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稀疏形态学:一种用于单模态和多模态可变形图像配准的弱监督轻量级稀疏转换器。

SparseMorph: A weakly-supervised lightweight sparse transformer for mono- and multi-modal deformable image registration.

机构信息

College of Artificial Intelligence, Nankai University, Tianjin, 300350, China; Engineering Research Center of Trusted Behavior Intelligence, Ministry of Education, Nankai University, Tianjin, 300350, China; Institute of Intelligence Technology and Robotic Systems, Shenzhen Research Institute of Nankai University, Shenzhen, 518083, China.

College of Artificial Intelligence, Nankai University, Tianjin, 300350, China; Engineering Research Center of Trusted Behavior Intelligence, Ministry of Education, Nankai University, Tianjin, 300350, China; Institute of Intelligence Technology and Robotic Systems, Shenzhen Research Institute of Nankai University, Shenzhen, 518083, China.

出版信息

Comput Biol Med. 2024 Nov;182:109205. doi: 10.1016/j.compbiomed.2024.109205. Epub 2024 Sep 26.

Abstract

PURPOSE

Deformable image registration (DIR) is crucial for improving the precision of clinical diagnosis. Recent Transformer-based DIR methods have shown promising performance by capturing long-range dependencies. Nevertheless, these methods still grapple with high computational complexity. This work aims to enhance the performance of DIR in both computational efficiency and registration accuracy.

METHODS

We proposed a weakly-supervised lightweight Transformer model, named SparseMorph. To reduce computational complexity without compromising the representative feature capture ability, we designed a sparse multi-head self-attention (SMHA) mechanism. To accumulate representative features while preserving high computational efficiency, we constructed a multi-branch multi-layer perception (MMLP) module. Additionally, we developed an anatomically-constrained weakly-supervised strategy to guide the alignment of regions-of-interest in mono- and multi-modal images.

RESULTS

We assessed SparseMorph in terms of registration accuracy and computational complexity. Within the mono-modal brain datasets IXI and OASIS, our SparseMorph outperforms the state-of-the-art method TransMatch with improvements of 3.2 % and 2.9 % in DSC scores for MRI-to-CT registration tasks, respectively. Moreover, in the multi-modal cardiac dataset MMWHS, our SparseMorph shows DSC score improvements of 9.7 % and 11.4 % compared to TransMatch in MRI-to-CT and CT-to-MRI registration tasks, respectively. Notably, SparseMorph attains these performance advantages while utilizing 33.33 % of the parameters of TransMatch.

CONCLUSIONS

The proposed weakly-supervised deformable image registration model, SparseMorph, demonstrates efficiency in both mono- and multi-modal registration tasks, exhibiting superior performance compared to state-of-the-art algorithms, and establishing an effective DIR method for clinical applications.

摘要

目的

变形图像配准(DIR)对于提高临床诊断的精度至关重要。基于 Transformer 的 DIR 方法通过捕捉长程依赖关系,已经展现出了很有前景的性能。然而,这些方法仍然存在着高计算复杂度的问题。本研究旨在提高 DIR 在计算效率和配准精度方面的性能。

方法

我们提出了一种名为 SparseMorph 的弱监督轻量化 Transformer 模型。为了在不降低代表性特征捕获能力的前提下降低计算复杂度,我们设计了稀疏多头自注意力(SMHA)机制。为了在保持高计算效率的同时积累代表性特征,我们构建了多分支多层感知(MMLP)模块。此外,我们开发了一种解剖约束的弱监督策略,以指导单模态和多模态图像中感兴趣区域的对齐。

结果

我们从配准精度和计算复杂度两个方面评估了 SparseMorph。在单模态脑数据集 IXI 和 OASIS 中,我们的 SparseMorph 在 MRI-to-CT 配准任务中分别比最先进的方法 TransMatch 提高了 3.2%和 2.9%的 DSC 评分。此外,在多模态心脏数据集 MMWHS 中,我们的 SparseMorph 在 MRI-to-CT 和 CT-to-MRI 配准任务中分别比 TransMatch 提高了 9.7%和 11.4%的 DSC 评分。值得注意的是,SparseMorph 在仅使用 TransMatch 33.33%参数的情况下实现了这些性能优势。

结论

所提出的基于弱监督的变形图像配准模型 SparseMorph 在单模态和多模态配准任务中均具有高效性,与最先进的算法相比表现出了优越的性能,为临床应用建立了一种有效的 DIR 方法。

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