Permutation-based inference for spatially localized signals in longitudinal MRI data

Alzheimer’s disease is a neurodegenerative disease in which the degree of cortical atrophy in specific structures of the brain serves as a useful imaging biomarker. Recent approaches using linear mixed effects (LME) models in longitudinal neuroimaging have been powerful and flexible in investigating...

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Main Authors: Jun Young Park, Mark Fiecas
Format: Article
Language:English
Published: Elsevier 2021-10-01
Series:NeuroImage
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1053811921005887
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spelling doaj-4932b12d067b4418bbbf9e9de9d7f6172021-07-31T04:37:26ZengElsevierNeuroImage1095-95722021-10-01239118312Permutation-based inference for spatially localized signals in longitudinal MRI dataJun Young Park0Mark Fiecas1Corresponding author.; Department of Statistical Sciences and Department of Psychology, University of Toronto, Toronto, ON M5S, CanadaDivision of Biostatistics, University of Minnesota School of Public Health, Minneapolis, MN 55455, U.S.AAlzheimer’s disease is a neurodegenerative disease in which the degree of cortical atrophy in specific structures of the brain serves as a useful imaging biomarker. Recent approaches using linear mixed effects (LME) models in longitudinal neuroimaging have been powerful and flexible in investigating the temporal trajectories of cortical thickness. However, massive-univariate analysis, a simplified approach that obtains a summary statistic (e.g., a p-value) for every vertex along the cortex, is insufficient to model cortical atrophy because it does not account for spatial similarities of the signals in neighboring locations. In this article, we develop a permutation-based inference procedure to detect spatial clusters of vertices showing statistically significant differences in the rates of cortical atrophy. The proposed method, called SpLoc, uses spatial information to combine the signals adaptively across neighboring vertices, yielding high statistical power while controlling family-wise error rate (FWER) accurately. When we reject the global null hypothesis, we use a cluster selection algorithm to detect the spatial clusters of significant vertices. We validate our method using simulation studies and apply it to the Alzheimer’s Disease Neuroimaging Initiative (ADNI) data to show its superior performance over existing methods. An R package for implementing SpLoc is publicly available.http://www.sciencedirect.com/science/article/pii/S1053811921005887Alzheimer’s diseaseCortical atrophyPermutationLinear mixed effectsSpatially localized signalsStatistical analysis
collection DOAJ
language English
format Article
sources DOAJ
author Jun Young Park
Mark Fiecas
spellingShingle Jun Young Park
Mark Fiecas
Permutation-based inference for spatially localized signals in longitudinal MRI data
NeuroImage
Alzheimer’s disease
Cortical atrophy
Permutation
Linear mixed effects
Spatially localized signals
Statistical analysis
author_facet Jun Young Park
Mark Fiecas
author_sort Jun Young Park
title Permutation-based inference for spatially localized signals in longitudinal MRI data
title_short Permutation-based inference for spatially localized signals in longitudinal MRI data
title_full Permutation-based inference for spatially localized signals in longitudinal MRI data
title_fullStr Permutation-based inference for spatially localized signals in longitudinal MRI data
title_full_unstemmed Permutation-based inference for spatially localized signals in longitudinal MRI data
title_sort permutation-based inference for spatially localized signals in longitudinal mri data
publisher Elsevier
series NeuroImage
issn 1095-9572
publishDate 2021-10-01
description Alzheimer’s disease is a neurodegenerative disease in which the degree of cortical atrophy in specific structures of the brain serves as a useful imaging biomarker. Recent approaches using linear mixed effects (LME) models in longitudinal neuroimaging have been powerful and flexible in investigating the temporal trajectories of cortical thickness. However, massive-univariate analysis, a simplified approach that obtains a summary statistic (e.g., a p-value) for every vertex along the cortex, is insufficient to model cortical atrophy because it does not account for spatial similarities of the signals in neighboring locations. In this article, we develop a permutation-based inference procedure to detect spatial clusters of vertices showing statistically significant differences in the rates of cortical atrophy. The proposed method, called SpLoc, uses spatial information to combine the signals adaptively across neighboring vertices, yielding high statistical power while controlling family-wise error rate (FWER) accurately. When we reject the global null hypothesis, we use a cluster selection algorithm to detect the spatial clusters of significant vertices. We validate our method using simulation studies and apply it to the Alzheimer’s Disease Neuroimaging Initiative (ADNI) data to show its superior performance over existing methods. An R package for implementing SpLoc is publicly available.
topic Alzheimer’s disease
Cortical atrophy
Permutation
Linear mixed effects
Spatially localized signals
Statistical analysis
url http://www.sciencedirect.com/science/article/pii/S1053811921005887
work_keys_str_mv AT junyoungpark permutationbasedinferenceforspatiallylocalizedsignalsinlongitudinalmridata
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