Cycle-Constrained Adversarial Denoising Convolutional Network for PET Image Denoising: Multi-Dimensional Validation on Large Datasets with Reader Study and Real Low-Dose Data
Yucun Hou, Fenglin Zhan, Xin Cheng, Chenxi Li, Ziquan Yuan, Runze Liao, Haihao Wang, Jianlang Hua, Jing Wu, Jianyong Jiang

TL;DR
This paper introduces Cycle-DCN, a novel adversarial network for PET image denoising that reconstructs high-quality images from low-dose scans, validated on large datasets with clinical reader studies.
Contribution
The paper presents a cycle-constrained adversarial denoising network that effectively restores full-dose PET image quality from low-dose data, with multi-dimensional validation.
Findings
Significant PSNR, SSIM, and NRMSE improvements across dose levels.
Restored images closely match full-dose images in CNR and EPI.
Reader studies favor the denoised images for clinical relevance.
Abstract
Positron emission tomography (PET) is a critical tool for diagnosing tumors and neurological disorders but poses radiation risks to patients, particularly to sensitive populations. While reducing injected radiation dose mitigates this risk, it often compromises image quality. To reconstruct full-dose-quality images from low-dose scans, we propose a Cycle-constrained Adversarial Denoising Convolutional Network (Cycle-DCN). This model integrates a noise predictor, two discriminators, and a consistency network, and is optimized using a combination of supervised loss, adversarial loss, cycle consistency loss, identity loss, and neighboring Structural Similarity Index (SSIM) loss. Experiments were conducted on a large dataset consisting of raw PET brain data from 1,224 patients, acquired using a Siemens Biograph Vision PET/CT scanner. Each patient underwent a 120-seconds brain scan. To…
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