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Optimizing Complexity Measures for fMRI Data: Algorithm, Artifact, and Sensitivity

INTRODUCTION: Complexity in the brain has been well-documented at both neuronal and hemodynamic scales, with increasing evidence supporting its use in sensitively differentiating between mental states and disorders. However, application of complexity measures to fMRI time-series, which are short, sp...

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Autores principales: Rubin, Denis, Fekete, Tomer, Mujica-Parodi, Lilianne R.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3660309/
https://www.ncbi.nlm.nih.gov/pubmed/23700424
http://dx.doi.org/10.1371/journal.pone.0063448
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author Rubin, Denis
Fekete, Tomer
Mujica-Parodi, Lilianne R.
author_facet Rubin, Denis
Fekete, Tomer
Mujica-Parodi, Lilianne R.
author_sort Rubin, Denis
collection PubMed
description INTRODUCTION: Complexity in the brain has been well-documented at both neuronal and hemodynamic scales, with increasing evidence supporting its use in sensitively differentiating between mental states and disorders. However, application of complexity measures to fMRI time-series, which are short, sparse, and have low signal/noise, requires careful modality-specific optimization. METHODS: Here we use both simulated and real data to address two fundamental issues: choice of algorithm and degree/type of signal processing. Methods were evaluated with regard to resilience to acquisition artifacts common to fMRI as well as detection sensitivity. Detection sensitivity was quantified in terms of grey-white matter contrast and overlap with activation. We additionally investigated the variation of complexity with activation and emotional content, optimal task length, and the degree to which results scaled with scanner using the same paradigm with two 3T magnets made by different manufacturers. Methods for evaluating complexity were: power spectrum, structure function, wavelet decomposition, second derivative, rescaled range, Higuchi’s estimate of fractal dimension, aggregated variance, and detrended fluctuation analysis. To permit direct comparison across methods, all results were normalized to Hurst exponents. RESULTS: Power-spectrum, Higuchi’s fractal dimension, and generalized Hurst exponent based estimates were most successful by all criteria; the poorest-performing measures were wavelet, detrended fluctuation analysis, aggregated variance, and rescaled range. CONCLUSIONS: Functional MRI data have artifacts that interact with complexity calculations in nontrivially distinct ways compared to other physiological data (such as EKG, EEG) for which these measures are typically used. Our results clearly demonstrate that decisions regarding choice of algorithm, signal processing, time-series length, and scanner have a significant impact on the reliability and sensitivity of complexity estimates.
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spelling pubmed-36603092013-05-22 Optimizing Complexity Measures for fMRI Data: Algorithm, Artifact, and Sensitivity Rubin, Denis Fekete, Tomer Mujica-Parodi, Lilianne R. PLoS One Research Article INTRODUCTION: Complexity in the brain has been well-documented at both neuronal and hemodynamic scales, with increasing evidence supporting its use in sensitively differentiating between mental states and disorders. However, application of complexity measures to fMRI time-series, which are short, sparse, and have low signal/noise, requires careful modality-specific optimization. METHODS: Here we use both simulated and real data to address two fundamental issues: choice of algorithm and degree/type of signal processing. Methods were evaluated with regard to resilience to acquisition artifacts common to fMRI as well as detection sensitivity. Detection sensitivity was quantified in terms of grey-white matter contrast and overlap with activation. We additionally investigated the variation of complexity with activation and emotional content, optimal task length, and the degree to which results scaled with scanner using the same paradigm with two 3T magnets made by different manufacturers. Methods for evaluating complexity were: power spectrum, structure function, wavelet decomposition, second derivative, rescaled range, Higuchi’s estimate of fractal dimension, aggregated variance, and detrended fluctuation analysis. To permit direct comparison across methods, all results were normalized to Hurst exponents. RESULTS: Power-spectrum, Higuchi’s fractal dimension, and generalized Hurst exponent based estimates were most successful by all criteria; the poorest-performing measures were wavelet, detrended fluctuation analysis, aggregated variance, and rescaled range. CONCLUSIONS: Functional MRI data have artifacts that interact with complexity calculations in nontrivially distinct ways compared to other physiological data (such as EKG, EEG) for which these measures are typically used. Our results clearly demonstrate that decisions regarding choice of algorithm, signal processing, time-series length, and scanner have a significant impact on the reliability and sensitivity of complexity estimates. Public Library of Science 2013-05-21 /pmc/articles/PMC3660309/ /pubmed/23700424 http://dx.doi.org/10.1371/journal.pone.0063448 Text en © 2013 Rubin et al http://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are properly credited.
spellingShingle Research Article
Rubin, Denis
Fekete, Tomer
Mujica-Parodi, Lilianne R.
Optimizing Complexity Measures for fMRI Data: Algorithm, Artifact, and Sensitivity
title Optimizing Complexity Measures for fMRI Data: Algorithm, Artifact, and Sensitivity
title_full Optimizing Complexity Measures for fMRI Data: Algorithm, Artifact, and Sensitivity
title_fullStr Optimizing Complexity Measures for fMRI Data: Algorithm, Artifact, and Sensitivity
title_full_unstemmed Optimizing Complexity Measures for fMRI Data: Algorithm, Artifact, and Sensitivity
title_short Optimizing Complexity Measures for fMRI Data: Algorithm, Artifact, and Sensitivity
title_sort optimizing complexity measures for fmri data: algorithm, artifact, and sensitivity
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3660309/
https://www.ncbi.nlm.nih.gov/pubmed/23700424
http://dx.doi.org/10.1371/journal.pone.0063448
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