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Disease-Image Specific Generative Adversarial Network for Brain Disease Diagnosis with Incomplete Multi-modal Neuroimages

机译:具有不完整的多模式神经影像的脑疾病诊断的疾病图像特定生成对抗网络

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Incomplete data problem is unavoidable in automated brain disease diagnosis using multi-modal neuroimages (e.g., MRI and PET). To utilize all available subjects to train diagnostic models, deep networks have been proposed to directly impute missing neuroimages by treating all voxels in a 3D volume equally. These methods are not diagnosis-oriented, as they ignore the disease-image specific information conveyed in multi-modal neuroimages, i.e., (1) disease may cause abnormalities only at local brain regions, and (2) different modalities may highlight different disease-associated regions. In this paper, we propose a unified disease-image specific deep learning framework for joint image synthesis and disease diagnosis using incomplete multi-modal neuroimaging data. Specifically, by using the whole-brain images as input, we design a disease-image specific neural network (DSNN) to implicitly model disease-image specificity in MRI/PET scans using the spatial cosine kernel. Moreover, we develop a feature-consistent generative adversarial network (FGAN) to synthesize missing images, encouraging DSNN feature maps of synthetic images and their respective real images to be consistent. Our DSNN and FGAN can be jointly trained, by which missing images are imputed in a task-oriented manner for brain disease diagnosis. Experimental results on 1, 466 subjects suggest that our method not only generates reasonable neuroimages, but also achieves the state-of-the-art performance in both tasks of Alzheimer's disease (AD) identification and mild cognitive impairment (MCI) conversion prediction.
机译:在使用多模式神经影像(例如MRI和PET)的自动脑部疾病诊断中,不可避免的数据问题是不可避免的。为了利用所有可用的受试者来训练诊断模型,已提出了深层网络,通过对3D体积中的所有体素进行同等处理来直接估算缺失的神经图像。这些方法并非以诊断为导向,因为它们忽略了多模态神经图像中传达的疾病图像特定信息,即(1)疾病可能仅在局部脑区域引起异常,并且(2)不同的模式可能会突出显示不同的疾病-相关区域。在本文中,我们提出了一个不完整的多模态神经影像数据,用于联合图像合成和疾病诊断的统一的疾病图像特定深度学习框架。具体来说,通过使用全脑图像作为输入,我们设计了疾病图像特定神经网络(DSNN),以使用空间余弦核对MRI / PET扫描中的疾病图像特异性进行隐式建模。此外,我们开发了特征一致的生成对抗网络(FGAN)来合成丢失的图像,从而鼓励合成图像的DSNN特征图与它们各自的真​​实图像保持一致。我们的DSNN和FGAN可以进行联合训练,从而以面向任务的方式估算缺少的图像,以进行脑疾病诊断。在1,466名受试者上的实验结果表明,我们的方法不仅可以生成合理的神经影像,而且在阿尔茨海默氏病(AD)识别和轻度认知障碍(MCI)转换预测任务中均能达到最新水平。

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