Abstract

The scintillation light distribution produced by photodetectors in positron emission tomography (PET) provides the depth of interaction (DOI) information required for high-resolution imaging. The goal of positioning techniques is to reverse the photodetector signal’s pattern map to the coordinates of the incident photon energy position. By considering the DOI information, monolithic crystals offer good spatial, energy, and timing resolution along with high sensitivity. In this work, a supervised deep neural network was used for the approximation of DOI and to assess through Monte Carlo (MC) simulations the performance on a small-animal PET scanner consisting of ten 50 × 50 × 10 mm3 continuous Lutetium-Yttrium Oxyorthosilicate doped with Cerium (LYSO: Ce) crystals and 12 × 12 silicon photomultiplier (SiPM) arrays. The scintillation position was predicted by a multilayer perceptron neural network with 256 units and 4 layers whose inputs were the number of fired pixels on the SiPM plane and the total deposited energy. A GEANT4 MC code was used to generate training and test datasets by altering the photons’ incident position, energy, and direction, as well as readout of the photodetector output. The calculated spatial resolutions in the X-Y plane and along the Z-axis were 0.96 and 1.02 mm, respectively. Our results demonstrated that using a multilayer perceptron (MLP)-based positioning algorithm in the detector modules, constituting the PET scanner, enhances the spatial resolution by approximately 18% while the absolute sensitivity remains constant. The proposed algorithm proved its ability to predict the DOI for depth under 7 mm with an error below 8.7%.

Highlights

  • Each pair of annihilation photons detected by a positron emission tomography (PET) scanner is assigned to a line-of-response (LOR) linking the two scintillation crystals recording the coincidence event

  • The scintillation position was predicted by a multilayer perceptron neural network with 256 units and 4 layers whose inputs were the number of fired pixels on the silicon photomultiplier (SiPM) plane and the total deposited energy

  • Our results demonstrated that using a multilayer perceptron (MLP)-based positioning algorithm in the detector modules, constituting the PET scanner, enhances the spatial resolution by approximately 18% while the absolute sensitivity remains constant

Read more

Summary

Introduction

Each pair of annihilation photons detected by a positron emission tomography (PET) scanner is assigned to a line-of-response (LOR) linking the two scintillation crystals recording the coincidence event. The localization of the positron-electron interaction point assumes that both annihilation photons are absorbed by the two detector elements. In reality, the LORs are commonly replaced with volumes-of-response (VOR), including almost all virtual LORs owing to positioning uncertainty. Reducing a VOR to a LOR has been among the objectives of the PET imaging community for a few decades. For accurate estimation of a LOR, the coordinates of both coincidence photons inside the monolithic crystals should be accurately defined. One of the most important features of monolithic crystals coupled to position-sensitive photodetectors, including

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call