Current Publications

Journal Publications
since 2022

Recent Journal Publications

[56725]
Title: Efficient Joint Image Reconstruction of Multi-Patch Data reusing a Single System Matrix in Magnetic Particle Imaging.
Written by: P. Szwargulski, M. Möddel, N. Gdaniec and T. Knopp
in: <em>IEEE Transactions on Medical Imaging</em>. April (2019).
Volume: <strong>38</strong>. Number: (4),
on pages: 932-944
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI: 10.1109/TMI.2018.2875829
URL: https://ieeexplore.ieee.org/document/8490900
ARXIVID:
PMID:

[www] [BibTex]

Note: article, multi-patch

Abstract: Due to peripheral nerve stimulation the magnetic particle imaging (MPI) method is limited in the maximum applicable excitation-field amplitude. This in turn leads to a limitation of the size of the covered field of view (FoV) to few millimeters. In order to still capture a larger field of view, MPI is capable to rapidly acquire volumes in a multi-patch fashion. To this end, the small excitation volume is shifted through space using the magnetic focus fields. Recently it has been shown that the individual patches are preferably reconstructed in a joint fashion by solving a single linear system of equations taking the coupling between individual patches into account. While this improves the image quality, it is computationally and memory demanding since the size of the linear system increases in the best case quadratically with the number of patches. In this work, we will develop a reconstruction algorithm for MPI multi-patch data exploiting the sparsity of the joint system matrix. A highly efficient implicit matrix format allows for rapid on-the-fly calculations of linear algebra operations involving the system matrix. Using this approach the computational effort can be reduced to a linear dependence on the number of used patches. The algorithm is validated on 3D multi-patch phantom datasets and shown to reconstruct a large datasets with 15 patches in less than 22 seconds.

Conference Abstracts and Proceedings
since 2022

Recent Conference Abstracts and Proceedings

[56725]
Title: Efficient Joint Image Reconstruction of Multi-Patch Data reusing a Single System Matrix in Magnetic Particle Imaging.
Written by: P. Szwargulski, M. Möddel, N. Gdaniec and T. Knopp
in: <em>IEEE Transactions on Medical Imaging</em>. April (2019).
Volume: <strong>38</strong>. Number: (4),
on pages: 932-944
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI: 10.1109/TMI.2018.2875829
URL: https://ieeexplore.ieee.org/document/8490900
ARXIVID:
PMID:

[www]

Note: article, multi-patch

Abstract: Due to peripheral nerve stimulation the magnetic particle imaging (MPI) method is limited in the maximum applicable excitation-field amplitude. This in turn leads to a limitation of the size of the covered field of view (FoV) to few millimeters. In order to still capture a larger field of view, MPI is capable to rapidly acquire volumes in a multi-patch fashion. To this end, the small excitation volume is shifted through space using the magnetic focus fields. Recently it has been shown that the individual patches are preferably reconstructed in a joint fashion by solving a single linear system of equations taking the coupling between individual patches into account. While this improves the image quality, it is computationally and memory demanding since the size of the linear system increases in the best case quadratically with the number of patches. In this work, we will develop a reconstruction algorithm for MPI multi-patch data exploiting the sparsity of the joint system matrix. A highly efficient implicit matrix format allows for rapid on-the-fly calculations of linear algebra operations involving the system matrix. Using this approach the computational effort can be reduced to a linear dependence on the number of used patches. The algorithm is validated on 3D multi-patch phantom datasets and shown to reconstruct a large datasets with 15 patches in less than 22 seconds.

Publications

Journal Publications
since 2014

Journal Publications

[56725]
Title: Efficient Joint Image Reconstruction of Multi-Patch Data reusing a Single System Matrix in Magnetic Particle Imaging.
Written by: P. Szwargulski, M. Möddel, N. Gdaniec and T. Knopp
in: <em>IEEE Transactions on Medical Imaging</em>. April (2019).
Volume: <strong>38</strong>. Number: (4),
on pages: 932-944
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI: 10.1109/TMI.2018.2875829
URL: https://ieeexplore.ieee.org/document/8490900
ARXIVID:
PMID:

[www] [BibTex]

Note: article, multi-patch

Abstract: Due to peripheral nerve stimulation the magnetic particle imaging (MPI) method is limited in the maximum applicable excitation-field amplitude. This in turn leads to a limitation of the size of the covered field of view (FoV) to few millimeters. In order to still capture a larger field of view, MPI is capable to rapidly acquire volumes in a multi-patch fashion. To this end, the small excitation volume is shifted through space using the magnetic focus fields. Recently it has been shown that the individual patches are preferably reconstructed in a joint fashion by solving a single linear system of equations taking the coupling between individual patches into account. While this improves the image quality, it is computationally and memory demanding since the size of the linear system increases in the best case quadratically with the number of patches. In this work, we will develop a reconstruction algorithm for MPI multi-patch data exploiting the sparsity of the joint system matrix. A highly efficient implicit matrix format allows for rapid on-the-fly calculations of linear algebra operations involving the system matrix. Using this approach the computational effort can be reduced to a linear dependence on the number of used patches. The algorithm is validated on 3D multi-patch phantom datasets and shown to reconstruct a large datasets with 15 patches in less than 22 seconds.

