edaGAN: Encoder-Decoder Attention Generative Adversarial Networks for Multi-contrast MR Image Synthesis

Onat Dalmaz, Baturay Sağlam, Kaan Gönç, T. Çukur
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引用次数: 1

Abstract

Magnetic resonance imaging (MRI) is the preferred modality among radiologists in the clinic due to its superior depiction of tissue contrast. Its ability to capture different contrasts within an exam session allows it to collect additional diagnostic information. However, such multi-contrast MRI exams take a long time to scan, resulting in acquiring just a portion of the required contrasts. Consequently, synthetic multi-contrast MRI can improve subsequent radiological observations and image analysis tasks like segmentation and detection. Because of this significant potential, multi-contrast MRI synthesis approaches are gaining popularity. Recently, generative adversarial networks (GAN) have become the de facto choice for synthesis tasks in medical imaging due to their sensitivity to realism and high-frequency structures. In this study, we present a novel generative adversarial approach for multi-contrast MRI synthesis that combines the learning of deep residual convolutional networks and spatial modulation introduced by an attention gating mechanism to synthesize high-quality MR images. We show the superiority of the proposed approach against various synthesis models on multi-contrast MRI datasets.
多对比度磁共振图像合成的编码器-解码器注意生成对抗网络
磁共振成像(MRI)是临床放射科医生的首选方式,因为它具有优越的组织对比描述。它能够在一次检查中捕捉不同的对比,从而收集额外的诊断信息。然而,这种多对比MRI检查需要很长时间扫描,导致只能获得所需对比的一部分。因此,合成多对比MRI可以改善后续的放射学观察和图像分析任务,如分割和检测。由于这种巨大的潜力,多对比MRI合成方法越来越受欢迎。最近,生成对抗网络(GAN)由于其对真实感和高频结构的敏感性而成为医学成像合成任务的事实上的选择。在这项研究中,我们提出了一种新的生成对抗方法用于多对比MRI合成,该方法结合了深度残差卷积网络的学习和由注意门控机制引入的空间调制来合成高质量的MR图像。我们在多对比MRI数据集上展示了所提出的方法对各种合成模型的优越性。
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