2018
DOI: 10.1101/267591
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Data-driven clustering reveals a link between symptoms and functional brain connectivity in depression

Abstract: Background: Depression is a complex disorder with large inter-individual variability in symptom profiles that often occur alongside symptoms of other psychiatric domains such as anxiety. A dimensional and symptom-based approach may help refine the characterization and classification of depressive and anxiety disorders and thus aid in establishing robust biomarkers. We assess the brain functional connectivity correlates of a symptom-based clustering of individuals using functional brain imaging data. Methods: W… Show more

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Cited by 23 publications
(32 citation statements)
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“…We were not able to predict dimensional measures of depression or anxiety, consistent with a smaller independent study (44) and a recent large-scale multi-site study (45), or trait neuroticism. One explanation for the lack of brain FC associations, particularly with regards to depression is its diversity in symptom profiles (28), and phenomenological overlap with other clinical domains (46).…”
Section: Discussionsupporting
confidence: 80%
“…We were not able to predict dimensional measures of depression or anxiety, consistent with a smaller independent study (44) and a recent large-scale multi-site study (45), or trait neuroticism. One explanation for the lack of brain FC associations, particularly with regards to depression is its diversity in symptom profiles (28), and phenomenological overlap with other clinical domains (46).…”
Section: Discussionsupporting
confidence: 80%
“…However, inherent limitations associated with the classical case-control design in mental health research have recently been emphasized using neuroimaging data (24,25). In particular, the current lack of biologically informed diagnostic criteria should motivate future studies to consider alternative approaches to promote a novel clinical nosology based both on symptomatology and data-driven clustering (56), as well as brain-based and biological phenotypes cutting across diagnostic boundaries.…”
Section: Discussionmentioning
confidence: 99%
“…FIX substantially improved tSNR (t = 20.89, p < 0.001, Cohen's d = 1.95), and no fMRI scans from healthy controls (n = 72) nor from patients (n = 178) were excluded. Group-level ICA with model order fixed at 40 was performed on a balanced subset of healthy controls and patients (N = 72 from each group), which has been used in a previous study (Maglanoc et al, 2019). Dual regression (Nickerson, Smith, Öngür, & Beckmann, 2017) was used to estimate spatial maps and corresponding time-series of all components.…”
Section: Resting-state Fmri Preprocessingmentioning
confidence: 99%