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Arterial Spin Labeling Images Synthesis via Locally-Constrained WGAN-GP Ensemble

机译:通过局部约束的WGAN-GP集合进行动脉自旋标记图像合成

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Arterial spin labeling (ASL) images begin to receive much popularity in dementia diseases diagnosis recently, yet it is still not commonly seen in well-established image datasets for investigating dementia diseases. Hence, synthesizing ASL images from available data is worthy of investigations. In this study, a novel locally-constrained WGAN-GP model ensemble is proposed to realize ASL images synthesis from structural MRI for the first time. Technically, this new WGAN-GP model ensemble is unique in its constrained optimization task, in which diverse local constraints are incorporated. In this way, more details of synthesized ASL images can be obtained after incorporating local constraints in this new ensemble. The effectiveness of the new WGAN-GP model ensemble for synthesizing ASL images has been substantiated both qualitatively and quantitatively through rigorous experiments in this study. Comprehensive analyses reveal that, this new WGAN-GP model ensemble is superior to several state-of-the-art GAN-based models in synthesizing ASL images from structural MRI in this study.
机译:近来,动脉自旋标记(ASL)图像开始在痴呆症诊断中广受欢迎,但在用于研究痴呆症的完善图像数据集中仍然不常见。因此,从可用数据中合成ASL图像值得研究。在这项研究中,提出了一种新颖的局部约束WGAN-GP模型集合,以首次实现从结构MRI合成ASL图像。从技术上讲,这种新的WGAN-GP模型集成在受约束的优化任务中是独一无二的,该任务中并入了各种局部约束。这样,在将局部约束合并到此新集合中之后,可以获得合成的ASL图像的更多细节。通过严格的实验,在定性和定量方面证实了新的WGAN-GP模型集成用于合成ASL图像的有效性。综合分析显示,在这项研究中,这种新的WGAN-GP模型集成在从结构MRI合成ASL图像方面优于几种基于GAN的最新模型。

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