Data di Pubblicazione:
2018
Abstract:
Thousands of papers using resting-state functional magnetic resonance imaging (RS-fMRI) have
been published on brain disorders. Results in each paper may have survived correction for
multiple comparison. However, since there have been no robust results from large scale
meta-analysis, we do not know how many of published results are truly positives. The present
meta-analytic work included 60 original studies, with 57 studies (4 datasets, 2266 participants)
that used a between-group design and 3 studies (1 dataset, 107 participants) that employed a
within-group design. To evaluate the effect size of brain disorders, a very large neuroimaging
dataset ranging from neurological to psychiatric disorders together with healthy individuals have
been analyzed. Parkinson's disease off levodopa (PD-off) included 687 participants from 15
studies. PD on levodopa (PD-on) included 261 participants from 9 studies. Autism spectrum
disorder (ASD) included 958 participants from 27 studies. The meta-analyses of a metric named
amplitude of low frequency fluctuation (ALFF) showed that the effect size (Hedges' g) was 0.19 -
0.39 for the 4 datasets using between-group design and 0.46 for the dataset using within-group
design. The effect size of PD-off, PD-on and ASD were 0.23, 0.39, and 0.19, respectively. Using
the meta-analysis results as the robust results, the between-group design results of each study
showed high false negative rates (median 99%), high false discovery rates (median 86%), and low
accuracy (median 1%), regardless of whether stringent or liberal multiple comparison correction
was used. The findings were similar for 4 RS-fMRI metrics including ALFF, regional
homogeneity, and degree centrality, as well as for another widely used RS-fMRI metric namely
seed-based functional connectivity. These observations suggest that multiple comparison
correction does not control for false discoveries across multiple studies when the effect sizes are
relatively small. Meta-analysis on un-thresholded t-maps is critical for the recovery of ground
truth. We recommend that to achieve high reproducibility through meta-analysis, the
neuroimaging research field should share raw data or, at minimum, provide un-thresholded
statistical images.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
resting-state; fmri; parkinson; neuroimaging
Elenco autori:
Cerasa, Antonio
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