波谱学杂志

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基于流匹配模型的肺部多核MRI重建方法研究

李朋展, 肖洒, 柳竞涵, 周欣   

  1. 1. 南方医科大学,生物医学工程学院,广东 广州 510000;2. 中国科学院精密测量科学与技术创新研究院,磁共振波谱与成像全国重点实验室,武汉磁共振中心,湖北 武汉 430071;3. 中国科学院大学,北京 100049
  • 收稿日期:2026-03-03 修回日期:2026-04-24 接受日期:2026-05-18
  • 通讯作者: 周欣 E-mail:xinzhou@wipm.ac.cn
  • 基金资助:
    国家自然科学基金资助项目(82441015, 82127802, 82572453, U22A20352);中国科学院战略性先导研究计划(XDC0170000);湖北省尖刀技术攻关项目(2023BAA021)

Research on Lung Multi-Nuclear MRI Reconstruction Method Based on Flow Matching Model

Li Pengzhan, Xiao Sa, Liu Jinghan, Zhou Xin   

  1. 1. School of Biomedical Engineering, Southern Medical University, Guangzhou 510000, China; 2. State Key Laboratory of Magnetic Resonance Spectroscopy and Imaging, National Center for Magnetic Resonance in Wuhan, Innovation Academy for Precision Measurement Science and Technology, Chinese Academy of Sciences, Wuhan 430071, China; 3. University of Chinese Academy of Sciences, Beijing 100049, China
  • Received:2026-03-03 Revised:2026-04-24 Accepted:2026-05-18
  • Contact: Zhou Xin E-mail:xinzhou@wipm.ac.cn
  • Supported by:

摘要: 超极化129Xe与1H联合成像可实现肺部解剖结构与通气功能可视化,为肺部疾病早期诊疗提供关键工具.但超极化129Xe成像面临低信噪比、加速采样及多核异质性等多重挑战,现有方法存在明显局限:回归模型输出平滑,难以恢复高频细节;主流生成模型对噪声敏感,易产生伪细节且推理耗时长;缺乏针对多核异质性的模型设计,多模态互补信息未得到充分利用.为此,本文提出一种基于流匹配模型的肺部多核MRI重建框架.该方法结合回归模型与新型生成模型的优势,在定量指标与视觉细节间取得更优平衡,同时实现高效推理,提升生成模型在低信噪比数据下的鲁棒性,并提高了多核互补信息的利用效率,可为临床多核MRI加速重建提供有效技术支撑.

关键词: 流匹配模型, 多核MRI, 图像重建, 深度学习

Abstract: Hyperpolarized 129Xe and 1H magnetic resonance imaging (MRI) visualize lung structure and ventilation, enabling early diagnosis. However, 129Xe imaging faces low signal noise ratio (SNR), accelerated sampling, and multinuclear heterogeneity. Existing methods have clear limits: regression models outputs are over-smoothed, losing high-frequency details; mainstream generative models are noise-sensitive, artifact-prone, and slow; multinuclear heterogeneity is unmodeled, underusing multimodal complementarity. We propose a flow-matching framework for multinuclear lung MRI reconstruction. It integrates regression and generative strengths for better metric–fidelity trade-off, efficient inference, noise robustness, and improved complementary information utilization, supporting accelerated clinical multinuclear MRI.

Key words: Flow Matching Model, Multi-Nuclear MRI, Image Reconstruction, Deep Learning