Hyperedge bundling: Data, source code, and precautions to modeling-accuracy bias to synchrony estimates
It has not been well documented that MEG/EEG functional connectivity graphs estimated with zero-lag-free interaction metrics are severely confounded by a multitude of spurious interactions (SI), i.e., the false-positive “ghosts” of true interactions [1,2]. These SI are caused by the multivariate lin...
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doaj-19b6ac375aae48d3a64bf45f03682a1c2020-11-24T21:44:14ZengElsevierData in Brief2352-34092018-06-0118262275Hyperedge bundling: Data, source code, and precautions to modeling-accuracy bias to synchrony estimatesSheng H. Wang0Muriel Lobier1Felix Siebenhühner2Tuomas Puoliväli3Satu Palva4J. Matias Palva5Neuroscience Center, HiLife, University of Helsinki, Finland; Doctoral Programme Brain & Mind, University of Helsinki, Finland; BioMag laboratory, HUS Medical Imaging Center, Helsinki, Finland; Corresponding author at: Neuroscience Center, HiLife, University of Helsinki, Finland.Neuroscience Center, HiLife, University of Helsinki, FinlandNeuroscience Center, HiLife, University of Helsinki, Finland; Doctoral Programme Brain & Mind, University of Helsinki, FinlandNeuroscience Center, HiLife, University of Helsinki, Finland; Doctoral Programme Brain & Mind, University of Helsinki, FinlandNeuroscience Center, HiLife, University of Helsinki, Finland; BioMag laboratory, HUS Medical Imaging Center, Helsinki, FinlandNeuroscience Center, HiLife, University of Helsinki, FinlandIt has not been well documented that MEG/EEG functional connectivity graphs estimated with zero-lag-free interaction metrics are severely confounded by a multitude of spurious interactions (SI), i.e., the false-positive “ghosts” of true interactions [1,2]. These SI are caused by the multivariate linear mixing between sources, and thus they pose a severe challenge to the validity of connectivity analysis. Due to the complex nature of signal mixing and the SI problem, there is a need to intuitively demonstrate how the SI are discovered and how they can be attenuated using a novel approach that we termed hyperedge bundling. Here we provide a dataset with software with which the readers can perform simulations in order to better understand the theory and the solution to SI. We include the supplementary material of [1] that is not directly relevant to the hyperedge bundling per se but reflects important properties of the MEG source model and the functional connectivity graphs. For example, the gyri of dorsal-lateral cortices are the most accurately modeled areas; the sulci of inferior temporal, frontal and the insula have the least modeling accuracy. Importantly, we found the interaction estimates are heavily biased by the modeling accuracy between regions, which means the estimates cannot be straightforwardly interpreted as the coupling between brain regions. This raise a red flag that the conventional method of thresholding graphs by estimate values is rather suboptimal: because the measured topology of the graph reflects the geometric property of source-model instead of the cortical interactions under investigation.http://www.sciencedirect.com/science/article/pii/S235234091830221X |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Sheng H. Wang Muriel Lobier Felix Siebenhühner Tuomas Puoliväli Satu Palva J. Matias Palva |
spellingShingle |
Sheng H. Wang Muriel Lobier Felix Siebenhühner Tuomas Puoliväli Satu Palva J. Matias Palva Hyperedge bundling: Data, source code, and precautions to modeling-accuracy bias to synchrony estimates Data in Brief |
author_facet |
Sheng H. Wang Muriel Lobier Felix Siebenhühner Tuomas Puoliväli Satu Palva J. Matias Palva |
author_sort |
Sheng H. Wang |
title |
Hyperedge bundling: Data, source code, and precautions to modeling-accuracy bias to synchrony estimates |
title_short |
Hyperedge bundling: Data, source code, and precautions to modeling-accuracy bias to synchrony estimates |
title_full |
Hyperedge bundling: Data, source code, and precautions to modeling-accuracy bias to synchrony estimates |
title_fullStr |
Hyperedge bundling: Data, source code, and precautions to modeling-accuracy bias to synchrony estimates |
title_full_unstemmed |
Hyperedge bundling: Data, source code, and precautions to modeling-accuracy bias to synchrony estimates |
title_sort |
hyperedge bundling: data, source code, and precautions to modeling-accuracy bias to synchrony estimates |
publisher |
Elsevier |
series |
Data in Brief |
issn |
2352-3409 |
publishDate |
2018-06-01 |
description |
It has not been well documented that MEG/EEG functional connectivity graphs estimated with zero-lag-free interaction metrics are severely confounded by a multitude of spurious interactions (SI), i.e., the false-positive “ghosts” of true interactions [1,2]. These SI are caused by the multivariate linear mixing between sources, and thus they pose a severe challenge to the validity of connectivity analysis. Due to the complex nature of signal mixing and the SI problem, there is a need to intuitively demonstrate how the SI are discovered and how they can be attenuated using a novel approach that we termed hyperedge bundling. Here we provide a dataset with software with which the readers can perform simulations in order to better understand the theory and the solution to SI. We include the supplementary material of [1] that is not directly relevant to the hyperedge bundling per se but reflects important properties of the MEG source model and the functional connectivity graphs. For example, the gyri of dorsal-lateral cortices are the most accurately modeled areas; the sulci of inferior temporal, frontal and the insula have the least modeling accuracy. Importantly, we found the interaction estimates are heavily biased by the modeling accuracy between regions, which means the estimates cannot be straightforwardly interpreted as the coupling between brain regions. This raise a red flag that the conventional method of thresholding graphs by estimate values is rather suboptimal: because the measured topology of the graph reflects the geometric property of source-model instead of the cortical interactions under investigation. |
url |
http://www.sciencedirect.com/science/article/pii/S235234091830221X |
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