| Literature DB >> 33345271 |
Daniel S Barron1,2, Siyuan Gao3, Javid Dadashkarimi4, Abigail S Greene5, Marisa N Spann6, Stephanie Noble7, Evelyn M R Lake8, John H Krystal1, R Todd Constable7,8, Dustin Scheinost3,7,9,10.
Abstract
Memory deficits are observed in a range of psychiatric disorders, but it is unclear whether memory deficits arise from a shared brain correlate across disorders or from various dysfunctions unique to each disorder. Connectome-based predictive modeling is a computational method that captures individual differences in functional connectomes associated with behavioral phenotypes such as memory. We used publicly available task-based functional MRI data from patients with schizophrenia (n = 33), bipolar disorder (n = 34), attention deficit hyper-activity disorder (n = 32), and healthy controls (n = 73) to model the macroscale brain networks associated with working, short- and long-term memory. First, we use 10-fold and leave-group-out analyses to demonstrate that the same macroscale brain networks subserve memory across diagnostic groups and that individual differences in memory performance are related to individual differences within networks distributed throughout the brain, including the subcortex, default mode network, limbic network, and cerebellum. Next, we show that diagnostic groups are associated with significant differences in whole-brain functional connectivity that are distinct from the predictive models of memory. Finally, we show that models trained on the transdiagnostic sample generalize to novel, healthy participants (n = 515) from the Human Connectome Project. These results suggest that despite significant differences in whole-brain patterns of functional connectivity between diagnostic groups, the core macroscale brain networks that subserve memory are shared.Entities:
Keywords: (<5): prediction; functional connectivity; machine learning; psychiatry; transdiagnostic
Mesh:
Year: 2021 PMID: 33345271 PMCID: PMC8023861 DOI: 10.1093/cercor/bhaa371
Source DB: PubMed Journal: Cereb Cortex ISSN: 1047-3211 Impact factor: 5.357