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Cross-modality Synthesis from MRI to PET Using Adversarial U-Net with Different Normalization

机译:使用具有不同归一化的逆势U-Net从MRI到PET的横向态合成

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Multi-modality biomedical images (especially magnetic resonance imaging (MRI) and positron emission tomography (PET)) are critical for auxiliary diagnosis in brain diseases. However, there are some common concerns in PET scans including the high cost, the usage of radioactive tracer and so on. These factors jointly result in a lack of PET datas. To overcome this limitation, in this study we proposed an effective U-Net architecture with the adversarial training strategy to synthesizing PET datas from their corresponding MRI. In addition, we notice that many prior works commonly adopted Batch Normalization (BN) as the normalization method by default. But in this specific task which always needs a small mini-batch, BN’s performance decreases rapidly. To alleviate this issue, we compared the performance of using other popular normalization methods rather than using BN as default. Experimental results on a subset of ADNI database demonstrated that the synthetic PET images from our proposed method were reasonable, and it was valuable to replace the Batch Normalization with the Instance Normalization in the tasks of cross-modality synthesis. Our study could help future research in this field.
机译:多模态生物医学图像(特别是磁共振成像(MRI)和正电子发射断层扫描(PET))对于脑病中的辅助诊断至关重要。然而,在宠物扫描中存在一些共同的问题,包括高成本,放射性示踪剂的使用等。这些因素共同导致缺乏宠物数据。为了克服这一限制,在这项研究中,我们提出了一种有效的U-Net架构,具有对相应的MRI合成宠物数据的对抗性培训策略。此外,我们注意到许多先前的作品通常通过默认采用批量标准化(BN)作为归一化方法。但在始终需要小型批量的特定任务中,BN的性能迅速降低。为了缓解此问题,我们将使用其他流行归一化方法的性能进行了比较,而不是使用BN默认。 Adni数据库子集上的实验结果表明,我们提出的方法的合成PET图像是合理的,并且在交叉模态合成任务中用实例归一化取代批量归一化是有价值的。我们的研究可以帮助未来的研究。

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