PETNet -- Coincident Particle Event Detection using Spiking Neural Networks
Journal:
arXiv
Published Date:
Apr 9, 2025
Abstract
Spiking neural networks (SNN) hold the promise of being a more biologically
plausible, low-energy alternative to conventional artificial neural networks.
Their time-variant nature makes them particularly suitable for processing
time-resolved, sparse binary data. In this paper, we investigate the potential
of leveraging SNNs for the detection of photon coincidences in positron
emission tomography (PET) data. PET is a medical imaging technique based on
injecting a patient with a radioactive tracer and detecting the emitted
photons. One central post-processing task for inferring an image of the tracer
distribution is the filtering of invalid hits occurring due to e.g. absorption
or scattering processes. Our approach, coined PETNet, interprets the detector
hits as a binary-valued spike train and learns to identify photon coincidence
pairs in a supervised manner. We introduce a dedicated multi-objective loss
function and demonstrate the effects of explicitly modeling the detector
geometry on simulation data for two use-cases. Our results show that PETNet can
outperform the state-of-the-art classical algorithm with a maximal coincidence
detection $F_1$ of 95.2%. At the same time, PETNet is able to predict photon
coincidences up to 36 times faster than the classical approach, highlighting
the great potential of SNNs in particle physics applications.