QSMnet-INR: Single-Orientation Quantitative Susceptibility Mapping via Implicit Neural Representation in k-Space
Xuan Cai, Ruo-Mi Guo, Xiao-Wen Luo, Jing Zhao, Silun Wang, Tao Tan, Yue Liu, Hongbin Han, and Mengting Liu

TL;DR
QSMnet-INR is a physics-informed deep learning framework that improves single-orientation QSM reconstruction by modeling dipole responses in k-space, reducing artifacts and enhancing structural accuracy without multi-orientation data.
Contribution
The paper introduces QSMnet-INR, integrating implicit neural representations into k-space to explicitly complete cone-null regions, advancing single-orientation QSM reconstruction.
Findings
Outperforms conventional methods on multiple datasets
Enhances structural recovery in cone-null regions
Reduces artifacts and improves physical consistency
Abstract
Quantitative Susceptibility Mapping (QSM) quantifies tissue magnetic susceptibility from magnetic-resonance phase data and plays a crucial role in brain microstructure imaging, iron-deposition assessment, and neurological-disease research. However, single-orientation QSM inversion remains highly ill-posed because the dipole kernel exhibits a cone-null region in the Fourier domain, leading to streaking artifacts and structural loss. To overcome this limitation, we propose QSMnet-INR, a deep, physics-informed framework that integrates an Implicit Neural Representation (INR) into the k-space domain. The INR module continuously models multi-directional dipole responses and explicitly completes the cone-null region, while a frequency-domain residual-weighted Dipole Loss enforces physical consistency. The overall network combines a 3D U-Net-based QSMnet backbone with the INR module through…
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Taxonomy
TopicsAdvanced MRI Techniques and Applications · Functional Brain Connectivity Studies · NMR spectroscopy and applications
