Robust Fast Inter-Bin Image Registration for Undersampled Coronary MRI Based on a Learned Motion Prior.

IF 4.4 2区 医学 Q2 ENGINEERING, BIOMEDICAL IEEE Transactions on Biomedical Engineering Pub Date : 2024-10-15 DOI:10.1109/TBME.2024.3481010
Fan Yang, Zhihao Xue, Hongfei Lu, Jingjing Xu, Haiyang Chen, Zhuo Chen, Yixin Emu, Ahmed Aburas, Juan Gao, Chenhao Gao, Hang Jin, Shengxian Tu, Chenxi Hu
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Abstract

Objective: To propose a 3D nonrigid registration method that accurately estimates the 3D displacement field from artifact-corrupted Coronary Magnetic Resonance Angiography (CMRA) images.

Methods: We developed a novel registration framework for registration of artifact-corrupted images based on a 3D U-Net initializer and a deep unrolling network. By leveraging a supervised learning framework with training labels estimated from fully-sampled images, the unrolling network learns a task-specific motion prior which reduces motion estimation biases caused by undersampling artifacts in the source images. We evaluated the proposed method, UNROLL, against an iterative Free-Form Deformation (FFD) registration method and a recently proposed Respiratory Motion Estimation network (RespME-net) for 6-fold (in-distribution) and 11-fold (out-of-distribution) accelerated CMRA.

Results: Compared to the baseline methods, UNROLL improved both the accuracy of motion estimation and the quality of motion-compensated CMRA reconstruction at 6-fold acceleration. Furthermore, even at 11-fold acceleration, which was not included during training, UNROLL still generated more accurate displacement fields than the baseline methods. The computational time of UNROLL for the whole 3D volume was only 2 seconds.

Conclusion: By incorporating a learned respiratory motion prior, the proposed method achieves highly accurate motion estimation despite the large acceleration.

Significance: This work introduces a fast and accurate method to estimate the displacement field from low-quality source images. It has the potential to significantly improve the quality of motion-compensated reconstruction for highly accelerated 3D CMRA.

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基于学习运动先验的未采样冠状动脉磁共振成像的稳健快速图像区间配准
目的提出一种三维非刚性配准方法,该方法能从伪影损坏的冠状动脉磁共振血管造影(CMRA)图像中准确估计出三维位移场:我们开发了一种基于三维 U-Net 初始化器和深度展开网络的新型配准框架,用于配准伪影损坏的图像。通过利用从完全采样图像中估算出的训练标签的监督学习框架,解卷网络学习了特定任务的运动先验,从而减少了源图像中采样不足的伪影造成的运动估算偏差。我们针对 6 倍(分布内)和 11 倍(分布外)加速 CMRA,将所提出的 UNROLL 方法与迭代自由形态变形(FFD)配准方法和最近提出的呼吸运动估计网络(RespME-net)进行了对比评估:结果:与基线方法相比,UNROLL 在 6 倍加速时提高了运动估计的准确性和运动补偿 CMRA 重建的质量。此外,即使在 11 倍加速度下(训练时未包括 11 倍加速度),UNROLL 生成的位移场仍然比基线方法更精确。整个三维体积的 UNROLL 计算时间仅为 2 秒:结论:通过加入学习的呼吸运动先验,尽管存在较大的加速度,所提出的方法仍能实现高度精确的运动估计:这项工作介绍了一种快速、准确的方法,可从低质量的源图像中估计位移场。它有望显著提高高加速三维 CMRA 的运动补偿重建质量。
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来源期刊
IEEE Transactions on Biomedical Engineering
IEEE Transactions on Biomedical Engineering 工程技术-工程:生物医学
CiteScore
9.40
自引率
4.30%
发文量
880
审稿时长
2.5 months
期刊介绍: IEEE Transactions on Biomedical Engineering contains basic and applied papers dealing with biomedical engineering. Papers range from engineering development in methods and techniques with biomedical applications to experimental and clinical investigations with engineering contributions.
期刊最新文献
Table of Contents Front Cover IEEE Transactions on Biomedical Engineering Handling Editors Information IEEE Engineering in Medicine and Biology Society Information IEEE Transactions on Biomedical Engineering Information for Authors
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