Pan Yongsheng, Liu Mingxia, Lian Chunfeng, Zhou Tao, Xia Yong, Shen Dinggang
School of Computer Science and Engineering, Northwestern Polytechnical University, Xi'an 710072, China.
Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, NC 27599, USA.
Med Image Comput Comput Assist Interv. 2018;11072:455-463. doi: 10.1007/978-3-030-00931-1_52. Epub 2018 Sep 13.
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 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 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.
多模态神经影像(例如,MRI和PET)通过提供互补信息,已被广泛用于诊断诸如阿尔茨海默病(AD)等脑部疾病。然而,在实际应用中,不可避免地会出现数据缺失的情况,即在ADNI数据集中,许多受试者缺少PET数据。应对这一挑战的一种直接策略是简单地丢弃缺少PET数据的受试者,但这将显著减少用于学习可靠诊断模型的训练受试者数量。另一方面,由于不同模态(即MRI和PET)是从同一受试者获取的,不同模态之间通常存在潜在的相关性。因此,我们提出了一种使用MRI和PET数据进行AD诊断的两阶段深度学习框架。具体而言,在第一阶段,我们通过使用3D循环一致生成对抗网络(3D-cGAN)基于相应的MRI数据来插补缺失的PET数据,以捕捉它们之间的潜在关系。在第二阶段,利用完整的MRI和PET数据(即对于缺少PET数据的情况进行插补之后的数据),我们开发了一种用于AD诊断以及轻度认知障碍(MCI)转化预测的深度多实例神经网络。对ADNI受试者的实验结果表明,我们用3D-cGAN合成的PET图像是合理的,并且我们的两阶段深度学习方法在AD诊断方面优于现有方法。