2013
DOI: 10.1186/1475-925x-12-10
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Functional connectivity-based signatures of schizophrenia revealed by multiclass pattern analysis of resting-state fMRI from schizophrenic patients and their healthy siblings

Abstract: BackgroundRecently, a growing number of neuroimaging studies have begun to investigate the brains of schizophrenic patients and their healthy siblings to identify heritable biomarkers of this complex disorder. The objective of this study was to use multiclass pattern analysis to investigate the inheritable characters of schizophrenia at the individual level, by comparing whole-brain resting-state functional connectivity of patients with schizophrenia to their healthy siblings.MethodsTwenty-four schizophrenic p… Show more

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Cited by 58 publications
(52 citation statements)
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References 46 publications
(60 reference statements)
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“…Here, pattern analysis of FC was more sensitive and specific in discriminating SAD than was multivariate pattern analysis of activation (when using the canonical HRF to model activity), likely due to the fact that it captures information inherent in the interactions among brain regions. Previous large-scale FC approaches capture this information, but only during resting state (ie, resting-state fMRI BOLD to predict schizophrenia (Yu et al, 2013) and age (Dosenbach et al, 2010)). The current approach measures conditiondependent FC (ie, large-scale FC during emotional face viewing), combining the sensitivity of multivariate machine-learning analysis with the advantages of both taskbased and resting-state FC approaches.…”
Section: Discussionmentioning
confidence: 99%
“…Here, pattern analysis of FC was more sensitive and specific in discriminating SAD than was multivariate pattern analysis of activation (when using the canonical HRF to model activity), likely due to the fact that it captures information inherent in the interactions among brain regions. Previous large-scale FC approaches capture this information, but only during resting state (ie, resting-state fMRI BOLD to predict schizophrenia (Yu et al, 2013) and age (Dosenbach et al, 2010)). The current approach measures conditiondependent FC (ie, large-scale FC during emotional face viewing), combining the sensitivity of multivariate machine-learning analysis with the advantages of both taskbased and resting-state FC approaches.…”
Section: Discussionmentioning
confidence: 99%
“…Of note, in the last few years multivariate methods have provided more objective neuroimaging-based biomarkers in neuropsychiatric disorders. By using these multivariate methods, important and interesting results have been reported by analyzing fMRI data [5659]. For example, Zeng et al [58] demonstrated that multivariate pattern analysis (MVPA) methods can identify major depressive individuals from healthy controls based on resting-state fMRI data with 94.3% accuracy.…”
Section: Discussionmentioning
confidence: 99%
“…These differences include a link between prefrontal cortex activation and vulnerability to psychosis (Fusar-Poli, 2007), reduced network activation during executive task performance (Minzenberg, 2009), and abnormal activation patterns in working memory tasks (Glahn et al, 2005). There has been growing interest in investigating the integrity of the neural circuits in schizophrenia that work together to support sensory, cognitive, and emotional processes (Calhoun et al, 2009;Liu et al, 2012; Yu et al, 2013). …”
Section: Introductionmentioning
confidence: 99%