Conference Abstracts and Proceedings
since 2014

Conference Abstracts and Proceedings

[56725]
Title: Efficient Joint Image Reconstruction of Multi-Patch Data reusing a Single System Matrix in Magnetic Particle Imaging.
Written by: P. Szwargulski, M. Möddel, N. Gdaniec and T. Knopp
in: <em>IEEE Transactions on Medical Imaging</em>. April (2019).
Volume: <strong>38</strong>. Number: (4),
on pages: 932-944
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI: 10.1109/TMI.2018.2875829
URL: https://ieeexplore.ieee.org/document/8490900
ARXIVID:
PMID:

[www]

Note: article, multi-patch

Abstract: Due to peripheral nerve stimulation the magnetic particle imaging (MPI) method is limited in the maximum applicable excitation-field amplitude. This in turn leads to a limitation of the size of the covered field of view (FoV) to few millimeters. In order to still capture a larger field of view, MPI is capable to rapidly acquire volumes in a multi-patch fashion. To this end, the small excitation volume is shifted through space using the magnetic focus fields. Recently it has been shown that the individual patches are preferably reconstructed in a joint fashion by solving a single linear system of equations taking the coupling between individual patches into account. While this improves the image quality, it is computationally and memory demanding since the size of the linear system increases in the best case quadratically with the number of patches. In this work, we will develop a reconstruction algorithm for MPI multi-patch data exploiting the sparsity of the joint system matrix. A highly efficient implicit matrix format allows for rapid on-the-fly calculations of linear algebra operations involving the system matrix. Using this approach the computational effort can be reduced to a linear dependence on the number of used patches. The algorithm is validated on 3D multi-patch phantom datasets and shown to reconstruct a large datasets with 15 patches in less than 22 seconds.

Publications Pre-dating the Institute

Publications
2007-2013

Old Publications

[56725]
Title: Efficient Joint Image Reconstruction of Multi-Patch Data reusing a Single System Matrix in Magnetic Particle Imaging.
Written by: P. Szwargulski, M. Möddel, N. Gdaniec and T. Knopp
in: <em>IEEE Transactions on Medical Imaging</em>. April (2019).
Volume: <strong>38</strong>. Number: (4),
on pages: 932-944
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI: 10.1109/TMI.2018.2875829
URL: https://ieeexplore.ieee.org/document/8490900
ARXIVID:
PMID:

[www]

Note: article, multi-patch

Abstract: Due to peripheral nerve stimulation the magnetic particle imaging (MPI) method is limited in the maximum applicable excitation-field amplitude. This in turn leads to a limitation of the size of the covered field of view (FoV) to few millimeters. In order to still capture a larger field of view, MPI is capable to rapidly acquire volumes in a multi-patch fashion. To this end, the small excitation volume is shifted through space using the magnetic focus fields. Recently it has been shown that the individual patches are preferably reconstructed in a joint fashion by solving a single linear system of equations taking the coupling between individual patches into account. While this improves the image quality, it is computationally and memory demanding since the size of the linear system increases in the best case quadratically with the number of patches. In this work, we will develop a reconstruction algorithm for MPI multi-patch data exploiting the sparsity of the joint system matrix. A highly efficient implicit matrix format allows for rapid on-the-fly calculations of linear algebra operations involving the system matrix. Using this approach the computational effort can be reduced to a linear dependence on the number of used patches. The algorithm is validated on 3D multi-patch phantom datasets and shown to reconstruct a large datasets with 15 patches in less than 22 seconds.

Open Access Publications

Journal Publications
since 2014

Open Access Publications

[56725]
Title: Efficient Joint Image Reconstruction of Multi-Patch Data reusing a Single System Matrix in Magnetic Particle Imaging.
Written by: P. Szwargulski, M. Möddel, N. Gdaniec and T. Knopp
in: <em>IEEE Transactions on Medical Imaging</em>. April (2019).
Volume: <strong>38</strong>. Number: (4),
on pages: 932-944
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI: 10.1109/TMI.2018.2875829
URL: https://ieeexplore.ieee.org/document/8490900
ARXIVID:
PMID:

[www] [BibTex]

Note: article, multi-patch

Abstract: Due to peripheral nerve stimulation the magnetic particle imaging (MPI) method is limited in the maximum applicable excitation-field amplitude. This in turn leads to a limitation of the size of the covered field of view (FoV) to few millimeters. In order to still capture a larger field of view, MPI is capable to rapidly acquire volumes in a multi-patch fashion. To this end, the small excitation volume is shifted through space using the magnetic focus fields. Recently it has been shown that the individual patches are preferably reconstructed in a joint fashion by solving a single linear system of equations taking the coupling between individual patches into account. While this improves the image quality, it is computationally and memory demanding since the size of the linear system increases in the best case quadratically with the number of patches. In this work, we will develop a reconstruction algorithm for MPI multi-patch data exploiting the sparsity of the joint system matrix. A highly efficient implicit matrix format allows for rapid on-the-fly calculations of linear algebra operations involving the system matrix. Using this approach the computational effort can be reduced to a linear dependence on the number of used patches. The algorithm is validated on 3D multi-patch phantom datasets and shown to reconstruct a large datasets with 15 patches in less than 22 seconds.