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A Novel fMRI Representation Learning Framework with GAN

机译:一种新的FMRI代表与GAN学习框架

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摘要

Modeling the mapping between mind and brain is the key towards understanding how brain works. More specifically, the question can be formatted as modeling the posterior distribution of the latent psychological state given the observed brain, and the likelihood of brain observation given the latent psychological state. Generative adversarial network (GAN) is known for learning implicitly distributions over data which are hard to model with an explicit likelihood. To utilize GAN for the brain mapping modeling, we propose a novel representation learning framework to explore brain representations of different functions. With a linear regression, the learned representations are interpreted as functional brain networks (FBNs), which characterize the mapping between mind and brain. The proposed framework is evaluated on Human Connectome Project (HCP) task functional MRI (tfMRI) data. This novel framework proves that GAN can learn meaningful representations of tfMRI and promises better understanding of the brain function.
机译:建模心灵与大脑之间的映射是了解大脑如何工作的关键。更具体地,可以将问题表明为鉴于观察到的大脑的潜在心理状态的后部分布,以及脑观察的可能性给予潜在的心理状态。已知生成的对抗网络(GaN)用于学习通过明确似然难以模型的数据来学习。为了利用GaN进行大脑映射建模,我们提出了一种新颖的表示学习框架,以探索不同功能的脑表征。利用线性回归,学习的表示被解释为功能脑网络(FBNS),其表征了心灵和大脑之间的映射。所提出的框架是对人类连接项目(HCP)任务功能MRI(TFMRI)数据的评估。这部小说框架证明了GaN可以学习TFMRI的有意义的表示,并承诺更好地了解大脑功能。

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