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Automatic Recognition of Resting State fMRI Networks with Dictionary Learning

机译:具有字典学习功能的静止状态功能磁共振成像网络的自动识别

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Resting state functional magnetic resonance imaging (rs-fMRI) is a functional neuroimaging technique that investigates the spatially remote yet functionally linked neuronal coactivation patterns of the brain at rest. Non-invasiveness and task-free characteristics of rs-fMRI make it particularly suitable for aging, pediatric and clinical population. Researchers typically follow a source separation strategy to efficiently reconstruct the concurrent interacting resting state networks (RSN) from a myriad of whole brain fMRI signals. RSNs are currently identified by visual inspection with prior knowledge of spatial clustering of RSNs, as the variability and spatial overlapping nature of RSNs combined with presence of various sources of noise make automatic identification of RSNs a challenging task. In this study, we have developed an automated recognition algorithm to classify all the distinct RSNs. First, in contrast to traditional single level decomposition, a multi-level deep sparse matrix factorization-based dictionary leaning strategy was used to extract hierarchical features from the data at each level. Then we used maximum likelihood estimates of these spatial features using Kullback-Leibler divergence to perform the recognition of RSNs. Experimental results confirmed the effectiveness of our proposed approach in accurately classifying all the RSNs.
机译:静止状态功能磁共振成像(rs-fMRI)是一种功能性神经成像技术,用于研究静止状态下大脑的空间遥远但功能相关的神经元共激活模式。 rs-fMRI的无创性和无任务特征使其特别适合于衰老,儿科和临床人群。研究人员通常遵循一种源分离策略,以从无数的全脑fMRI信号中有效地重建并发相互作用的静息状态网络(RSN)。目前,RSN是通过目视检查结合RSN的空间聚类的先验知识来识别的,因为RSN的可变性和空间重叠性质以及各种噪声源的存在使RSN的自动识别成为一项艰巨的任务。在这项研究中,我们开发了一种自动识别算法来对所有不同的RSN进行分类。首先,与传统的单级分解相反,基于多级深度稀疏矩阵分解的字典学习策略用于从每个级别的数据中提取层次结构特征。然后,我们使用Kullback-Leibler散度使用这些空间特征的最大似然估计来执行RSN的识别。实验结果证实了我们提出的方法在对所有RSN进行准确分类中的有效性。

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