Network-based statistic: Identifying differences in brain networks

被引:1954
|
作者
Zalesky, Andrew [1 ,2 ]
Fornito, Alex [1 ,3 ]
Bullmore, Edward T. [3 ]
机构
[1] Univ Melbourne & Melbourne Hlth, Dept Psychiat, Melbourne Neuropsychiat Ctr, Melbourne, Vic, Australia
[2] Univ Melbourne, Melbourne Sch Engn, Dept Elect & Elect Engn, Melbourne, Vic 3010, Australia
[3] Univ Cambridge, Dept Psychiat, Behav & Clin Neurosci Inst, Cambridge, England
基金
澳大利亚研究理事会; 英国医学研究理事会;
关键词
Network; Graph; Functional connectivity; Structural connectivity; Resting-state fMRI; Diffusion MRI; Clustering; Schizophrenia; STATE FUNCTIONAL CONNECTIVITY; SMALL-WORLD; CORTICAL NETWORKS; TOPOLOGICAL PATTERNS; STRUCTURAL NETWORKS; ANATOMICAL NETWORKS; ORGANIZATION; PERMUTATION; VOXEL; EFFICIENCY;
D O I
10.1016/j.neuroimage.2010.06.041
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Large-scale functional or structural brain connectivity can be modeled as a network, or graph. This paper presents a statistical approach to identify connections in such a graph that may be associated with a diagnostic status in case-control studies, changing psychological contexts in task-based studies, or correlations with various cognitive and behavioral measures. The new approach, called the network-based statistic (NBS), is a method to control the family-wise error rate (in the weak sense) when mass-univariate testing is performed at every connection comprising the graph. To potentially offer a substantial gain in power, the NBS exploits the extent to which the connections comprising the contrast or effect of interest are interconnected. The NBS is based on the principles underpinning traditional cluster-based thresholding of statistical parametric maps. The purpose of this paper is to: (i) introduce the NBS for the first time; (ii) evaluate its power with the use of receiver operating characteristic (ROC) curves; and, (iii) demonstrate its utility with application to a real case-control study involving a group of people with schizophrenia for which resting-state functional MRI data were acquired. The NBS identified a expansive dysconnected subnetwork in the group with schizophrenia, primarily comprising fronto-temporal and occipito-temporal dysconnections, whereas a mass-univariate analysis controlled with the false discovery rate failed to identify a subnetwork. (C) 2010 Elsevier Inc. All rights reserved.
引用
收藏
页码:1197 / 1207
页数:11
相关论文
共 50 条
  • [31] Brain Functional Effects of Psychopharmacological Treatments in Schizophrenia: A Network-based Functional Perspective Beyond Neurotransmitter Systems
    De Rossi, Pietro
    Chiapponi, Chiara
    Spalletta, Gianfranco
    CURRENT NEUROPHARMACOLOGY, 2015, 13 (04) : 435 - 444
  • [32] Identifying driving factors of urban digital financial network-based on machine learning methods
    Huang, Xiaojie
    Liao, Gaoke
    ELECTRONIC RESEARCH ARCHIVE, 2022, 30 (12): : 4716 - 4739
  • [33] Optimized interpretable generalized additive neural network-based human brain diagnosis using medical imaging
    Kathirvel, N.
    Sasidhar, A.
    Rajasekaran, M.
    Kumar, K. Saravana
    KNOWLEDGE-BASED SYSTEMS, 2025, 309
  • [34] Application of Graph Theory for Identifying Connectivity Patterns in Human Brain Networks: A Systematic Review
    Farahani, Farzad, V
    Karwowski, Waldemar
    Lighthall, Nichole R.
    FRONTIERS IN NEUROSCIENCE, 2019, 13
  • [35] Brain network profiling defines functionally specialized cortical networks
    Di Plinio, Simone
    Ebisch, Sjoerd J. H.
    HUMAN BRAIN MAPPING, 2018, 39 (12) : 4689 - 4706
  • [36] Water-controlled ecosystems as complex networks: Evaluation of network-based approaches to quantify patterns of connectivity
    Tiwari, Shubham
    Brizuela, Sonia Recinos
    Hein, Thomas
    Turnbull, Laura
    Wainwright, John
    Funk, Andrea
    ECOHYDROLOGY, 2024, 17 (07)
  • [37] The discovery of population differences in network community structure: New methods and applications to brain functional networks in schizophrenia
    Alexander-Bloch, Aaron
    Lambiotte, Renaud
    Roberts, Ben
    Giedd, Jay
    Gogtay, Nitin
    Bullmore, Edward T.
    NEUROIMAGE, 2012, 59 (04) : 3889 - 3900
  • [38] Network attributes describe a similarity between deep neural networks and large scale brain networks
    Takagi, Kosuke
    JOURNAL OF COMPLEX NETWORKS, 2020, 8 (05)
  • [39] Breakthroughs and challenges for generating brain network-based biomarkers of treatment response in depression
    Prompiengchai, Sapolnach
    Dunlop, Katharine
    NEUROPSYCHOPHARMACOLOGY, 2024, 50 (01) : 230 - 245
  • [40] Identifying the module structure of swarms using a new framework of network-based time series clustering
    Gu, Kongjing
    Mao, Ziyang
    Duan, Xiaojun
    Wu, Guanlin
    Yan, Liang
    ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2021, 101