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基于高角度分辨率扩散成像的结构连接研究的综合框架。

An integrated framework for high angular resolution diffusion imaging-based investigation of structural connectivity.

机构信息

Section of Biomedical Image Analysis, Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.

出版信息

Brain Connect. 2012;2(2):69-79. doi: 10.1089/brain.2011.0070. Epub 2012 Jun 11.

Abstract

Structural connectivity models hold great promise for expanding what is known about the ways information travels throughout the brain. The physiologic interpretability of structural connectivity models depends heavily on how the connections between regions are quantified. This article presents an integrated structural connectivity framework designed around such an interpretation. The framework provides three measures to characterize the structural connectivity of a subject: (1) the structural connectivity matrix describing the proportion of connections between pairs of nodes, (2) the nodal connection distribution (nCD) characterizing the proportion of connections that terminate in each node, and (3) the connection density image, which presents the density of connections as they traverse through white matter (WM). Individually, each possesses different information concerning the structural connectivity of the individual and could potentially be useful for a variety of tasks, ranging from characterizing and localizing group differences to identifying novel parcellations of the cortex. The efficiency of the proposed framework allows the determination of large structural connectivity networks, consisting of many small nodal regions, providing a more detailed description of a subject's connectivity. The nCD provides a gray matter contrast that can potentially aid in investigating local cytoarchitecture and connectivity. Similarly, the connection density images offer insight into the WM pathways, potentially identifying focal differences that affect a number of pathways. The reliability of these measures was established through a test/retest paradigm performed on nine subjects, while the utility of the method was evaluated through its applications to 20 diffusion datasets acquired from typically developing adolescents.

摘要

结构连接模型在扩展人们对大脑中信息传输方式的认识方面具有巨大的潜力。结构连接模型的生理可解释性在很大程度上取决于如何量化区域之间的连接。本文提出了一个围绕这种解释的综合结构连接框架。该框架提供了三种用于描述主体结构连接的度量:(1)描述节点对之间连接比例的结构连接矩阵,(2)表征每个节点终止的连接比例的节点连接分布(nCD),以及(3)连接密度图像,它表示连接在穿过白质(WM)时的密度。每个度量都包含有关个体结构连接的不同信息,并且可能对各种任务有用,从描述和定位组间差异到识别皮质的新分割。所提出的框架的效率允许确定由许多小节点区域组成的大型结构连接网络,从而更详细地描述主体的连接。nCD 提供了灰质对比度,可能有助于研究局部细胞结构和连接。同样,连接密度图像提供了对 WM 途径的深入了解,可能确定影响多个途径的焦点差异。这些度量的可靠性是通过对 9 个主体进行的测试/复测范例来建立的,而该方法的实用性是通过将其应用于从正常发育的青少年中获得的 20 个扩散数据集来评估的。

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