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首页> 外文期刊>Neuroscience and Biomedical Engineering >Group-analysis of Resting-state fMRI Based on Bayesian Network: A Comparison of Three Virtual-typical-subject Methods
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Group-analysis of Resting-state fMRI Based on Bayesian Network: A Comparison of Three Virtual-typical-subject Methods

机译:基于贝叶斯网络的静息功能磁共振成像分组分析:三种虚拟典型对象方法的比较

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摘要

Functional magnetic resonance imaging (fMRI) technology can be implemented to infer brain activities consistently shared by a population or to identify their differences between populations. There are numerous studies that investigated the anatomical and functional connectivity of the network based on group-analysis. Here, the virtual-typical-subject (VTS) group-analysis methods of resting-state fMRI based on Bayesian network (BN) were investigated. There are three types of VTS-based methods: principal component analysis method (PCA-based), average method (AVE-based) and concatenate method (CAT-based). Sets of simulated data were constructed to test the robustness and performance of these VTS methods. The results from simulation demonstrated that the performance and robustness of AVE-based and CAT-based method was superior to that of the PCA-based method. Compared with CAT-based method, AVE-based method has higher stability, while the CAT-based method showed a better performance for different coefficient matrix of simulated data. Finally, the BN group-analysis (AVE-based and CAT-based) methods were applied to infer effective brain connectivity from real fMRI data. The results were consistent to previous study and demonstrated the validity of group-analysis method.
机译:可以实施功能磁共振成像(fMRI)技术来推断人群始终共享的脑部活动或识别人群之间的差异。有大量研究基于组分析研究了网络的解剖学和功能连通性。在此,研究了基于贝叶斯网络(BN)的静止状态功能磁共振成像的虚拟典型对象(VTS)组分析方法。基于VTS的方法有三种:主成分分析方法(基于PCA),平均方法(基于AVE)和连接方法(基于CAT)。构建了一组模拟数据以测试这些VTS方法的鲁棒性和性能。仿真结果表明,基于AVE和CAT的方法的性能和鲁棒性优于基于PCA的方法。与基于CAT的方法相比,基于AVE的方法具有更高的稳定性,而基于CAT的方法在模拟数据的不同系数矩阵上表现出更好的性能。最后,将BN组分析(基于AVE和CAT的方法)应用于从真实fMRI数据推断有效的大脑连通性。结果与以前的研究一致,证明了群体分析方法的有效性。

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