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Model-based stationarity filtering of long-term memory data applied to resting-state blood-oxygen-level-dependent signal

Resting-state blood-oxygen-level-dependent (BOLD) signal acquired through functional magnetic resonance imaging is a proxy of neural activity and a key mechanism for assessing neurological conditions. Therefore, practical tools to filter out artefacts that can compromise the assessment are required....

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Autores principales: Bansal, Ishita Rai, Ashourvan, Arian, Bertolero, Maxwell, Bassett, Danielle S., Pequito, Sérgio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9328502/
https://www.ncbi.nlm.nih.gov/pubmed/35895686
http://dx.doi.org/10.1371/journal.pone.0268752
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author Bansal, Ishita Rai
Ashourvan, Arian
Bertolero, Maxwell
Bassett, Danielle S.
Pequito, Sérgio
author_facet Bansal, Ishita Rai
Ashourvan, Arian
Bertolero, Maxwell
Bassett, Danielle S.
Pequito, Sérgio
author_sort Bansal, Ishita Rai
collection PubMed
description Resting-state blood-oxygen-level-dependent (BOLD) signal acquired through functional magnetic resonance imaging is a proxy of neural activity and a key mechanism for assessing neurological conditions. Therefore, practical tools to filter out artefacts that can compromise the assessment are required. On the one hand, a variety of tailored methods to preprocess the data to deal with identified sources of noise (e.g., head motion, heart beating, and breathing, just to mention a few) are in place. But, on the other hand, there might be unknown sources of unstructured noise present in the data. Therefore, to mitigate the effects of such unstructured noises, we propose a model-based filter that explores the statistical properties of the underlying signal (i.e., long-term memory). Specifically, we consider autoregressive fractional integrative process filters. Remarkably, we provide evidence that such processes can model the signals at different regions of interest to attain stationarity. Furthermore, we use a principled analysis where a ground-truth signal with statistical properties similar to the BOLD signal under the injection of noise is retrieved using the proposed filters. Next, we considered preprocessed (i.e., the identified sources of noise removed) resting-state BOLD data of 98 subjects from the Human Connectome Project. Our results demonstrate that the proposed filters decrease the power in the higher frequencies. However, unlike the low-pass filters, the proposed filters do not remove all high-frequency information, instead they preserve process-related higher frequency information. Additionally, we considered four different metrics (power spectrum, functional connectivity using the Pearson’s correlation, coherence, and eigenbrains) to infer the impact of such filter. We provided evidence that whereas the first three keep most of the features of interest from a neuroscience perspective unchanged, the latter exhibits some variations that could be due to the sporadic activity filtered out.
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spelling pubmed-93285022022-07-28 Model-based stationarity filtering of long-term memory data applied to resting-state blood-oxygen-level-dependent signal Bansal, Ishita Rai Ashourvan, Arian Bertolero, Maxwell Bassett, Danielle S. Pequito, Sérgio PLoS One Research Article Resting-state blood-oxygen-level-dependent (BOLD) signal acquired through functional magnetic resonance imaging is a proxy of neural activity and a key mechanism for assessing neurological conditions. Therefore, practical tools to filter out artefacts that can compromise the assessment are required. On the one hand, a variety of tailored methods to preprocess the data to deal with identified sources of noise (e.g., head motion, heart beating, and breathing, just to mention a few) are in place. But, on the other hand, there might be unknown sources of unstructured noise present in the data. Therefore, to mitigate the effects of such unstructured noises, we propose a model-based filter that explores the statistical properties of the underlying signal (i.e., long-term memory). Specifically, we consider autoregressive fractional integrative process filters. Remarkably, we provide evidence that such processes can model the signals at different regions of interest to attain stationarity. Furthermore, we use a principled analysis where a ground-truth signal with statistical properties similar to the BOLD signal under the injection of noise is retrieved using the proposed filters. Next, we considered preprocessed (i.e., the identified sources of noise removed) resting-state BOLD data of 98 subjects from the Human Connectome Project. Our results demonstrate that the proposed filters decrease the power in the higher frequencies. However, unlike the low-pass filters, the proposed filters do not remove all high-frequency information, instead they preserve process-related higher frequency information. Additionally, we considered four different metrics (power spectrum, functional connectivity using the Pearson’s correlation, coherence, and eigenbrains) to infer the impact of such filter. We provided evidence that whereas the first three keep most of the features of interest from a neuroscience perspective unchanged, the latter exhibits some variations that could be due to the sporadic activity filtered out. Public Library of Science 2022-07-27 /pmc/articles/PMC9328502/ /pubmed/35895686 http://dx.doi.org/10.1371/journal.pone.0268752 Text en © 2022 Bansal et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Bansal, Ishita Rai
Ashourvan, Arian
Bertolero, Maxwell
Bassett, Danielle S.
Pequito, Sérgio
Model-based stationarity filtering of long-term memory data applied to resting-state blood-oxygen-level-dependent signal
title Model-based stationarity filtering of long-term memory data applied to resting-state blood-oxygen-level-dependent signal
title_full Model-based stationarity filtering of long-term memory data applied to resting-state blood-oxygen-level-dependent signal
title_fullStr Model-based stationarity filtering of long-term memory data applied to resting-state blood-oxygen-level-dependent signal
title_full_unstemmed Model-based stationarity filtering of long-term memory data applied to resting-state blood-oxygen-level-dependent signal
title_short Model-based stationarity filtering of long-term memory data applied to resting-state blood-oxygen-level-dependent signal
title_sort model-based stationarity filtering of long-term memory data applied to resting-state blood-oxygen-level-dependent signal
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9328502/
https://www.ncbi.nlm.nih.gov/pubmed/35895686
http://dx.doi.org/10.1371/journal.pone.0268752
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