Artyom Tsanda, M.Sc.

Universitätsklinikum Hamburg-Eppendorf (UKE)
Sektion für Biomedizinische Bildgebung
Lottestraße 55
2ter Stock, Raum 203
22529 Hamburg
- Postanschrift -

Technische Universität Hamburg (TUHH)
Institut für Biomedizinische Bildgebung
Gebäude E, Raum 4.044
Am Schwarzenberg-Campus 3
21073 Hamburg

Tel.: 040 7410 25811
E-Mail: artyom.tsanda(at)tuhh.de
E-Mail: a.tsanda.ext(at)uke.de
ORCID: https://orcid.org/0009-0009-7765-4604

Research Interests

  • Magnetic Particle Imaging

Curriculum Vitae

Journal Publications

[191960]
Title: Denoising the system matrix with deep neural networks for better MPI reconstructions.
Written by: A. Tsanda, K. Scheffler, S. Reiss, and T. Knopp
in: <em>International Journal on Magnetic Particle Imaging</em>. Mar (2025).
Volume: <strong>11</strong>. Number: (1 Suppl 1),
on pages:
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DOI: 10.18416/IJMPI.2025.2503047
URL: https://www.journal.iwmpi.org/index.php/iwmpi/article/view/810
ARXIVID:
PMID:

[www]

Note: inproceedings, ml

Abstract: Magnetic Particle Imaging commonly relies on the system matrix (SM) to reconstruct particle distributions, but noise during acquisition limits both its resolution and image quality. Traditionally, noise reduction requires averaging multiple measurements, which increases acquisition time. This paper presents a deep neural network trained on simulated SMs and measured background noise, which effectively generalizes to real-world data. The model recovers higher frequency components of the SM and serves as a general pre-processing step, enhancing image reconstruction quality while reducing the need for extensive averaging, thus accelerating SM acquisition.

Conference Publications

[191960]
Title: Denoising the system matrix with deep neural networks for better MPI reconstructions.
Written by: A. Tsanda, K. Scheffler, S. Reiss, and T. Knopp
in: <em>International Journal on Magnetic Particle Imaging</em>. Mar (2025).
Volume: <strong>11</strong>. Number: (1 Suppl 1),
on pages:
Chapter:
Editor:
Publisher:
Series:
Address:
Edition:
ISBN:
how published:
Organization:
School:
Institution:
Type:
DOI: 10.18416/IJMPI.2025.2503047
URL: https://www.journal.iwmpi.org/index.php/iwmpi/article/view/810
ARXIVID:
PMID:

[www] [BibTex]

Note: inproceedings, ml

Abstract: Magnetic Particle Imaging commonly relies on the system matrix (SM) to reconstruct particle distributions, but noise during acquisition limits both its resolution and image quality. Traditionally, noise reduction requires averaging multiple measurements, which increases acquisition time. This paper presents a deep neural network trained on simulated SMs and measured background noise, which effectively generalizes to real-world data. The model recovers higher frequency components of the SM and serves as a general pre-processing step, enhancing image reconstruction quality while reducing the need for extensive averaging, thus accelerating SM acquisition.