IVLGFeb 14, 2022

A resource-efficient deep learning framework for low-dose brain PET image reconstruction and analysis

arXiv:2202.06548v113 citations
Originality Incremental advance
AI Analysis

This addresses radiation safety concerns in medical imaging, particularly for pediatric patients, by providing an incremental improvement in image reconstruction.

The paper tackled the problem of reconstructing high-quality full-dose PET images from low-dose ones to reduce radiation exposure while maintaining diagnostic accuracy, achieving superior results with their transGAN-SDAM framework.

18F-fluorodeoxyglucose (18F-FDG) Positron Emission Tomography (PET) imaging usually needs a full-dose radioactive tracer to obtain satisfactory diagnostic results, which raises concerns about the potential health risks of radiation exposure, especially for pediatric patients. Reconstructing the low-dose PET (L-PET) images to the high-quality full-dose PET (F-PET) ones is an effective way that both reduces the radiation exposure and remains diagnostic accuracy. In this paper, we propose a resource-efficient deep learning framework for L-PET reconstruction and analysis, referred to as transGAN-SDAM, to generate F-PET from corresponding L-PET, and quantify the standard uptake value ratios (SUVRs) of these generated F-PET at whole brain. The transGAN-SDAM consists of two modules: a transformer-encoded Generative Adversarial Network (transGAN) and a Spatial Deformable Aggregation Module (SDAM). The transGAN generates higher quality F-PET images, and then the SDAM integrates the spatial information of a sequence of generated F-PET slices to synthesize whole-brain F-PET images. Experimental results demonstrate the superiority and rationality of our approach.

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