state-of-the-art approaches.

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基于模态相似性监督的深度学习模态间图像配准。
非刚性模态间配准可以促进不同模态间信息的准确融合,但由于模态间图像外观差异很大,因此具有一定的挑战性。在本文中,我们提出训练一个非刚性的多模态图像配准网络,该网络可以直接从输入的多模态图像(如CT和MR图像)中预测变换场。特别是,我们的模态间配准网络的训练是由基于可用成对数据的模态内相似性度量来监督的,这些数据来自预对齐的CT和MR数据集。具体来说,在训练阶段,为了配准输入的CT和MR图像,在扭曲的MR图像和与输入CT配对的MR图像上评估它们的相似度。因此,可以直接应用模态内相似度度量来衡量输入的CT和MR图像是否配准良好。此外,我们使用双模态时尚的想法,其中我们测量CT模态和MR模态的相似性。这样,两种模态的互补解剖结构可以共同考虑,从而更准确地训练模态间配准网络。在测试阶段,训练好的多模态配准网络可以直接用于新的多模态图像的配准,而不需要任何配对数据。实验结果表明,对于具有挑战性的非刚性模态间配准任务,该方法具有较高的精度和效率,并且优于现有方法。
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