Cargando…

Improving effect size estimation and statistical power with multi-echo fMRI and its impact on understanding the neural systems supporting mentalizing

Functional magnetic resonance imaging (fMRI) research is routinely criticized for being statistically underpowered due to characteristically small sample sizes and much larger sample sizes are being increasingly recommended. Additionally, various sources of artifact inherent in fMRI data can have de...

Descripción completa

Detalles Bibliográficos
Autores principales: Lombardo, Michael V., Auyeung, Bonnie, Holt, Rosemary J., Waldman, Jack, Ruigrok, Amber N.V., Mooney, Natasha, Bullmore, Edward T., Baron-Cohen, Simon, Kundu, Prantik
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Academic Press 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5102698/
https://www.ncbi.nlm.nih.gov/pubmed/27417345
http://dx.doi.org/10.1016/j.neuroimage.2016.07.022
_version_ 1782466470367723520
author Lombardo, Michael V.
Auyeung, Bonnie
Holt, Rosemary J.
Waldman, Jack
Ruigrok, Amber N.V.
Mooney, Natasha
Bullmore, Edward T.
Baron-Cohen, Simon
Kundu, Prantik
author_facet Lombardo, Michael V.
Auyeung, Bonnie
Holt, Rosemary J.
Waldman, Jack
Ruigrok, Amber N.V.
Mooney, Natasha
Bullmore, Edward T.
Baron-Cohen, Simon
Kundu, Prantik
author_sort Lombardo, Michael V.
collection PubMed
description Functional magnetic resonance imaging (fMRI) research is routinely criticized for being statistically underpowered due to characteristically small sample sizes and much larger sample sizes are being increasingly recommended. Additionally, various sources of artifact inherent in fMRI data can have detrimental impact on effect size estimates and statistical power. Here we show how specific removal of non-BOLD artifacts can improve effect size estimation and statistical power in task-fMRI contexts, with particular application to the social-cognitive domain of mentalizing/theory of mind. Non-BOLD variability identification and removal is achieved in a biophysical and statistically principled manner by combining multi-echo fMRI acquisition and independent components analysis (ME-ICA). Without smoothing, group-level effect size estimates on two different mentalizing tasks were enhanced by ME-ICA at a median rate of 24% in regions canonically associated with mentalizing, while much more substantial boosts (40–149%) were observed in non-canonical cerebellar areas. Effect size boosting occurs via reduction of non-BOLD noise at the subject-level and consequent reductions in between-subject variance at the group-level. Smoothing can attenuate ME-ICA-related effect size improvements in certain circumstances. Power simulations demonstrate that ME-ICA-related effect size enhancements enable much higher-powered studies at traditional sample sizes. Cerebellar effects observed after applying ME-ICA may be unobservable with conventional imaging at traditional sample sizes. Thus, ME-ICA allows for principled design-agnostic non-BOLD artifact removal that can substantially improve effect size estimates and statistical power in task-fMRI contexts. ME-ICA could mitigate some issues regarding statistical power in fMRI studies and enable novel discovery of aspects of brain organization that are currently under-appreciated and not well understood.
format Online
Article
Text
id pubmed-5102698
institution National Center for Biotechnology Information
language English
publishDate 2016
publisher Academic Press
record_format MEDLINE/PubMed
spelling pubmed-51026982016-11-15 Improving effect size estimation and statistical power with multi-echo fMRI and its impact on understanding the neural systems supporting mentalizing Lombardo, Michael V. Auyeung, Bonnie Holt, Rosemary J. Waldman, Jack Ruigrok, Amber N.V. Mooney, Natasha Bullmore, Edward T. Baron-Cohen, Simon Kundu, Prantik Neuroimage Article Functional magnetic resonance imaging (fMRI) research is routinely criticized for being statistically underpowered due to characteristically small sample sizes and much larger sample sizes are being increasingly recommended. Additionally, various sources of artifact inherent in fMRI data can have detrimental impact on effect size estimates and statistical power. Here we show how specific removal of non-BOLD artifacts can improve effect size estimation and statistical power in task-fMRI contexts, with particular application to the