Pattern-matching Unit for Medical Applications
O.Leombruni (1), A. Annovi (1), P. Giannetti (1), N. V. Biesuz (1), C., Roda (2), M. Piendibene (2), M. Calvetti (2), L. Peretti (2, 3), M., Cencini (3), M. Tosetti (3), G. Buonincontri (3) ((1) Istituto Nazionale di, Fisica Nucleare, (2) Universit\`a di Pisa

TL;DR
This paper adapts a high-energy physics pattern-matching system for rapid Magnetic Resonance Fingerprinting in medical imaging, aiming to significantly reduce processing time and improve clinical feasibility.
Contribution
It introduces a novel application of HEP-based pattern-matching hardware to accelerate MRF, demonstrating potential for real-time tissue parameter mapping in clinical settings.
Findings
Preliminary results show promising speed improvements.
System achieves faster pattern matching for MRF.
Potential for real-time clinical MRI applications.
Abstract
We explore the application of concepts developed in High Energy Physics (HEP) for advanced medical data analysis. Our study case is a problem with high social impact: clinically-feasible Magnetic Resonance Fingerprinting (MRF). MRF is a new, quantitative, imaging technique that replaces multiple qualitative Magnetic Resonance Imaging (MRI) exams with a single, reproducible measurement for increased sensitivity and efficiency. A fast acquisition is followed by a pattern matching (PM) task, where signal responses are matched to entries from a dictionary of simulated, physically-feasible responses, yielding multiple tissue parameters simultaneously. Each pixel signal response in the volume is compared through scalar products with all dictionary entries to choose the best measurement reproduction. MRF is limited by the PM processing time, which scales exponentially with the dictionary…
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