Missing Data Estimation for MR Spectroscopic Imaging via Mask-Free Deep Learning Methods
Journal:
arXiv
Published Date:
May 11, 2025
Abstract
Magnetic Resonance Spectroscopic Imaging (MRSI) is a powerful tool for
non-invasive mapping of brain metabolites, providing critical insights into
neurological conditions. However, its utility is often limited by missing or
corrupted data due to motion artifacts, magnetic field inhomogeneities, or
failed spectral fitting-especially in high resolution 3D acquisitions. To
address this, we propose the first deep learning-based, mask-free framework for
estimating missing data in MRSI metabolic maps. Unlike conventional restoration
methods that rely on explicit masks to identify missing regions, our approach
implicitly detects and estimates these areas using contextual spatial features
through 2D and 3D U-Net architectures. We also introduce a progressive training
strategy to enhance robustness under varying levels of data degradation. Our
method is evaluated on both simulated and real patient datasets and
consistently outperforms traditional interpolation techniques such as cubic and
linear interpolation. The 2D model achieves an MSE of 0.002 and an SSIM of 0.97
with 20% missing voxels, while the 3D model reaches an MSE of 0.001 and an SSIM
of 0.98 with 15% missing voxels. Qualitative results show improved fidelity in
estimating missing data, particularly in metabolically heterogeneous regions
and ventricular regions. Importantly, our model generalizes well to real-world
datasets without requiring retraining or mask input. These findings demonstrate
the effectiveness and broad applicability of mask-free deep learning for MRSI
restoration, with strong potential for clinical and research integration.