Comparative Analysis of Parallel Brain Activity Mapping Algorithms for High Resolution Brain Models

This paper proposes a comparative analysis between regular and parallel versions of FISTA and Tikhonov-like optimizations for solving the EEG brain mapping problem. Such comparison is performed in terms of computational time reduction and estimation error achieved by the parallelized methods. Two br...

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Main Authors: Cristhian D. Molina-Machado, Ernesto Cuartas, Juan D. Martínez-Vargas, Eduardo Giraldo
Format: Article
Language:English
Published: Instituto Tecnológico Metropolitano 2019-09-01
Series:TecnoLógicas
Subjects:
Online Access:https://revistas.itm.edu.co/index.php/tecnologicas/article/view/1344
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spelling doaj-f95c01e8df864a088712ae98aa2ea9df2020-11-25T01:19:09ZengInstituto Tecnológico MetropolitanoTecnoLógicas0123-77992256-53372019-09-01224623324310.22430/22565337.13441344Comparative Analysis of Parallel Brain Activity Mapping Algorithms for High Resolution Brain ModelsCristhian D. Molina-Machado0Ernesto Cuartas1Juan D. Martínez-Vargas2Eduardo Giraldo3Universidad Tecnológica de Pereira, ColombiaKU Leuven University, BélgicaInstituto Tecnológico Metropolitano, ColombiaUniversidad Tecnológica de Pereira, ColombiaThis paper proposes a comparative analysis between regular and parallel versions of FISTA and Tikhonov-like optimizations for solving the EEG brain mapping problem. Such comparison is performed in terms of computational time reduction and estimation error achieved by the parallelized methods. Two brain models (high- and low-resolution) are used to compare the algorithms. As a result, it can be seen that, if the number of parallel processes increases, computational time decreases significantly for all the head models used in this work, without compromising the reconstruction quality. In addition, it can be concluded that the use of a high-resolution head model produces an improvement in any source reconstruction method in terms of spatial resolution.https://revistas.itm.edu.co/index.php/tecnologicas/article/view/1344parallelized algorithmsoptimizationbrain mappingelectroencephalography
collection DOAJ
language English
format Article
sources DOAJ
author Cristhian D. Molina-Machado
Ernesto Cuartas
Juan D. Martínez-Vargas
Eduardo Giraldo
spellingShingle Cristhian D. Molina-Machado
Ernesto Cuartas
Juan D. Martínez-Vargas
Eduardo Giraldo
Comparative Analysis of Parallel Brain Activity Mapping Algorithms for High Resolution Brain Models
TecnoLógicas
parallelized algorithms
optimization
brain mapping
electroencephalography
author_facet Cristhian D. Molina-Machado
Ernesto Cuartas
Juan D. Martínez-Vargas
Eduardo Giraldo
author_sort Cristhian D. Molina-Machado
title Comparative Analysis of Parallel Brain Activity Mapping Algorithms for High Resolution Brain Models
title_short Comparative Analysis of Parallel Brain Activity Mapping Algorithms for High Resolution Brain Models
title_full Comparative Analysis of Parallel Brain Activity Mapping Algorithms for High Resolution Brain Models
title_fullStr Comparative Analysis of Parallel Brain Activity Mapping Algorithms for High Resolution Brain Models
title_full_unstemmed Comparative Analysis of Parallel Brain Activity Mapping Algorithms for High Resolution Brain Models
title_sort comparative analysis of parallel brain activity mapping algorithms for high resolution brain models
publisher Instituto Tecnológico Metropolitano
series TecnoLógicas
issn 0123-7799
2256-5337
publishDate 2019-09-01
description This paper proposes a comparative analysis between regular and parallel versions of FISTA and Tikhonov-like optimizations for solving the EEG brain mapping problem. Such comparison is performed in terms of computational time reduction and estimation error achieved by the parallelized methods. Two brain models (high- and low-resolution) are used to compare the algorithms. As a result, it can be seen that, if the number of parallel processes increases, computational time decreases significantly for all the head models used in this work, without compromising the reconstruction quality. In addition, it can be concluded that the use of a high-resolution head model produces an improvement in any source reconstruction method in terms of spatial resolution.
topic parallelized algorithms
optimization
brain mapping
electroencephalography
url https://revistas.itm.edu.co/index.php/tecnologicas/article/view/1344
work_keys_str_mv AT cristhiandmolinamachado comparativeanalysisofparallelbrainactivitymappingalgorithmsforhighresolutionbrainmodels
AT ernestocuartas comparativeanalysisofparallelbrainactivitymappingalgorithmsforhighresolutionbrainmodels
AT juandmartinezvargas comparativeanalysisofparallelbrainactivitymappingalgorithmsforhighresolutionbrainmodels
AT eduardogiraldo comparativeanalysisofparallelbrainactivitymappingalgorithmsforhighresolutionbrainmodels
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