social-cognitive domain of mentalizing/theory of mind. Non-BOLD variability identification and removal is achieved in a biophysical and statistically principled manner by combining multi-echo fMRI acquisition and independent components analysis (ME-ICA). Without smoothing, group-level effect size estimates on two different mentalizing tasks were enhanced by ME-ICA at a median rate of 24% in regions canonically associated with mentalizing, while much more substantial boosts (40–149%) were observed in non-canonical cerebellar areas. Effect size boosting occurs via reduction of non-BOLD noise at the subject-level and consequent reductions in between-subject variance at the group-level. Smoothing can attenuate ME-ICA-related effect size improvements in certain circumstances. Power simulations demonstrate that ME-ICA-related effect size enhancements enable much higher-powered studies at traditional sample sizes. Cerebellar effects observed after applying ME-ICA may be unobservable with conventional imaging at traditional sample sizes. Thus, ME-ICA allows for principled design-agnostic non-BOLD artifact removal that can substantially improve effect size estimates and statistical power in task-fMRI contexts. ME-ICA could mitigate some issues regarding statistical power in fMRI studies and enable novel discovery of aspects of brain organization that are currently under-appreciated and not well understood. Academic Press 2016-11-15 /pmc/articles/PMC5102698/ /pubmed/27417345 http://dx.doi.org/10.1016/j.neuroimage.2016.07.022 Text en © 2016 The Authors http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Lombardo, Michael V.
Auyeung, Bonnie
Holt, Rosemary J.
Waldman, Jack
Ruigrok, Amber N.V.
Mooney, Natasha
Bullmore, Edward T.
Baron-Cohen, Simon
Kundu, Prantik
Improving effect size estimation and statistical power with multi-echo fMRI and its impact on understanding the neural systems supporting mentalizing
title Improving effect size estimation and statistical power with multi-echo fMRI and its impact on understanding the neural systems supporting mentalizing
title_full Improving effect size estimation and statistical power with multi-echo fMRI and its impact on understanding the neural systems supporting mentalizing
title_fullStr Improving effect size estimation and statistical power with multi-echo fMRI and its impact on understanding the neural systems supporting mentalizing
title_full_unstemmed Improving effect size estimation and statistical power with multi-echo fMRI and its impact on understanding the neural systems supporting mentalizing
title_short Improving effect size estimation and statistical power with multi-echo fMRI and its impact on understanding the neural systems supporting mentalizing
title_sort improving effect size estimation and statistical power with multi-echo fmri and its impact on understanding the neural systems supporting mentalizing
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5102698/
https://www.ncbi.nlm.nih.gov/pubmed/27417345
http://dx.doi.org/10.1016/j.neuroimage.2016.07.022
work_keys_str_mv AT lombardomichaelv improvingeffectsizeestimationandstatisticalpowerwithmultiechofmrianditsimpactonunderstandingtheneuralsystemssupportingmentalizing
AT auyeungbonnie improvingeffectsizeestimationandstatisticalpowerwithmultiechofmrianditsimpactonunderstandingtheneuralsystemssupportingmentalizing
AT holtrosemaryj improvingeffectsizeestimationandstatisticalpowerwithmultiechofmrianditsimpactonunderstandingtheneuralsystemssupportingmentalizing
AT waldmanjack improvingeffectsizeestimationandstatisticalpowerwithmultiechofmrianditsimpactonunderstandingtheneuralsystemssupportingmentalizing
AT ruigrokambernv improvingeffectsizeestimationandstatisticalpowerwithmultiechofmrianditsimpactonunderstandingtheneuralsystemssupportingmentalizing
AT mooneynatasha improvingeffectsizeestimationandstatisticalpowerwithmultiechofmrianditsimpactonunderstandingtheneuralsystemssupportingmentalizing
AT bullmoreedwardt improvingeffectsizeestimationandstatisticalpowerwithmultiechofmrianditsimpactonunderstandingtheneuralsystemssupportingmentalizing
AT baroncohensimon improvingeffectsizeestimationandstatisticalpowerwithmultiechofmrianditsimpactonunderstandingtheneuralsystemssupportingmentalizing
AT kunduprantik improvingeffectsizeestimationandstatisticalpowerwithmultiechofmrianditsimpactonunderstandingtheneuralsystemssupportingmentalizing