Neural MLAA for PET-enabled dual-energy CT imaging

Published: Feb 15, 2021
Abstract
The PET-enabled dual-energy CT method allows dual-energy CT imaging on PET/CT scanners without the need for a second x-ray CT scan. A 511 keV γ-ray attenuation image can be reconstructed from time-of-flight PET emission data using the maximum-likelihood attenuation and activity (MLAA) algorithm. However, the attenuation image reconstructed by standard MLAA is commonly noisy. To suppress noise, we propose a neuralnetwork approach for MLAA...
Paper Details
Title
Neural MLAA for PET-enabled dual-energy CT imaging
Published Date
Feb 15, 2021
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