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Select and Cluster: A Method for Finding Functional Networks of Clustered Voxels in fMRI

机译:选择和群集:在FMRI中查找集群体素的功能网络的方法

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摘要

Extracting functional connectivity patterns among cortical regions in fMRI datasets is a challenge stimulating the development of effective data-driven or model based techniques. Here, we present a novel data-driven method for the extraction of significantly connected functional ROIs directly from the preprocessed fMRI data without relying on a priori knowledge of the expected activations. This method finds spatially compact groups of voxels which show a homogeneous pattern of significant connectivity with other regions in the brain. The method, called Select and Cluster (S&C), consists of two steps: first, a dimensionality reduction step based on a blind multiresolution pairwise correlation by which the subset of all cortical voxels with significant mutual correlation is selected and the second step in which the selected voxels are grouped into spatially compact and functionally homogeneous ROIs by means of a Support Vector Clustering (SVC) algorithm. The S&C method is described in detail. Its performance assessed on simulated and experimental fMRI data is compared to other methods commonly used in functional connectivity analyses, such as Independent Component Analysis (ICA) or clustering. S&C method simplifies the extraction of functional networks in fMRI by identifying automatically spatially compact groups of voxels (ROIs) involved in whole brain scale activation networks.
机译:在FMRI数据集中提取皮质区域中的功能连接模式是刺激有效数据驱动或基于模型技术的发展的挑战。在这里,我们提出了一种新的数据驱动方法,用于提取显着连接的功能ROI,直接从预处理的FMRI数据提取,而无需依赖于预期激活的先验知识。该方法发现空间紧凑的体素组,其显示与大脑中其他区域的均匀连接的均匀性模式。该方法,称为选择和群集(S&C)由两个步骤组成:首先,基于盲多分辨率成对相关性的维度降低步骤,通过该盲多辨据成对相关性,其中选择具有显着互相关的所有皮质体素的子集以及第二步通过支持向量聚类(SVC)算法,所选体素被分组成空间紧凑且功能均匀的ROI。详细描述了S&C方法。将其对模拟和实验性FMRI数据进行评估的性能与功能连接分析中通常用于的其他方法进行比较,例如独立分量分析(ICA)或聚类。 S&C方法通过识别整个脑级激活网络涉及的自动空间紧凑的体素(ROI)来简化FMRI中功能网络的提取。

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