Generalizable CT-Free PET Attenuation and Scatter Correction for Pediatric Patients
Jia-Mian Wu, Jun Liu, Siqi Li, Xiaoya Wang, Shibai Yin, Huanyu Luo, Lingling Zheng, Qiang Gao, Jigang Yang, and Tai-Xiang Jiang

TL;DR
This paper introduces GPCN, a novel dual-domain neural network that achieves robust, accurate CT-free PET attenuation and scatter correction in pediatric imaging, generalizing well across scanners and radiotracers.
Contribution
The proposed GPCN combines multi-scale spatial and frequency domain modules to improve robustness and accuracy of CT-free PET correction across diverse clinical conditions.
Findings
GPCN outperforms baseline methods in joint and zero-shot evaluations.
Maintains stable quantitative accuracy across different scanners and radiotracers.
Supports potential clinical adoption by reducing radiation exposure.
Abstract
Computed tomography (CT)-based attenuation and scatter correction improves quantitative PET but adds radiation exposure that is particularly undesirable in pediatric imaging. Existing CT-free methods are commonly trained in homogeneous settings and often degrade under scanner or radiotracer shifts, which limits their clinical utility. We propose the Generalizable PET Correction Network (GPCN), a dual-domain network for domain-robust CT-free PET attenuation and scatter correction. GPCN combines a multi-band contextual refinement module, which models pediatric anatomical variability through wavelet-based multiscale decomposition and long-range spatial context modeling, with a frequency-aware spectral decoupling module, which performs coordinate-conditioned amplitude/phase refinement in the Fourier domain. By synergizing multi-band spatial contextual modeling with asymmetric…
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