Skip Connections for Medical Image Synthesis with Generative Adversarial Networks

Usama Mirza, Onat Dalmaz, T. Çukur
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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.
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用生成对抗网络进行医学图像合成的跳过连接
磁共振成像(MRI)是一种用于产生详细解剖图像的成像技术。获得多重对比MRI图像需要长时间的扫描,迫使患者保持静止。扫描时间可以通过合成未获得的对比从获得的对比减少。近年来,深度生成对抗网络已被用于使用一对一映射来合成对比。深度网络可以解决更复杂的函数,但是,由于过度拟合和梯度消失等问题,它们的性能可能会下降。在本研究中,我们建议在生成模型中添加跳过连接,以克服随着复杂性增加而导致的性能下降。这将允许网络绕过模型中不必要的参数。我们的结果表明,通过集成跳过连接,可以提高一对一图像合成的性能。
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