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Deep Few-view High-resolution Photon-counting CT at Halved Dose for Extremity Imaging
Journal article   Peer reviewed

Deep Few-view High-resolution Photon-counting CT at Halved Dose for Extremity Imaging

Mengzhou Li, Chuang Niu, Ge Wang, Maya R Amma, Krishna M Chapagain, Stefan Gabrielson, Andrew Li, Kevin Jonker, Niels de Ruiter, Jennifer A Clark, …
IEEE transactions on medical imaging
10/10/2025
Handle:
https://hdl.handle.net/10523/48371

Abstract

Biomedical imaging clinical trial Clinical trials Computed tomography deep learning Extremities few-view reconstruction Image reconstruction Iterative methods Noise Optimization Photon-counting CT Photonics radiation dose reduction Synthetic data
X-ray photon-counting computed tomography (PCCT) for extremity allows multi-energy high-resolution (HR) imaging but its radiation dose can be further improved. Despite the great potential of deep learning techniques, their application in HR volumetric PCCT reconstruction has been challenged by the large memory burden, training data scarcity, and domain gap issues. In this paper, we propose a deep learning-based approach for PCCT image reconstruction at halved dose and doubled speed for a New Zealand clinical trial. Specifically, we design a patch-based volumetric refinement network to alleviate the GPU memory limitation, train network with synthetic data, and use model-based iterative refinement to bridge the gap between synthetic and clinical data. Our results in a reader study of 8 patients from the clinical trial demonstrate a great potential to cut the radiation dose to half that of the clinical PCCT standard without compromising image quality and diagnostic value.

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