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The community structure of functional brain networks exhibits scale-specific patterns of inter- and intra-subject variability

机译:功能性大脑网络的社区结构表现出专用的间歇变异性的特定规模的模式

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摘要

The network organization of the human brain varies across individuals, changes with development and aging, and differs in disease. Discovering the major dimensions along which this variability is displayed remains a central goal of both neuroscience and clinical medicine. Such efforts can be usefully framed within the context of the brain's modular network organization, which can be assessed quantitatively using computational techniques and extended for the purposes of multi-scale analysis, dimensionality reduction, and biomarker generation. Although the concept of modularity and its utility in describing brain network organization is clear, principled methods for comparing multi-scale communities across individuals and time are surprisingly lacking. Here, we present a method that uses multi-layer networks to simultaneously discover the modular structure of many subjects at once. This method builds upon the well-known multi-layer modularity maximization technique, and provides a viable and principled tool for studying differences in network communities across individuals and within individuals across time. We test this method on two datasets and identify consistent patterns of inter-subject community variability, demonstrating that this variability - which would be undetectable using past approaches - is associated with measures of cognitive performance. In general, the multi-layer, multi-subject framework proposed here represents an advance over current approaches by straigh forwardly mapping community assignments across subjects and holds promise for future investigations of inter-subject community variation in clinical populations or as a result of task constraints.
机译:人类脑的网络组织各种各样的变化,随着发展和老化而变化,疾病不同。发现这种可变性的主要尺寸仍然是神经科学和临床医学的核心目标。这种努力可以在大脑模块化网络组织的背景下是有用的,这可以使用计算技术进行定量评估,并且为多尺度分析,维数减少和生物标志物生成而延伸。虽然模块化的概念及其在描述脑网络组织时的概念是明确的,但用于比较个人和时间的多尺度社区的原则性方法令人惊讶地缺乏。在这里,我们介绍一种使用多层网络同时发现许多科目的模块化结构的方法。该方法基于众所周知的多层模块化最大化技术,并提供了一种可行的和有原则的工具,用于研究各个人的网络社区的差异和跨越时代的个人。我们在两个数据集上测试该方法,并确定对象间群落变异的一致模式,表明这种可变性 - 使用过去的方法无法检测到 - 与认知性能的衡量有关。通常,这里提出的多层多主题框架代表了通过跨对象的Straigh头发映射社区分配的当前方法的进步,并保存了未来对临床群体中的对象间社区变异的未来调查或作为任务约束的结果。

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  • 来源
    《NeuroImage》 |2019年第2019期|共16页
  • 作者单位

    Univ Penn Sch Engn &

    Appl Sci Dept Bioengn 210 South 33rd St Suite 240 Skirkanich Hall;

    Univ Penn Sch Engn &

    Appl Sci Dept Bioengn 210 South 33rd St Suite 240 Skirkanich Hall;

    VISN 17 Ctr Excellence Res Returning War Vet Waco TX 76711 USA;

    Washington Univ Sch Med Dept Neurol St Louis MO 63110 USA;

    Washington Univ Sch Med Dept Neurol St Louis MO 63110 USA;

    Univ Penn Sch Engn &

    Appl Sci Dept Bioengn 210 South 33rd St Suite 240 Skirkanich Hall;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 诊断学;
  • 关键词

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