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Deep learning-assisted ultra-fast/low-dose whole-body PET/CT imaging
151
Zitationen
6
Autoren
2021
Jahr
Abstract
CycleGAN is able to synthesize clinical FD WB PET images from LD images with 1/8th of standard injected activity or acquisition time. The predicted FD images present almost similar performance in terms of lesion detectability, qualitative scores, and quantification bias and variance.
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