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Combining self-organizing mapping and supervised affinity propagation clustering approach to investigate functional brain networks involved in motor imagery and execution with fMRI measurements

机译:结合自组织映射和监督的亲和力传播聚类方法来研究参与运动成像和功能磁共振成像测量的功能性大脑网络

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摘要

Clustering analysis methods have been widely applied to identifying the functional brain networks of a multitask paradigm. However, the previously used clustering analysis techniques are computationally expensive and thus impractical for clinical applications. In this study a novel method, called SOM-SAPC that combines self-organizing mapping (SOM) and supervised affinity propagation clustering (SAPC), is proposed and implemented to identify the motor execution (ME) and motor imagery (MI) networks. In SOM-SAPC, SOM was first performed to process fMRI data and SAPC is further utilized for clustering the patterns of functional networks. As a result, SOM-SAPC is able to significantly reduce the computational cost for brain network analysis. Simulation and clinical tests involving ME and MI were conducted based on SOM-SAPC, and the analysis results indicated that functional brain networks were clearly identified with different response patterns and reduced computational cost. In particular, three activation clusters were clearly revealed, which include parts of the visual, ME and MI functional networks. These findings validated that SOM-SAPC is an effective and robust method to analyze the fMRI data with multitasks.
机译:聚类分析方法已广泛应用于识别多任务范式的功能性大脑网络。然而,先前使用的聚类分析技术在计算上是昂贵的,因此对于临床应用是不切实际的。在这项研究中,提出并实施了一种称为SOM-SAPC的新方法,该方法结合了自组织映射(SOM)和监督的亲和力传播聚类(SAPC)来识别运动执行(ME)和运动图像(MI)网络。在SOM-SAPC中,首先执行SOM以处理fMRI数据,然后将SAPC进一步用于对功能网络的模式进行聚类。结果,SOM-SAPC能够显着降低大脑网络分析的计算成本。基于SOM-SAPC进行了涉及ME和MI的仿真和临床测试,分析结果表明可以清楚地识别具有不同响应模式的功能性大脑网络,并降低了计算成本。特别是,清楚地揭示了三个激活簇,其中包括视觉,ME和MI功能网络的一部分。这些发现证实了SOM-SAPC是一种有效且强大的方法,可以分析具有多个任务的fMRI数据。

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