Fighting or embracing multiplicity in neuroimaging? neighborhood leverage versus global calibration

Neuroimaging faces the daunting challenge of multiple testing – an instance of multiplicity – that is associated with two other issues to some extent: low inference efficiency and poor reproducibility. Typically, the same statistical model is applied to each spatial unit independently in the approac...

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Main Authors: Gang Chen, Paul A. Taylor, Robert W. Cox, Luiz Pessoa
Format: Article
Language:English
Published: Elsevier 2020-02-01
Series:NeuroImage
Online Access:http://www.sciencedirect.com/science/article/pii/S1053811919309115
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spelling doaj-70bc097cf12d492b8454b62b4ae59bbd2020-11-25T02:44:53ZengElsevierNeuroImage1095-95722020-02-01206116320Fighting or embracing multiplicity in neuroimaging? neighborhood leverage versus global calibrationGang Chen0Paul A. Taylor1Robert W. Cox2Luiz Pessoa3Scientific and Statistical Computing Core, National Institute of Mental Health, USA; Corresponding author.Scientific and Statistical Computing Core, National Institute of Mental Health, USAScientific and Statistical Computing Core, National Institute of Mental Health, USADepartment of Psychology, University of Maryland, College Park, USA; Department of Electrical and Computer Engineering, University of Maryland, College Park, USA; Maryland Neuroimaging Center, University of Maryland, College Park, USANeuroimaging faces the daunting challenge of multiple testing – an instance of multiplicity – that is associated with two other issues to some extent: low inference efficiency and poor reproducibility. Typically, the same statistical model is applied to each spatial unit independently in the approach of massively univariate modeling. In dealing with multiplicity, the general strategy employed in the field is the same regardless of the specifics: trust the local “unbiased” effect estimates while adjusting the extent of statistical evidence at the global level. However, in this approach, modeling efficiency is compromised because each spatial unit (e.g., voxel, region, matrix element) is treated as an isolated and independent entity during massively univariate modeling. In addition, the required step of multiple testing “correction” by taking into consideration spatial relatedness, or neighborhood leverage, can only partly recoup statistical efficiency, resulting in potentially excessive penalization as well as arbitrariness due to thresholding procedures. Moreover, the assigned statistical evidence at the global level heavily relies on the data space (whole brain or a small volume). The present paper reviews how Stein’s paradox (1956) motivates a Bayesian multilevel (BML) approach that, rather than fighting multiplicity, embraces it to our advantage through a global calibration process among spatial units. Global calibration is accomplished via a Gaussian distribution for the cross-region effects whose properties are not a priori specified, but a posteriori determined by the data at hand through the BML model. Our framework therefore incorporates multiplicity as integral to the modeling structure, not a separate correction step. By turning multiplicity into a strength, we aim to achieve five goals: 1) improve the model efficiency with a higher predictive accuracy, 2) control the errors of incorrect magnitude and incorrect sign, 3) validate each model relative to competing candidates, 4) reduce the reliance and sensitivity on the choice of data space, and 5) encourage full results reporting. Our modeling proposal reverberates with recent proposals to eliminate the dichotomization of statistical evidence (“significant” vs. “non-significant”), to improve the interpretability of study findings, as well as to promote reporting the full gamut of results (not only “significant” ones), thereby enhancing research transparency and reproducibility.http://www.sciencedirect.com/science/article/pii/S1053811919309115
collection DOAJ
language English
format Article
sources DOAJ
author Gang Chen
Paul A. Taylor
Robert W. Cox
Luiz Pessoa
spellingShingle Gang Chen
Paul A. Taylor
Robert W. Cox
Luiz Pessoa
Fighting or embracing multiplicity in neuroimaging? neighborhood leverage versus global calibration
NeuroImage
author_facet Gang Chen
Paul A. Taylor
Robert W. Cox
Luiz Pessoa
author_sort Gang Chen
title Fighting or embracing multiplicity in neuroimaging? neighborhood leverage versus global calibration
title_short Fighting or embracing multiplicity in neuroimaging? neighborhood leverage versus global calibration
title_full Fighting or embracing multiplicity in neuroimaging? neighborhood leverage versus global calibration
title_fullStr Fighting or embracing multiplicity in neuroimaging? neighborhood leverage versus global calibration
title_full_unstemmed Fighting or embracing multiplicity in neuroimaging? neighborhood leverage versus global calibration
title_sort fighting or embracing multiplicity in neuroimaging? neighborhood leverage versus global calibration
publisher Elsevier
series NeuroImage
issn 1095-9572
publishDate 2020-02-01
description Neuroimaging faces the daunting challenge of multiple testing – an instance of multiplicity – that is associated with two other issues to some extent: low inference efficiency and poor reproducibility. Typically, the same statistical model is applied to each spatial unit independently in the approach of massively univariate modeling. In dealing with multiplicity, the general strategy employed in the field is the same regardless of the specifics: trust the local “unbiased” effect estimates while adjusting the extent of statistical evidence at the global level. However, in this approach, modeling efficiency is compromised because each spatial unit (e.g., voxel, region, matrix element) is treated as an isolated and independent entity during massively univariate modeling. In addition, the required step of multiple testing “correction” by taking into consideration spatial relatedness, or neighborhood leverage, can only partly recoup statistical efficiency, resulting in potentially excessive penalization as well as arbitrariness due to thresholding procedures. Moreover, the assigned statistical evidence at the global level heavily relies on the data space (whole brain or a small volume). The present paper reviews how Stein’s paradox (1956) motivates a Bayesian multilevel (BML) approach that, rather than fighting multiplicity, embraces it to our advantage through a global calibration process among spatial units. Global calibration is accomplished via a Gaussian distribution for the cross-region effects whose properties are not a priori specified, but a posteriori determined by the data at hand through the BML model. Our framework therefore incorporates multiplicity as integral to the modeling structure, not a separate correction step. By turning multiplicity into a strength, we aim to achieve five goals: 1) improve the model efficiency with a higher predictive accuracy, 2) control the errors of incorrect magnitude and incorrect sign, 3) validate each model relative to competing candidates, 4) reduce the reliance and sensitivity on the choice of data space, and 5) encourage full results reporting. Our modeling proposal reverberates with recent proposals to eliminate the dichotomization of statistical evidence (“significant” vs. “non-significant”), to improve the interpretability of study findings, as well as to promote reporting the full gamut of results (not only “significant” ones), thereby enhancing research transparency and reproducibility.
url http://www.sciencedirect.com/science/article/pii/S1053811919309115
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