| Literature DB >> 31313451 |
Teresa M Karrer1, Danielle S Bassett2,3,4,5, Birgit Derntl6,7, Oliver Gruber8, André Aleman9, Renaud Jardri10, Angela R Laird11, Peter T Fox12,13,14, Simon B Eickhoff15,16, Olivier Grisel17, Gaël Varoquaux17, Bertrand Thirion17, Danilo Bzdok1,6,17.
Abstract
Schizophrenia is a devastating brain disorder that disturbs sensory perception, motor action, and abstract thought. Its clinical phenotype implies dysfunction of various mental domains, which has motivated a series of theories regarding the underlying pathophysiology. Aiming at a predictive benchmark of a catalog of cognitive functions, we developed a data-driven machine-learning strategy and provide a proof of principle in a multisite clinical dataset (n = 324). Existing neuroscientific knowledge on diverse cognitive domains was first condensed into neurotopographical maps. We then examined how the ensuing meta-analytic cognitive priors can distinguish patients and controls using brain morphology and intrinsic functional connectivity. Some affected cognitive domains supported well-studied directions of research on auditory evaluation and social cognition. However, rarely suspected cognitive domains also emerged as disease relevant, including self-oriented processing of bodily sensations in gustation and pain. Such algorithmic charting of the cognitive landscape can be used to make targeted recommendations for future mental health research.Entities:
Keywords: BrainMap database; coordinate-based meta-analysis; ontology of the mind; pattern recognition; predictive analytics; statistical learning
Mesh:
Year: 2019 PMID: 31313451 PMCID: PMC6865423 DOI: 10.1002/hbm.24716
Source DB: PubMed Journal: Hum Brain Mapp ISSN: 1065-9471 Impact factor: 5.038