4.7 Article

Machine Learning-Enabled High-Resolution Dynamic Deuterium MR Spectroscopic Imaging

期刊

IEEE TRANSACTIONS ON MEDICAL IMAGING
卷 40, 期 12, 页码 3879-3890

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMI.2021.3101149

关键词

Spatial resolution; Manifolds; Imaging; Image resolution; Tumors; Sensitivity; Biochemistry; In vivo deuterium MRS imaging (DMRSI); high spatiotemporal resolution; subspace modeling; machine learning

资金

  1. NIH [R01-CA240953, U01-EB026978, R01MH111413, P30NS076408, P41EB027061, R01EB023704]

向作者/读者索取更多资源

A novel machine learning-based method was proposed to enhance the sensitivity of DMRSI by effectively denoising, enabling high-resolution dynamic imaging. The method was validated through theoretical analysis, computer simulations, and in vivo experiments, demonstrating its potential in tumor imaging. The integration of physics-based subspace modeling and data-driven deep learning provides a framework for denoising other spatiospectral data.
Deuterium magnetic resonance spectroscopic imaging (DMRSI) has recently been recognized as a potentially powerful tool for noninvasive imaging of brain energy metabolism and tumor. However, the low sensitivity of DMRSI has significantly limited its utility for both research and clinical applications. This work presents a novel machine learning-based method to address this limitation. The proposed method synergistically integrates physics-based subspace modeling and data-driven deep learning for effective denoising, making high-resolution dynamic DMRSI possible. Specifically, a novel subspace model was used to represent the dynamic DMRSI signals; deep neural networks were trained to capture the low-dimensional manifolds of the spectral and temporal distributions of practical dynamic DMRSI data. The learned subspace and manifold structures were integrated via a regularization formulation to remove measurement noise. Theoretical analysis, computer simulations, and in vivo experiments have been conducted to demonstrate the denoising efficacy of the proposed method which enabled high-resolution imaging capability. The translational potential was demonstrated in tumor-bearing rats, where the Warburg effect associated with cancer metabolism and tumor heterogeneity were successfully captured. The new method may not only provide an effective tool to enhance the sensitivity of DMRSI for basic research and clinical applications but also provide a framework for denoising other spatiospectral data.

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