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Simultaneous Spatial-Temporal Decomposition of Connectome-Scale Brain Networks by Deep Sparse Recurrent Auto-Encoders

机译:深度稀疏递归自动编码器在连接组尺度脑网络的同时时空分解

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Exploring the spatial patterns and temporal dynamics of human brain activities has long been a great topic, yet development of a unified spatial-temporal model for such purpose is still challenging. To better understand brain networks based on fMRI data and inspired by the success in applying deep learning for brain encoding/decoding, we propose a novel deep sparse recurrent auto-encoder (DSRAE) in an unsupervised spatial-temporal way to learn spatial and temporal patterns of brain networks jointly. The proposed DSRAE has been validated on the publicly available human connectome project (HCP) fMRI datasets with promising results. To our best knowledge, the proposed DSRAE is among the early unified models that can extract connectome-scale spatial-temporal networks from 4D fMRI data simultaneously.
机译:长期以来,探索人脑活动的空间模式和时间动态一直是一个伟大的话题,然而,为此目的开发统一的时空模型仍然是一项挑战。为了更好地了解基于fMRI数据的大脑网络,并受成功将深度学习应用于大脑编码/解码的启发,我们提出了一种新颖的深度稀疏递归自动编码器(DSRAE),以无监督的时空方式学习时空模式共同的大脑网络。拟议的DSRAE已在可公开获得的人类Connectome项目(HCP)fMRI数据集上得到验证,并获得了可喜的结果。据我们所知,所提出的DSRAE是早期的统一模型之一,可以同时从4D fMRI数据中提取连接组尺度的时空网络。

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