Optimizing brain networks topologies using multi-objective evolutionary computation

Santana, Roberto and Bielza Lozoya, María Concepción and Larrañaga Múgica, Pedro María (2011). Optimizing brain networks topologies using multi-objective evolutionary computation. "Neuroinformatics", v. 9 (n. 1); pp. 3-19. ISSN 1559-0089. https://doi.org/10.1007/s12021-010-9085-7.

Description

Title: Optimizing brain networks topologies using multi-objective evolutionary computation
Author/s:
  • Santana, Roberto
  • Bielza Lozoya, María Concepción
  • Larrañaga Múgica, Pedro María
Item Type: Article
Título de Revista/Publicación: Neuroinformatics
Date: September 2011
ISSN: 1559-0089
Volume: 9
Subjects:
Freetext Keywords: Brain networks, Evolutionary algorithm, Network motifs, Multi-objective optimization, Network optimization
Faculty: Facultad de Informática (UPM)
Department: Inteligencia Artificial
Creative Commons Licenses: Recognition - No derivative works - Non commercial

Full text

[thumbnail of LARRANAGA_2011_09_B.pdf] PDF - Requires a PDF viewer, such as GSview, Xpdf or Adobe Acrobat Reader
Download (3MB)

Abstract

The analysis of brain network topological features has served to better understand these networks and reveal particular characteristics of their functional behavior. The distribution of brain network motifs is particularly useful for detecting and describing differences between brain networks and random and computationally optimized artificial networks. In this paper we use a multi-objective evolutionary optimization approach to generate optimized artificial networks that have a number of topological features resembling brain networks. The Pareto set approximation of the optimized networks is used to extract network descriptors that are compared to brain and random network descriptors. To analyze the networks, the clustering coefficient, the average path length, the modularity and the betweenness centrality are computed. We argue that the topological complexity of a brain network can be estimated using the number of evaluations needed by an optimization algorithm to output artificial networks of similar complexity. For the analyzed network examples, our results indicate that while original brain networks have a reduced structural motif number and a high functional motif number, they are not optimal with respect to these two topological features. We also investigate the correlation between the structural and functional motif numbers, the average path length and the clustering coefficient in random, optimized and brain networks.

Funding Projects

Type
Code
Acronym
Leader
Title
Government of Spain
TIN-2008-06815-C02-02
Unspecified
Unspecified
Unspecified
Government of Spain
TIN2007-62626
Unspecified
Unspecified
Unspecified
Government of Spain
2010 - CSD2007-00018
Unspecified
Unspecified
Unspecified

More information

Item ID: 72863
DC Identifier: https://oa.upm.es/72863/
OAI Identifier: oai:oa.upm.es:72863
DOI: 10.1007/s12021-010-9085-7
Official URL: https://link.springer.com/article/10.1007/s12021-0...
Deposited by: Biblioteca Facultad de Informatica
Deposited on: 15 Mar 2023 16:13
Last Modified: 15 Mar 2023 16:13
  • Logo InvestigaM (UPM)
  • Logo GEOUP4
  • Logo Open Access
  • Open Access
  • Logo Sherpa/Romeo
    Check whether the anglo-saxon journal in which you have published an article allows you to also publish it under open access.
  • Logo Dulcinea
    Check whether the spanish journal in which you have published an article allows you to also publish it under open access.
  • Logo de Recolecta
  • Logo del Observatorio I+D+i UPM
  • Logo de OpenCourseWare UPM