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首页> 外文期刊>IEEE Transactions on Medical Imaging >Spatially-Constrained Fisher Representation for Brain Disease Identification With Incomplete Multi-Modal Neuroimages
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Spatially-Constrained Fisher Representation for Brain Disease Identification With Incomplete Multi-Modal Neuroimages

机译:用不完全多模态神经显影的空间约束的脑病鉴定的Fisher表示

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摘要

Multi-modal neuroimages, such as magnetic resonance imaging (MRI) and positron emission tomography (PET), can provide complementary structural and functional information of the brain, thus facilitating automated brain disease identification. Incomplete data problem is unavoidable in multi-modal neuroimage studies due to patient dropouts and/or poor data quality. Conventional methods usually discard data-missing subjects, thus significantly reducing the number of training samples. Even though several deep learning methods have been proposed, they usually rely on pre-defined regions-of-interest in neuroimages, requiring disease-specific expert knowledge. To this end, we propose a spatially-constrained Fisher representation framework for brain disease diagnosis with incomplete multi-modal neuroimages. We first impute missing PET images based on their corresponding MRI scans using a hybrid generative adversarial network. With the complete (after imputation) MRI and PET data, we then develop a spatially-constrained Fisher representation network to extract statistical descriptors of neuroimages for disease diagnosis, assuming that these descriptors follow a Gaussian mixture model with a strong spatial constraint (i.e., images from different subjects have similar anatomical structures). Experimental results on three databases suggest that our method can synthesize reasonable neuroimages and achieve promising results in brain disease identification, compared with several state-of-the-art methods.
机译:多模态神经显影,例如磁共振成像(MRI)和正电子发射断层扫描(PET),可以提供大脑的互补结构和功能信息,从而促进自动脑疾病鉴定。由于患者的丢失和/或数据质量差,多模态神经显镜研究中不完全数据问题是不可避免的。常规方法通常丢弃数据缺失的对象,从而显着减少训练样本的数量。尽管已经提出了几种深入学习的方法,但它们通常依赖于患有疾病特异性专家知识的预定义的地区。为此,我们向脑病诊断提出了一种空间约束的Fisher代表框架,具有不完全的多模态神经因子。我们首先使用混合生成的对抗网络,基于它们对应的MRI扫描来赋予缺失的PET图像。随着完整的(归故)MRI和PET数据,我们开发了一个空间约束的Fisher代表网络,以提取神经显口统计学符的疾病诊断,假设这些描述符遵循具有强大空间约束的高斯混合模型(即图像来自不同的受试者具有类似的解剖结构)。三个数据库的实验结果表明,我们的方法可以合成合理的神经显影,并达到脑病鉴定的有希望的结果,与几种最先进的方法相比。

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