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.
翻译:18F-氟deoxyglucose (18F-FDG)(18F-FDG) Positon Emission Exmography(PET) 成像通常需要一个全剂量放射性追踪仪(PET),以获得令人满意的诊断结果,这引起了对辐射照射潜在健康风险的关切,特别是对儿科病人而言。将低剂量PET(L-PET)图像重新构建为高质量的全剂量PET(F-PET)图像是一种有效方法,既能减少辐射照射,又能保持诊断性准确性。在本文中,我们提议一个资源高效的L-PET重建和分析深层学习框架,称为TransGAN-SDAM,从相应的L-PET产生F-PET的F-PET(F-PET)图像中产生F-PET(F-PET)高品质的F-PET(SVRs),然后用SDAM(SDAM) 将整个SAL-FIAL-IAMAL) 图像的高级级整合结果。