四川大学学报(自然科学版)2024,Vol.61Issue(5):121-136,16.DOI:10.19907/j.0490-6756.2024.053004
PFONet:一种用于加速MRI的渐进式聚焦导向双域重建网络
PFONet:A progressive focus-oriented dual-domain reconstruction network for accelerated MRI
摘要
Abstract
Undersampling k-space data to accelerate Magnetic Resonance Imaging(MRI)is effective but challenging for accurate image reconstruction.Recently,neural networks,particularly dual-domain models that leverage both frequency and image domain data,have gained attention for enhancing MRI reconstruction.However,these methods are inadequate for two main reasons.Firstly,in the frequency domain,these meth-ods with traditional normalization modules treat measurements and zero-filled areas equally,leading to feature shift and suboptimal reconstruction.Secondly,in the image domain,existing methods typically ignore multi-scale features and lack dynamic prosperity,thus being challenging for networks to learn sufficient global-local information to preserve structural details.Here,the authors present a novel progressive focusoriented dual-domain reconstruction network(PFONet)to overcome these limitations in frequency and image domains,re-spectively.In the frequency domain,the authors propose an area normalization module that focuses on the zero-filled areas,progressively mitigates the feature shift,and predicts reliable k-space data.In the image do-main,the authors propose a dynamic attention module with a channel-wise gating mechanism to focus on rich global-local feature extraction from multi-scale receptive fields for detail recovery.Quantitative and qualitative experiments demonstrate that our PFONet achieves competitive performance compared to several state-of-the-art methods while the proposed network is lightweight.关键词
磁共振成像/磁共振重建/渐进式聚焦导向/多尺度特征聚合Key words
Magnetic Resonance Imaging(MRI)/MRI reconstruction/Progressive focus-oriented/Multi-scale feature aggregation分类
信息技术与安全科学引用本文复制引用
王钟贤,王志文,张中洲,杨子元,冉茂松,余慧,张意..PFONet:一种用于加速MRI的渐进式聚焦导向双域重建网络[J].四川大学学报(自然科学版),2024,61(5):121-136,16.基金项目
国家自然科学基金(62271335) (62271335)