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Encoding Multi-Resolution Brain Networks Using Unsupervised Deep Learning

机译:使用无监督深度学习对多分辨率脑网络进行编码

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The main goal of this study is to extract a set of brain networks in multiple time-resolutions to analyze the connectivity patterns among the anatomic regions for a given cognitive task. We suggest a deep architecture which learns the natural groupings of the connectivity patterns of human brain in multiple time-resolutions. The suggested architecture is tested on task data set of Human Connectome Project (HCP) where we extract multi-resolution networks, each of which corresponds to a cognitive task. At the first level of this architecture, we decompose the fMRI signal into multiple sub-bands using wavelet decompositions. At the second level, for each sub-band, we estimate a brain network extracted from short time windows of the fMRI signal. At the third level, we feed the adjacency matrices of each mesh network at each time-resolution into an unsupervised deep learning algorithm, namely, a Stacked De- noising Auto-Encoder (SDAE). The outputs of the SDAE provide a compact connectivity representation for each time window at each sub-band of the fMRI signal. We concatenate the learned representations of all sub-bands at each window and cluster them by a hierarchical algorithm to find the natural groupings among the windows. We observe that each cluster represents a cognitive task with a performance of 93% Rand Index and 71% Adjusted Rand Index. We visualize the mean values and the precisions of the networks at each component of the cluster mixture. The mean brain networks at cluster centers show the variations among cognitive tasks and the precision of each cluster shows the within cluster variability of networks, across the subjects.
机译:这项研究的主要目的是提取一组具有多种时间分辨率的大脑网络,以分析给定认知任务的解剖区域之间的连通性模式。我们建议使用一种深度架构,该架构可以在多个时间分辨率中学习人脑连接模式的自然分组。所建议的体系结构已在人类Connectome项目(HCP)的任务数据集上进行了测试,我们在其中提取了多分辨率网络,每个网络都对应一个认知任务。在此架构的第一级,我们使用小波分解将fMRI信号分解为多个子带。在第二级,对于每个子带,我们估计从fMRI信号的短时间窗提取的大脑网络。在第三级,我们将每个时间分辨率的每个网格网络的邻接矩阵馈入无监督的深度学习算法,即堆叠降噪自动编码器(SDAE)。 SDAE的输出为fMRI信号的每个子带上的每个时间窗口提供了紧凑的连接表示。我们将每个窗口的所有子带的学习表示连接起来,并通过分层算法将它们聚类,以找到窗口之间的自然分组。我们观察到,每个群集代表一项认知任务,其性能为93 \%兰德指数和71 \%调整后的兰德指数。我们可视化群集混合的每个组成部分的网络的平均值和精度。聚类中心的平均大脑网络显示出认知任务之间的差异,而每个聚类的精确度则表明了跨受试者的网络内部聚类的变异性。

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