Time resolution of the plastic scintillator strips with matrix photomultiplier readout for J-PET tomograph
P. Moskal, O. Rundel, D. Alfs, T. Bednarski, P. Bia{\l}as, E., Czerwi\'nski, A. Gajos, K. Giergiel, M. Gorgol, B. Jasi\'nska, D. Kami\'nska,, \L. Kap{\l}on, G. Korcyl, P. Kowalski, T. Kozik, W. Krzemie\'n, E. Kubicz,, Sz. Nied\'zwiecki, M. Pa{\l}ka, L. Raczy\'nski, Z. Rudy

TL;DR
This paper introduces a novel SiPM matrix readout method for plastic scintillator strips in J-PET, significantly improving time resolution and demonstrating potential for cost-effective, high-resolution PET imaging.
Contribution
The paper presents a new method for timestamping multiple photons at both ends of scintillator strips using a SiPM matrix, optimizing timing resolution for PET systems.
Findings
Achieved a coincidence resolving time of 0.266 ns with a single module.
Simulation results suggest optimal SiPM matrix configuration is 2 x 5, reading twenty timestamps.
Application of this method can reach a time resolution of approximately 0.170 ns for 15 cm AFOV.
Abstract
Recent tests of a single module of the Jagiellonian Positron Emission Tomography system (J-PET) consisting of 30 cm long plastic scintillator strips have proven its applicability for the detection of annihilation quanta (0.511 MeV) with a coincidence resolving time (CRT) of 0.266 ns. The achieved resolution is almost by a factor of two better with respect to the current TOF-PET detectors and it can still be improved since, as it is shown in this article, the intrinsic limit of time resolution for the determination of time of the interaction of 0.511 MeV gamma quanta in plastic scintillators is much lower. As the major point of the article, a method allowing to record timestamps of several photons, at two ends of the scintillator strip, by means of matrix of silicon photomultipliers (SiPM) is introduced. As a result of simulations, conducted with the number of SiPM varying from 4 to 42,…
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