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pmid: 36211126
pmc: PMC9540393
The past two decades have seen an explosion in the methods and directions of neuroscience research. Along with many others, complexity research has rapidly gained traction as both an independent research field and a valuable subdiscipline in computational neuroscience. In the past decade alone, several studies have suggested that psychiatric disorders affect the spatiotemporal complexity of both global and region-specific brain activity (Liu et al., 2013;Adhikari et al., 2017;Li et al., 2018). However, many of these studies have not accounted for the distributed nature of cognition in either the global or regional complexity estimates, which may lead to erroneous interpretations of both global and region-specific entropy estimates. To alleviate this concern, we propose a novel method for estimating complexity. This method relies upon projecting dynamic functional connectivity into a low-dimensional space which captures the distributed nature of brain activity. Dimension-specific entropy may be estimated within this space, which in turn allows for a rapid estimate of global signal complexity. Testing this method on a recently acquired obsessive-compulsive disorder dataset reveals substantial increases in the complexity of both global and dimension-specific activity versus healthy controls, suggesting that obsessive-compulsive patients may experience increased disorder in cognition. To probe the potential causes of this alteration, we estimate subject-level effective connectivityviaa Hopf oscillator-based model dynamic model, the results of which suggest that obsessive-compulsive patients may experience abnormally high connectivity across a broad network in the cortex. These findings are broadly in line with results from previous studies, suggesting that this method is both robust and sensitive to group-level complexity alterations.
eigendecomposition, Neurosi obsessiva, Shannon entropy, Neurosciences. Biological psychiatry. Neuropsychiatry, Human Neuroscience, whole-brain model, obsessive-compulsive disorder, independent component analysis, network-based statistic, Obsessive-compulsive disorder, LEiDA, Hopf bifurcation, RC321-571
eigendecomposition, Neurosi obsessiva, Shannon entropy, Neurosciences. Biological psychiatry. Neuropsychiatry, Human Neuroscience, whole-brain model, obsessive-compulsive disorder, independent component analysis, network-based statistic, Obsessive-compulsive disorder, LEiDA, Hopf bifurcation, RC321-571
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