Broad-UNet-diff: Diffeomorphic Deformable Medical Image Registration based on Multi-Scale Feature Learning

Q3 Computer Science
Tianqi Cheng, Lei Wang, Yuwei Wang, Xinping Guo, Chunxiang Liu
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引用次数: 0

Abstract

Introduction: To propose a medical image registration method with significant performance improvement. The spatial transformation obtained by the traditional deformable image registration technology is not smooth enough, and the calculation amount is too large to solve the optimization parameters. The network model proposed based on deep learning medical image registration technology has some limitations, which cannot guarantee the registration of topological structures, resulting in the loss of spatial features. It makes the model have topological conservation and transform reversibility, has the ability to learn more multi-scale features and complex image structures, and captures finer changes while clearly encoding global correlation. Method: Based on the core UNet model, a deformable image registration method with a new architecture Broad-UNet-diff is proposed. The model is equipped with asymmetric parallel convolution and uses diffeomorphism mapping. Result: Compared with the seven classical registration methods under the brain MRI datasets, the proposed method has significantly improved the registration performance. In particular, compared with the advanced TransMorph-diff registration method, the Dice score can be improved by 12 %, but only the 1/10 parameters are needed. Conclusion: This method confirms its convincing effectiveness and accuracy.
Broad-UNet-diff:基于多尺度特征学习的差分变形医学图像配准
摘要:提出一种性能显著提高的医学图像配准方法。传统的可变形图像配准技术得到的空间变换不够平滑,且计算量过大,无法求解优化参数。基于深度学习医学图像配准技术提出的网络模型存在一定的局限性,不能保证拓扑结构的配准,导致空间特征的丢失。它使模型具有拓扑守恒性和变换可逆性,具有学习更多多尺度特征和复杂图像结构的能力,在清晰编码全局相关性的同时捕获更精细的变化。方法:基于核心UNet模型,提出了一种基于wide -UNet-diff结构的可变形图像配准方法。该模型采用非对称并行卷积和差分同构映射。结果:与脑MRI数据集下的7种经典配准方法相比,本文方法的配准性能明显提高。特别是,与先进的transmorphi -diff配准方法相比,Dice分数可以提高12%,但只需要1/10个参数。结论:该方法具有令人信服的有效性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Recent Advances in Computer Science and Communications
Recent Advances in Computer Science and Communications Computer Science-Computer Science (all)
CiteScore
2.50
自引率
0.00%
发文量
142
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