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Coclustering Based Parcellation of Human Brain Cortex Using Diffusion Tensor MRI

机译:使用扩散张量MRI的基于聚类的人脑皮质碎片

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The fundamental goal of computational neuroscience is to discover anatomical features that reflect the functional organization of the brain. Investigations of the physical connections between neuronal structures and measurements of brain activity in vivo have given rise to the concepts of anatomical and functional connectivity, which have been useful for our understanding of brain mechanisms and their plasticity. However, at present there is no generally accepted computational framework for the quantitative assessment of cortical connectivity. In this paper, we present accurate analytical and modeling tools that can reveal anatomical connectivity pattern and facilitate the interpretation of high-level knowledge regarding brain functions are strongly demanded. We also present a coclustering algorithm, called Business model based Coclustering Algorithm (BCA), which allows an automated and reproducible assessment of the connectivity pattern between different cortical areas based on Diffusion Tensor Imaging (DTI) data. The proposed BCA algorithm not only partitions the cortical mantel into well-defined clusters, but at the same time maximizes the connection strength between these clusters. Moreover, the BCA algorithm is computationally robust and allows both outlier detection as well as operator-independent determination of the number of clusters. We applied the BCA algorithm to human DTI datasets and show good performance in detecting anatomical connectivity patterns in the human brain.
机译:计算神经科学的基本目标是发现反映大脑功能组织的解剖特征。对神经元结构之间的物理联系和体内大脑活动的测量的研究提出了解剖学和功能联系的概念,这对于我们对大脑机制及其可塑性的理解很有用。但是,目前尚无公认的用于定量评估皮质连接性的计算框架。在本文中,我们提供了精确的分析和建模工具,这些工具可以揭示解剖学上的连通性模式,并有助于对有关脑功能的高级知识进行解释。我们还提出了一种共聚簇算法,称为基于业务模型的共聚簇算法(BCA),该算法可基于扩散张量成像(DTI)数据对不同皮层区域之间的连通性模式进行自动且可重现的评估。提出的BCA算法不仅将皮质壁炉分成定义明确的簇,而且同时使这些簇之间的连接强度最大化。此外,BCA算法具有强大的计算能力,可以进行离群值检测以及与簇数无关的操作员确定。我们将BCA算法应用于人类DTI数据集,并在检测人类大脑的解剖连通性模式方面显示出良好的性能。

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