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Synthesizing Missing PET from MRI with Cycle-consistent Generative Adversarial Networks for Alzheimer's Disease Diagnosis

机译:利用周期一致的生成对抗网络从MRI中合成丢失的PET,用于阿尔茨海默氏病的诊断

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Multi-modal neuroimages (e.g., MRI and PET) have been widely used for diagnosis of brain diseases such as Alzheimer's disease (AD) by providing complementary information. However, in practice, it is unavoidable to have missing data, i.e., missing PET data for many subjects in the ADNI dataset. A straightforward strategy to tackle this challenge is to simply discard subjects with missing PET, but this will significantly reduce the number of training subjects for learning reliable diagnostic models. On the other hand, since different modalities (i.e., MRI and PET) were acquired from the same subject, there often exist underlying relevance between different modalities. Accordingly, we propose a two-stage deep learning framework for AD diagnosis using both MRI and PET data. Specifically, in the first stage, we impute missing PET data based on their corresponding MRI data by using 3D Cycle-consistent Generative Adversarial Networks (3D-cGAN) to capture their underlying relationship. In the second stage, with the complete MRI and PET (i.e., after imputation for the case of missing PET), we develop a deep multi-instance neural network for AD diagnosis and also mild cognitive impairment (MCI) conversion prediction. Experimental results on subjects from ADNI demonstrate that our synthesized PET images with 3D-cGAN are reasonable, and also our two-stage deep learning method outperforms the state-of-the-art methods in AD diagnosis.
机译:通过提供补充信息,多模式神经图像(例如,MRI和PET)已被广泛用于诊断脑疾病,例如阿尔茨海默氏病(AD)。但是,实际上,不可避免的是缺少数据,即,ADNI数据集中许多对象的PET数据丢失。解决此挑战的一种直接策略是简单地丢弃PET缺失的受试者,但这将大大减少用于学习可靠的诊断模型的培训受试者的数量。另一方面,由于从同一受试者获得了不同的模态(即,MRI和PET),因此在不同模态之间通常存在潜在的相关性。因此,我们提出了使用MRI和PET数据进行AD诊断的两阶段深度学习框架。具体来说,在第一阶段,我们通过使用3D周期一致的生成对抗网络(3D-cGAN)来捕获其基本关系,从而根据其相应的MRI数据估算缺失的PET数据。在第二阶段,借助完整的MRI和PET(即,在归因于丢失PET的情况下进行归因后),我们开发了用于AD诊断以及轻度认知障碍(MCI)转换预测的深层多实例神经网络。来自ADNI的实验结果表明,我们使用3D-cGAN合成的PET图像是合理的,而且我们的两阶段深度学习方法在AD诊断中也优于最新方法。

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