2020
DOI: 10.1101/2020.08.13.249797
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Comparing spatial null models for brain maps

Abstract: Technological and data sharing advances have led to a proliferation of high-resolution structural and functional maps of the brain. Modern neuroimaging research increasingly depends on identifying correspondences between the topographies of these maps; however, most standard methods for statistical inference fail to account for their spatial properties. Recently, multiple methods have been developed to generate null distributions that preserve the spatial autocorrelation of brain maps and yield more accurate s… Show more

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Cited by 24 publications
(40 citation statements)
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“…To confirm this finding is not driven by spatial proximity, we repeated the analysis with distance-residualized values ( Mišić et al, 2014 ), finding a significant difference (two-tailed t -test; , ). We also repeated the analysis using a nonparametric label-permutation null model with preserved spatial autocorrelation (10,000 repetitions) ( Alexander-Bloch et al, 2018 ; Markello and Misic, 2020 ), again finding significantly greater within- compared to between-network temporal profile similarity (two-tailed; ; Figure 2d ). These results are consistent when applying the 17 network partition of intrinsic networks ( Yeo et al, 2011 ; Schaefer et al, 2018 ; Figure 2—figure supplement 1 ).…”
Section: Resultsmentioning
confidence: 93%
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“…To confirm this finding is not driven by spatial proximity, we repeated the analysis with distance-residualized values ( Mišić et al, 2014 ), finding a significant difference (two-tailed t -test; , ). We also repeated the analysis using a nonparametric label-permutation null model with preserved spatial autocorrelation (10,000 repetitions) ( Alexander-Bloch et al, 2018 ; Markello and Misic, 2020 ), again finding significantly greater within- compared to between-network temporal profile similarity (two-tailed; ; Figure 2d ). These results are consistent when applying the 17 network partition of intrinsic networks ( Yeo et al, 2011 ; Schaefer et al, 2018 ; Figure 2—figure supplement 1 ).…”
Section: Resultsmentioning
confidence: 93%
“…We use Spearman rank correlations ( ) throughout, as they do not assume a linear relationship among variables. Given the spatially autocorrelated nature of both hctsa features and other imaging features, we assess statistical significance with respect to nonparametric spatial autocorrelation-preserving null models ( Alexander-Bloch et al, 2018 ; Markello and Misic, 2020 ).…”
Section: Resultsmentioning
confidence: 99%
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“…(b) To determine whether memory capacity estimates depend on the underlying connectivity structure, a null distribution is constructed by randomly rewiring pairs of edges, while preserving network size, density, degree sequence and node-level intrinsic-network assignment (cyan in panel (a); referred throughout the text as rewired ) [86]. (c) To evaluate the extent to which the partition of the connectome into seven intrinsic networks is relevant for the task at hand, a null distribution is constructed by spherical projection and random rotation of the intrinsic network labels, preserving their spatial embedding and autocorrelation (yellow in panel (a); referred throughout the text as spin ) [1, 85].…”
Section: Resultsmentioning
confidence: 99%
“…Permutations were generated by randomly rotating a projection of ROI centroids on the (FreeSurfer) sphere, before mapping rotated ROIs to the nearest unrotated ones. Mirrored rotations were applied to the contralateral hemisphere, resulting in a permutation which controls for spatial autocorrelation and hemispheric symmetry of regions (Váša et al, 2018;Alexander-Bloch et al, 2018;Markello and Misic, 2020). P-values for the correlation between two regional maps were obtained by comparing the empirical value of Spearman's ρ to a null distribution of Spearman correlations, generated by correlating one of the empirical maps to a set of 10,000 spatially permuted versions of the other map; these "spin-test" Pvalues are referred to as P spin .…”
Section: Correspondence Between Epimix and Single-contrast Scansmentioning
confidence: 99%