Brain Network Analysis: Separating Cost from Topology Using Cost-Integration

Type: Article

Publication Date: 2011-07-28

Citations: 196

DOI: https://doi.org/10.1371/journal.pone.0021570

Abstract

A statistically principled way of conducting brain network analysis is still lacking. Comparison of different populations of brain networks is hard because topology is inherently dependent on wiring cost, where cost is defined as the number of edges in an unweighted graph. In this paper, we evaluate the benefits and limitations associated with using cost-integrated topological metrics. Our focus is on comparing populations of weighted undirected graphs that differ in mean association weight, using global efficiency. Our key result shows that integrating over cost is equivalent to controlling for any monotonic transformation of the weight set of a weighted graph. That is, when integrating over cost, we eliminate the differences in topology that may be due to a monotonic transformation of the weight set. Our result holds for any unweighted topological measure, and for any choice of distribution over cost levels. Cost-integration is therefore helpful in disentangling differences in cost from differences in topology. By contrast, we show that the use of the weighted version of a topological metric is generally not a valid approach to this problem. Indeed, we prove that, under weak conditions, the use of the weighted version of global efficiency is equivalent to simply comparing weighted costs. Thus, we recommend the reporting of (i) differences in weighted costs and (ii) differences in cost-integrated topological measures with respect to different distributions over the cost domain. We demonstrate the application of these techniques in a re-analysis of an fMRI working memory task. We also provide a Monte Carlo method for approximating cost-integrated topological measures. Finally, we discuss the limitations of integrating topology over cost, which may pose problems when some weights are zero, when multiplicities exist in the ranks of the weights, and when one expects subtle cost-dependent topological differences, which could be masked by cost-integration.

Locations

  • PLoS ONE - View - PDF
  • PubMed Central - View
  • arXiv (Cornell University) - View - PDF
  • Warwick Research Archive Portal (University of Warwick) - View - PDF
  • Europe PMC (PubMed Central) - View - PDF
  • DOAJ (DOAJ: Directory of Open Access Journals) - View
  • PubMed - View
  • DataCite API - View

Similar Works

Action Title Year Authors
+ Weighted Network Analysis: Separating Cost from Topology using Cost-integration 2011 Cedric E. Ginestet
Thomas E. Nichols
Ed T. Bullmore. Andrew Simmons
+ Statistical Network Analysis for Functional MRI: Summary Networks and Group Comparisons 2013 Cedric E. Ginestet
Arnaud Fournel
Andrew Simmons
+ Statistical Network Analysis for Functional MRI: Summary Networks and Group Comparisons 2013 Cedric E. Ginestet
Arnaud Fournel
Andrew Simmons
+ PDF Chat Statistical network analysis for functional MRI: summary networks and group comparisons 2014 Cedric E. Ginestet
Arnaud Fournel
Andrew Simmons
+ Small-World Brain Networks Revisited 2016 Danielle S. Bassett
Edward T. Bullmore
+ Small-World Brain Networks Revisited 2016 Danielle S. Bassett
Edward T. Bullmore
+ PDF Chat Small-World Brain Networks Revisited 2016 Danielle S. Bassett
Edward T. Bullmore
+ A Framework for the Evaluation of Complete Weighted Network Topology in EEG Functional Connectivity 2016 Keith Smith
Javier Escudero
+ Bridging Global and Local Topology in Whole-brain Networks using the Network Statistic Jackknife 2018 Teague R. Henry
Kelly A. Duffy
Marc D. Rudolph
Mary Beth Nebel
Stewart H. Mostofsky
Jessica R. Cohen
+ The modular organization of human anatomical brain networks: Accounting for the cost of wiring 2016 Richard F. Betzel
John D. Medaglia
Lia Papadopoulos
Graham L. Baum
Ruben C. Gur
Raquel E. Gur
David R. Roalf
Theodore D. Satterthwaite
Danielle S. Bassett
+ The modular organization of human anatomical brain networks: Accounting for the cost of wiring 2016 Richard F. Betzel
John D. Medaglia
Lia Papadopoulos
Graham L. Baum
Ruben C. Gur
Raquel E. Gur
David R. Roalf
Theodore D. Satterthwaite
Danielle S. Bassett
+ PDF Chat The modular organization of human anatomical brain networks: Accounting for the cost of wiring 2017 Richard F. Betzel
John D. Medaglia
Lia Papadopoulos
Graham L. Baum
Ruben C. Gur
Raquel E. Gur
David R. Roalf
Theodore D. Satterthwaite
Danielle S. Bassett
+ Dynamic Graph Metrics: Tutorial, Toolbox, and Tale 2017 Ann E. Sizemore
Danielle S. Bassett
+ Dynamic Graph Metrics: Tutorial, Toolbox, and Tale 2017 Ann E. Sizemore
Danielle S. Bassett
+ Dynamic graph metrics: Tutorial, toolbox, and tale 2017 Ann E. Sizemore
Danielle S. Bassett
+ PDF Chat Bridging global and local topology in whole-brain networks using the network statistic jackknife 2019 Teague R. Henry
Kelly A. Duffy
Marc D. Rudolph
Mary Beth Nebel
Stewart H. Mostofsky
Jessica R. Cohen
+ Topological Brain Network Distances 2018 Moo K. Chung
Hyekyoung Lee
Andrey Gritsenko
Alex DiChristofano
Dustin Pluta
Hernando Ombao
Victor Solo
+ PDF Chat Analyzing complex functional brain networks: Fusing statistics and network science to understand the brain 2013 Sean L. Simpson
F. DuBois Bowman
Paul J. Laurienti
+ Reviews: Topological Distances and Losses for Brain Networks 2021 Moo K. Chung
Alexander Smith
Gary Shiu
+ A Framework for the Evaluation of the Hierarchical Complexity of Network Topology in EEG Functional Connectivity 2016 Keith Smith
Javier Escudero

Works That Cite This (29)

Action Title Year Authors
+ Recursive Shortest Path Algorithm with Application to Density-integration of Weighted Graphs 2011 Cedric E. Ginestet
Andrew Simmons
+ PDF Chat Associations between Neighborhood SES and Functional Brain Network Development 2019 Ursula A. Tooley
Allyson P. Mackey
Rastko Ćirić
Kosha Ruparel
Tyler M. Moore
Ruben C. Gur
Raquel E. Gur
Theodore D. Satterthwaite
Danielle S. Bassett
+ PDF Chat Small-World Brain Networks Revisited 2016 Danielle S. Bassett
Edward T. Bullmore
+ PDF Chat Accounting for the complex hierarchical topology of EEG phase-based functional connectivity in network binarisation 2017 Keith Smith
Daniel AbĂĄsolo
Javier Escudero
+ Topological Learning for Brain Networks. 2020 Tananun Songdechakraiwut
Moo K. Chung
+ PDF Chat A two-part mixed-effects modeling framework for analyzing whole-brain network data 2015 Sean L. Simpson
Paul J. Laurienti
+ Two's company, three (or more) is a simplex: Algebraic-topological tools for understanding higher-order structure in neural data 2016 Chad Giusti
Robert Ghrist
Danielle S. Bassett
+ PDF Chat Topological Learning for Brain Networks 2020 Tananun Songdechakraiwut
Moo K. Chung
+ Group analysis of self-organizing maps based on functional MRI using restricted Frechet means 2013 Arnaud Fournel
Emanuelle Reynaud
Michael Brammer
Andrew Simmons
Cedric E. Ginestet
+ Combined MEG and fMRI Exponential Random Graph Modeling for inferring functional Brain Connectivity 2018 Roseric Azondékon
Zachary J. Harper
Charles M. Welzig