Full-count PET Recovery from Low-count Image Using a Dilated Convolutional Neural Network
Karl Spuhler, Mario Serrano-Sosa, Renee Cattell, Christine DeLorenzo,, Chuan Huang

TL;DR
This paper introduces a novel dilated convolutional neural network (dNet) that effectively denoises low-count PET images, outperforming traditional uNet models and enhancing image quality for clinical applications.
Contribution
The study develops a dilated convolutional neural network for PET image denoising, demonstrating its superiority over uNet in recovering full-count images from low-count data.
Findings
dNet outperforms uNet in all tested metrics
Both models significantly improve image quality over low-count PET
dNet shows potential for clinical PET image enhancement
Abstract
Positron Emission Tomography (PET) is an essential technique in many clinical applications that allows for quantitative imaging at the molecular level. This study aims to develop a denoising method using novel dilated convolutional neural network to recover full-count images from low-count images. We adopted similar hierarchal structure from the conventional uNet and incorporated dilated kernels in each convolution to allow the network to observe larger, and perhaps, more robust, features within the image. Our dNet were trained alongside a uNet for comparison. Our 2.5D model used a training set (N=30) and testing set (N=5) that were obtained from an ongoing 18F-FDG study. Low-count PET data (10% count) were generated through Poisson thinning from the full listmode file. Both low-count PET and full-count PET were reconstructed with the OSEM algorithm. Objective imaging metrics including…
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