Chinese Journal of Magnetic Resonance ›› 2025, Vol. 42 ›› Issue (3): 249-264.doi: 10.11938/cjmr20253145cstr: 32225.14.cjmr20253145

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High-quality MR Fingerprinting Reconstruction Based on Manifold Structured Data Priors

LI Peng, JI Yuping, HU Yue*()   

  1. The School of Electronics and Information Engineering, Harbin Institute of Technology, Harbin 150001, China
  • Received:2025-02-17 Published:2025-09-05 Online:2025-03-27
  • Contact: * Tel: 15776630256, E-mail: huyue@hit.edu.cn.

Abstract:

Magnetic resonance fingerprinting (MRF) has shown great potential for the quantitative assessment of tissue susceptibility across diverse diseases. However, reconstructing high-quality temporal images from highly undersampled data and thus achieving high-precision quantitative imaging remains a primary challenge in MRF. In this paper, we propose a novel MRF reconstruction framework leveraging manifold structured data priors. This approach models fingerprint signals and tissue quantitative parameters as data points residing on manifolds, and reveals the intrinsic topological consistency between the fingerprint manifold and the parameter manifold. Based on this key observation, we introduce a manifold structured data regularization constraint for MRF reconstruction. By enforcing structural consistency between the fingerprint manifold and the parameter manifold during reconstruction, the proposed constraint effectively improves reconstruction quality. Furthermore, to fully exploit the inherent data correlations, we integrate a locally low-rank prior into our reconstruction framework, which further enhances reconstruction performance. Experimental results demonstrate that the proposed method achieves notable enhancement in reconstruction quality while significantly reducing computational time compared to existing approaches, highlighting its potential for clinical translation in high-quality MRF imaging.

Key words: magnetic resonance fingerprinting (MRF), quantitative MRI, manifold structured data, locally low-rank

CLC Number: