Farahani Farzad V, Karwowski Waldemar, Lighthall Nichole R
Computational Neuroergonomics Laboratory, Department of Industrial Engineering and Management Systems, University of Central Florida, Orlando, FL, United States.
Department of Psychology, University of Central Florida, Orlando, FL, United States.
Front Neurosci. 2019 Jun 6;13:585. doi: 10.3389/fnins.2019.00585. eCollection 2019.
Analysis of the human connectome using functional magnetic resonance imaging (fMRI) started in the mid-1990s and attracted increasing attention in attempts to discover the neural underpinnings of human cognition and neurological disorders. In general, brain connectivity patterns from fMRI data are classified as statistical dependencies (functional connectivity) or causal interactions (effective connectivity) among various neural units. Computational methods, especially graph theory-based methods, have recently played a significant role in understanding brain connectivity architecture. Thanks to the emergence of graph theoretical analysis, the main purpose of the current paper is to systematically review how brain properties can emerge through the interactions of distinct neuronal units in various cognitive and neurological applications using fMRI. Moreover, this article provides an overview of the existing functional and effective connectivity methods used to construct the brain network, along with their advantages and pitfalls. In this systematic review, the databases Science Direct, Scopus, arXiv, Google Scholar, IEEE Xplore, PsycINFO, PubMed, and SpringerLink are employed for exploring the evolution of computational methods in human brain connectivity from 1990 to the present, focusing on graph theory. The Cochrane Collaboration's tool was used to assess the risk of bias in individual studies. Our results show that graph theory and its implications in cognitive neuroscience have attracted the attention of researchers since 2009 (as the Human Connectome Project launched), because of their prominent capability in characterizing the behavior of complex brain systems. Although graph theoretical approach can be generally applied to either functional or effective connectivity patterns during rest or task performance, to date, most articles have focused on the resting-state functional connectivity. This review provides an insight into how to utilize graph theoretical measures to make neurobiological inferences regarding the mechanisms underlying human cognition and behavior as well as different brain disorders.
利用功能磁共振成像(fMRI)对人类连接组进行分析始于20世纪90年代中期,并在探索人类认知和神经疾病的神经基础的尝试中受到越来越多的关注。一般来说,来自fMRI数据的脑连接模式被分类为各种神经单元之间的统计依赖性(功能连接)或因果相互作用(有效连接)。计算方法,特别是基于图论的方法,最近在理解脑连接结构方面发挥了重要作用。由于图论分析的出现,本文的主要目的是系统地回顾在各种认知和神经应用中,如何通过使用fMRI的不同神经元单元之间的相互作用来产生脑特性。此外,本文还概述了用于构建脑网络的现有功能连接和有效连接方法,以及它们的优点和缺陷。在这篇系统综述中,使用了科学Direct、Scopus、arXiv、谷歌学术、IEEE Xplore、PsycINFO、PubMed和SpringerLink等数据库来探索1990年至今人类脑连接中计算方法的演变,重点是图论。Cochrane协作组织的工具被用于评估个体研究中的偏倚风险。我们的结果表明,自2009年(人类连接组计划启动)以来,图论及其在认知神经科学中的应用因其在表征复杂脑系统行为方面的突出能力而受到研究人员的关注。尽管图论方法通常可以应用于静息或任务执行期间的功能连接或有效连接模式,但迄今为止,大多数文章都集中在静息态功能连接上。这篇综述提供了关于如何利用图论测量来对人类认知和行为以及不同脑疾病背后的机制进行神经生物学推断的见解。