Title :
Application of Artificial Neural Network for Reducing Random Coincidences in PET
Author :
Oliver, Josep F. ; Fuster-Garcia, Elies ; Cabello, Jorge ; Tortajada, Salvador ; Rafecas, Magdalena
Author_Institution :
Inst. de Fis. Corpuscular (IFIC), Univ. de Valencia, València, Spain
Abstract :
Positron Emission Tomography (PET) is based on the detection in coincidence of the two photons created in a positron annihilation. In conventional PET, this coincidence identification is usually carried out through a coincidence electronic unit. An accidental coincidence occurs when two photons arising from different annihilations are classified as a coincidence. Accidental coincidences are one of the main sources of image degradation in PET. Some novel systems allow coincidences to be selected post-acquisition in software, or in real time through a digital coincidence engine in an FPGA. These approaches provide the user with extra flexibility in the sorting process and allow the application of alternative coincidence sorting procedures. In this work a novel sorting procedure based on Artificial Neural Network (ANN) techniques has been developed. It has been compared to a conventional coincidence sorting algorithm based on a time coincidence window. The data have been obtained from Monte-Carlo simulations. A small animal PET scanner has been implemented to this end. The efficiency (the ratio of correct identifications) can be selected for both methods. In one case by changing the actual value of the coincidence window used, and in the other by changing a threshold at the output of the neural network. At matched efficiencies, the ANN-based method always produces a sorted output with a smaller random fraction. In addition, two differential trends are found: the conventional method presents a maximum achievable efficiency, while the ANN-based method is able to increase the efficiency up to unity, the ideal value, at the cost of increasing the random fraction. Images reconstructed using ANN sorted data (no compensation for randoms) present better contrast, and those image features which are more affected by randoms are enhanced. For the image quality phantom used in the paper, the ANN method decreases the spillover ratio by a factor of 18%.
Keywords :
Monte Carlo methods; coincidence techniques; feature extraction; field programmable gate arrays; image reconstruction; medical image processing; neural nets; phantoms; positron emission tomography; sorting; ANN sorted data; ANN technique; ANN-based method; FPGA; Monte Carlo simulation; PET image degradation; PET random coincidence reduction; accidental coincidence; actual coincidence window value; alternative coincidence sorting procedure; annihilation photon classification; artificial neural network technique; coincidence electronic unit; coincidence sorting algorithm efficiency; conventional PET; conventional coincidence sorting algorithm; correct identification ratio; digital coincidence engine; image contrast; image feature enhancement; image quality; image reconstruction; maximum achievable efficiency; neural network output threshold; phantom; photon coincidence detection; positron annihilation; positron emission tomography; post-acquisition coincidence selection; real time selection; small animal PET scanner; small random fraction; software selection; sorting process flexibility; spillover ratio; time coincidence window; Artificial neural networks; Image reconstruction; Phantoms; Photonics; Positron emission tomography; Sorting; Artificial neural networks; image reconstruction; positron emission tomography;
Journal_Title :
Nuclear Science, IEEE Transactions on
DOI :
10.1109/TNS.2013.2274702