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Mutual Connectivity Analysis (MCA) Using Generalized Radial Basis Function Neural Networks for Nonlinear Functional Connectivity Network Recovery in Resting-State Functional MRI

机译:静态状态MRI中使用广义径向基函数神经网络进行非线性功能连接网络恢复的互连接分析(MCA)

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摘要

We investigate the applicability of a computational framework, called mutual connectivity analysis (MCA), for directed functional connectivity analysis in both synthetic and resting-state functional MRI data. This framework comprises of first evaluating non-linear cross-predictability between every pair of time series prior to recovering the underlying network structure using community detection algorithms. We obtain the non-linear cross-prediction score between time series using Generalized Radial Basis Functions (GRBF) neural networks. These cross-prediction scores characterize the underlying functionally connected networks within the resting brain, which can be extracted using non-metric clustering approaches, such as the Louvain method. We first test our approach on synthetic models with known directional influence and network structure. Our method is able to capture the directional relationships between time series (with an area under the ROC curve = 0.92 ± 0.037) as well as the underlying network structure (Rand index = 0.87 ± 0.063) with high accuracy. Furthermore, we test this method for network recovery on resting-state fMRI data, where results are compared to the motor cortex network recovered from a motor stimulation sequence, resulting in a strong agreement between the two (Dice coefficient = 0.45). We conclude that our MCA approach is effective in analyzing non-linear directed functional connectivity and in revealing underlying functional network structure in complex systems.
机译:我们调查了称为相互连接分析(MCA)的计算框架在合成和静态功能MRI数据中的定向功能连接分析的适用性。该框架包括在使用社区检测算法恢复基础网络结构之前,首先评估每对时间序列之间的非线性交叉可预测性。我们使用广义径向基函数(GRBF)神经网络获得时间序列之间的非线性交叉预测得分。这些交叉预测得分表征了静息大脑中潜在的功能连接网络,这些网络可以使用非度量聚类方法(例如Louvain方法)提取。我们首先在已知方向性影响和网络结构的综合模型上测试我们的方法。我们的方法能够高精度捕获时间序列(ROC曲线下的面积= 0.92±0.037)与基础网络结构(兰德指数= 0.87±0.063)之间的方向关系。此外,我们在静止状态fMRI数据上测试了该网络恢复方法,将结果与从运动刺激序列中恢复的运动皮层网络进行了比较,从而使两者之间具有很强的一致性(骰子系数= 0.45)。我们得出的结论是,我们的MCA方法可有效分析非线性定向功能连接性并揭示复杂系统中的基础功能网络结构。

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