Skip connections for medical image synthesis with generative adversarial networks
Date
2022-08-29Source Title
Signal Processing and Communications Applications Conference (SIU)
Print ISSN
2165-0608
Publisher
IEEE
Pages
[1] - [4]
Language
English
Type
Conference PaperItem Usage Stats
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Abstract
Magnetic Resonance Imaging (MRI) is an imaging technique used to produce detailed anatomical images. Acquiring multiple contrast MRI images requires long scan times forcing the patient to remain still. Scan times can be reduced by synthesising unacquired contrasts from acquired contrasts. In recent years, deep generative adversarial networks have been used to synthesise contrasts using one-to-one mapping. Deeper networks can solve more complex functions, however, their performance can decline due to problems such as overfitting and vanishing gradients. In this study, we propose adding skip connections to generative models to overcome the decline in performance with increasing complexity. This will allow the network to bypass unnecessary parameters in the model. Our results show an increase in performance in one-to-one image synthesis by integrating skip connections.
Keywords
Medical image synthesisMagnetic resonance imaging (MRI)
Multi-contrast MRI
Generative adversarial network
Skip connections