阿尔茨海默病脑连通性学习的图理论回归模型

Chenhui Hu, Lin Cheng, J. Sepulcre, G. Fakhri, Yue M. Lu, Quanzheng Li
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引用次数: 38

摘要

学习大脑功能连接对于理解神经退行性疾病至关重要。本文引入了一种新的图回归模型(GRM),该模型将成像数据视为定义在图上的信号,通过稀疏度正则化优化图与数据之间的适应度。所提出的框架在图上的低通信号方面具有很好的解释,与以前的统计模型相比更具通用性。基于仿真数据的结果表明,我们的方法可以得到一个非常接近真实网络的重建。然后,我们应用GRM来学习阿尔茨海默病(AD)的大脑连接。对30例AD患者的PET成像数据进行的评估表明,所发现的连接模式很容易解释,并且与已知的病理一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A graph theoretical regression model for brain connectivity learning of Alzheimer'S disease
Learning functional brain connectivity is essential to the understanding of neurodegenerative diseases. In this paper, we introduce a novel graph regression model (GRM) which regards the imaging data as signals defined on a graph and optimizes the fitness between the graph and the data, with a sparsity level regularization. The proposed framework features a nice interpretation in terms of low-pass signals on graphs, and is more generic compared with the previous statistical models. Results based on the simulated data illustrates that our approach can obtain a very close reconstruction of the true network. We then apply the GRM to learn the brain connectivity of Alzheimer's disease (AD). Evaluations performed upon PET imaging data of 30 AD patients demonstrate that the connectivity patterns discovered are easy to interpret and consistent with known pathology.
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