首页> 外文会议>Neural Engineering, 2009. NER '09 >Clustering method for fMRI activation detection using optimal number of clusters
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Clustering method for fMRI activation detection using optimal number of clusters

机译:利用最佳簇数进行fMRI激活检测的聚类方法

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In this study, clustering based method for activation detection in functional magnetic resonance imaging (fMRI) is employed. Moreover, some features are obtained by fitting two models namely FIR filter and Gamma function, to hemodynamic response function (HRF). After applying clustering methods (that require number of clusters as an input) to feature space, our simulations show that number of clusters can affect activation detection significantly. Therefore a newly proposed clustering algorithm namely evolving neural gas (ENG) that gives optimal number of clusters is exploited. In addition to ENG, the result of four clustering algorithms namely k-means, fuzzy C-means, neural gas, and clara in different number of clusters are evaluated. The results show that the best activation detection is taken place using obtained optimal number of clusters.
机译:在这项研究中,采用基于聚类的功能磁共振成像(fMRI)中的激活检测方法。此外,通过将两个模型即FIR滤波器和Gamma函数拟合​​到血液动力学响应函数(HRF),可以获得一些特征。将聚类方法(需要输入簇数作为特征)应用于特征空间后,我们的仿真表明,簇数会显着影响激活检测。因此,采用了一种新提出的聚类算法,即给出最佳聚类数的进化神经气体(ENG)。除ENG以外,还评估了四种聚类算法(k均值,模糊C均值,神经气体和克拉拉)在不同数量的聚类中的结果。结果表明,使用获得的最佳簇数可以进行最佳激活检测。

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