4.7 Article

Hierarchical Perception Adversarial Learning Framework for Compressed Sensing MRI

Journal

IEEE TRANSACTIONS ON MEDICAL IMAGING
Volume 42, Issue 6, Pages 1859-1874

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2023.3240862

Keywords

Magnetic resonance imaging; Image reconstruction; Feature extraction; Visual perception; Image restoration; Visualization; Data mining; MRI reconstruction; compressed sensing; magnetic resonance imaging; generative adversarial networks

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The long acquisition time of magnetic resonance imaging (MRI) has been a limitation in terms of patient comfort and motion artifacts. Compressed sensing in MRI (CS-MRI) has enabled fast acquisition without compromising SNR and resolution, but current CS-MRI methods struggle with aliasing artifacts, leading to unsatisfactory reconstruction performance. In order to address this challenge, a hierarchical perception adversarial learning framework (HP-ALF) is proposed. HP-ALF utilizes a hierarchical mechanism to perceive image information and effectively removes aliasing artifacts while recovering fine details.
The long acquisition time has limited the accessibility of magnetic resonance imaging (MRI) because it leads to patient discomfort and motion artifacts. Although several MRI techniques have been proposed to reduce the acquisition time, compressed sensing in magnetic resonance imaging (CS-MRI) enables fast acquisition without compromising SNR and resolution. However, existing CS-MRI methods suffer from the challenge of aliasing artifacts. This challenge results in the noise-like textures and missing the fine details, thus leading to unsatisfactory reconstruction performance. To tackle this challenge, we propose a hierarchical perception adversarial learning framework (HP-ALF). HP-ALF can perceive the image information in the hierarchical mechanism: image-level perception and patch-level perception. The former can reduce the visual perception difference in the entire image, and thus achieve aliasing artifact removal. The latter can reduce this difference in the regions of the image, and thus recover fine details. Specifically, HP-ALF achieves the hierarchical mechanism by utilizing multilevel perspective discrimination. This discrimination can provide the information from two perspectives (overall and regional) for adversarial learning. It also utilizes a global and local coherent discriminator to provide structure information to the generator during training. In addition, HP-ALF contains a context-aware learning block to effectively exploit the slice information between individual images for better reconstruction performance. The experiments validated on three datasets demonstrate the effectiveness of HP-ALF and its superiority to the comparative methods.

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