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Concurrent brain parcellation and connectivity estimation via co‐clustering of resting state fMRI data: A novel approach

机译:通过休息状态FMRI数据共聚类并发大脑局部和连接估计:一种新方法

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摘要

Connectional topography mapping has been gaining widespread attention in human brain imaging studies. However, existing methods might not effectively utilize the information from neuroimaging data, thus hindering the understanding of the underlying connectional organization in the brain and uncovering the optimal clustering number from the data. In this study, we propose a novel method for the automated construction of inherent functional connectivity topography in a data‐driven manner by leveraging the power of co‐clustering‐based on resting state fMRI (rs‐fMRI) data. We propose the co‐clustering‐based method not only for concurrently parcellating two interconnected brain regions of interest (ROIs) under consideration into functionally homogenous subregions, but also for estimating the connectivity between these subregions from the two brain ROIs. In particular, we first model the connectional topography mapping as a co‐clustering‐based bipartite graph partitioning problem for constructing the inherent functional connectivity topography between the two interconnected brain ROIs. We also adopt an objective criterion, that is, silhouette width index measuring clustering quality, for determining the optimal number of clusters. The proposed method has been validated for mapping thalamocortical connectional topography based on rs‐fMRI data of 57 subjects. Validation results have demonstrated that our method identified the optimal solution with five pairs of mutually connected subregions of the thalamocortical system from the rs‐fMRI data, and could yield more meaningful, interpretable, and homogenous connectional topography than existing methods. The proposed method was further validated by the high symmetry of the mapped connectional topography between two hemispheres.
机译:连接地形映射在人脑成像研究中一直受到广泛的关注。然而,现有方法可能不会有效地利用来自神经影像数据数据的信息,从而阻碍了对大脑中的底层连接组织的理解,并从数据中揭示了最佳聚类号码。在这项研究中,我们通过利用基于休息状态FMRI(RS-FMRI)数据的共同聚类的功率来提出一种新的具有数据驱动的方式自动构建固有功能连接地形的自动结构的新方法。我们不仅提出了基于共聚类的方法,不仅用于将在功能均匀的子区域中考虑的两个互连的脑部(ROIS)映射的互连的脑区(ROI),而且还用于估算来自两个脑ROI的这些亚区之间的连通性。特别地,我们首先将连接形貌映射模型作为基于共聚类的二分曲线图分区问题,用于构建两个互连的脑ROI之间的固有功能连接地形。我们还采用客观标准,即剪影宽度指数测量聚类质量,用于确定最佳簇数。所提出的方法已被验证,用于基于57个科目的RS-FMRI数据来映射ThalamoCork连接地形。验证结果表明,我们的方法鉴定了从RS-FMRI数据的五对相互连接的丘脑波动系统的最佳解决方案,并且可以产生比现有方法更有意义,可解释和均匀的连接地形。通过两个半球之间的映射连接形貌的高对称进一步验证了所提出的方法。

著录项

  • 期刊名称 Human Brain Mapping
  • 作者

    Hewei Cheng; Jie Liu;

  • 作者单位
  • 年(卷),期 2021(42),8
  • 年度 2021
  • 页码 2477–2489
  • 总页数 13
  • 原文格式 PDF
  • 正文语种
  • 中图分类 神经科学 ;
  • 关键词

    机译:共聚类;FMRI;功能连通性;连接形貌映射;ThalamoCortical;

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