Title of article :
Accelerated Computing in Magnetic Resonance Imaging: Real-Time Imaging Using Nonlinear Inverse Reconstruction
Author/Authors :
Schaetz, Sebastian Biomedizinische NMR Forschungs GmbH - Max Planck Institute for Biophysical Chemistry - Gottingen, Germany , Voit, Dirk Biomedizinische NMR Forschungs GmbH - Max Planck Institute for Biophysical Chemistry - Gottingen, Germany , Frahm, Jens Biomedizinische NMR Forschungs GmbH - Max Planck Institute for Biophysical Chemistry - Gottingen, Germany , Uecker, Martin Department of Diagnostic and Interventional Radiology - University Medical Center Gottingen - Gottingen, Germany
Abstract :
Purpose. To develop generic optimization strategies for image reconstruction using graphical processing units (GPUs) in magnetic
resonance imaging (MRI) and to exemplarily report on our experience with a highly accelerated implementation of the nonlinear
inversion (NLINV) algorithm for dynamic MRI with high frame rates. Methods. The NLINV algorithm is optimized and ported
to run on a multi-GPU single-node server. The algorithm is mapped to multiple GPUs by decomposing the data domain along the
channel dimension. Furthermore, the algorithm is decomposed along the temporal domain by relaxing a temporal regularization
constraint, allowing the algorithm to work on multiple frames in parallel. Finally, an autotuning method is presented that is capable
of combining different decomposition variants to achieve optimal algorithm performance in different imaging scenarios. Results.
The algorithm is successfully ported to a multi-GPU system and allows online image reconstruction with high frame rates. Realtime reconstruction with low latency and frame rates up to 30 frames per second is demonstrated. Conclusion. Novel parallel
decomposition methods are presented which are applicable to many iterative algorithms for dynamic MRI. Using these methods
to parallelize the NLINV algorithm on multiple GPUs, it is possible to achieve online image reconstruction with high frame rates.
Keywords :
Real-Time , Reconstruction , NLINV
Journal title :
Computational and Mathematical Methods in Medicine