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Functional Connectivity Analysis in Resting State fMRI with Echo-State Networks and Non-Metric Clustering for Network Structure Recovery

机译:具有回声状态网络和非度量聚类的静态状态fMRI中的功能连通性分析,用于网络结构恢复

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Echo state networks (ESN) are recurrent neural networks where the hidden layer is replaced with a fixed reservoir of neurons. Unlike feed-forward networks, neuron training in ESN is restricted to the output neurons alone thereby providing a computational advantage. We demonstrate the use of such ESNs in our mutual connectivity analysis (MCA) framework for recovering the primary motor cortex network associated with hand movement from resting state functional MRI (fMRI) data. Such a framework consists of two steps - (1) defining a pair-wise affinity matrix between different pixel time series within the brain to characterize network activity and (2) recovering network components from the affinity matrix with non-metric clustering. Here, ESNs are used to evaluate pair-wise cross-estimation performance between pixel time series to create the affinity matrix, which is subsequently subject to non-metric clustering with the Louvain method. For comparison, the ground truth of the motor cortex network structure is established with a task-based fMRI sequence. Overlap between the primary motor cortex network recovered with our model free MCA approach and the ground truth was measured with the Dice coefficient. Our results show that network recovery with our proposed MCA approach is in close agreement with the ground truth. Such network recovery is achieved without requiring low-pass filtering of the time series ensembles prior to analysis, an fMRI preprocessing step that has courted controversy in recent years. Thus, we conclude our MCA framework can allow recovery and visualization of the underlying functionally connected networks in the brain on resting state fMRI.
机译:回声状态网络(ESN)是递归神经网络,其中隐藏层被固定的神经元存储库代替。与前馈网络不同,ESN中的神经元训练仅限于输出神经元,从而提供了计算优势。我们证明了这种ESN在我们的相互连接分析(MCA)框架中的使用,用于从静止状态功能MRI(fMRI)数据中恢复与手运动相关的主要运动皮层网络。这样的框架包括两个步骤-(1)在大脑内不同像素时间序列之间定义成对的亲和度矩阵,以表征网络活动;(2)使用非度量聚类从亲和度矩阵中恢复网络成分。在这里,ESN用于评估像素时间序列之间的成对交叉估计性能,以创建亲和力矩阵,该亲和力矩阵随后将通过Louvain方法进行非度量聚类。为了进行比较,使用基于任务的功能磁共振成像序列建立了运动皮层网络结构的基本原理。用我们的无模型MCA方法恢复的初级运动皮层网络与地面真相之间的重叠是用Dice系数测量的。我们的结果表明,使用我们提出的MCA方法进行网络恢复与事实相符。实现这种网络恢复无需在分析之前对时间序列集合进行低通滤波,fMRI预处理步骤近年来备受争议。因此,我们得出结论,我们的MCA框架可以在静息状态fMRI上恢复和可视化大脑中潜在的功能连接网络。

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