Deep learning based localisation and classification of gamma photon interactions in thick nanocomposite and ceramic monolithic scintillators.

Journal: Scientific reports
Published Date:

Abstract

Accurate localisation of the first point of interaction (FPoI) of incident gamma photons in monolithic scintillators is crucial for many radiation-based imaging applications - in particular, accurate estimation of the lines of response in positron emission tomography (PET). This is particularly challenging in thick nanocomposite and ceramic scintillator materials, which exhibit high levels of Rayleigh scattering compared to monocrystalline scintillators. In this work, we evaluate deep neural network-based approaches for (1) classifying the mode of photon interaction using an InceptionNet-based classifier and (2) accurately estimating the location of the FPoI based on scintillation photon distributions in several monolithic nanocomposite and ceramic scintillators using both CNN- and InceptionNet-based regression networks. The classifier was able to correctly categorise single-energy deposition events with an accuracy ≥ 90.1%, two-deposition interactions with an accuracy ≥ 77.6% and three-plus deposition interactions with an accuracy ≥ 66.7%. Across the evaluated materials, median total localisation error ranged from 0.58 mm to 2.91 mm with the CNN and 0.59 mm to 2.10 mm with InceptionNet, assuming 50% detector quantum efficiency. Localisation in nanocomposites using the InceptionNet-based regression network improved the most relative to previously-reported results based on classical techniques, in some cases approaching the accuracy achieved with ceramic scintillators.

Authors

  • Mushen Shen
    School of Electrical and Data Engineering, University of Technology Sydney, Sydney, NSW, Australia.
  • Ragy Abraham
    School of Electrical and Data Engineering, University of Technology Sydney, Sydney, NSW, Australia.
  • Elise Cribbin
    School of Electrical and Data Engineering, University of Technology Sydney, Sydney, NSW, Australia.
  • Harrison Gregor
    School of Electrical and Data Engineering, University of Technology Sydney, Sydney, NSW, Australia.
  • Mitra Safavi-Naeini
    Australian Nuclear Science and Technology Organisation (ANSTO), Lucas Heights, NSW, Australia.
  • Daniel Franklin
    School of Electrical and Data Engineering, University of Technology Sydney, Sydney, Australia.

Keywords

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