| Literature DB >> 32447185 |
Rui Wang1, Kimberly M Albert2, Warren D Taylor3, Brian D Boyd2, Justin Blaber4, Ilwoo Lyu4, Bennett A Landman5, Jennifer Vega2, Sepideh Shokouhi2, Hakmook Kang6.
Abstract
To reconcile the inconsistency of the association between the resting-state functional connectivity (RSFC) and cognitive performance in healthy and depressed groups due to high variance of both measures, we proposed a Bayesian spatio-temporal model to precisely and accurately estimate the RSFC in depressed and nondepressed participants. This model was employed to estimate spatially-adjusted functional connectivity (saFC) in the extended default mode network (DMN) that was hypothesized to correlate with cognitive performance in both depressed and nondepressed. Multiple linear regression models were used to study the relationship between DMN saFC and cognitive performance scores measured in the following four cognitive domains while adjusting for age, sex, and education. In ROI pairs including the posterior cingulate (PCC) and anterior cingulate (ACC) cortex regions, the relationship between connectivity and cognition was found only with the Bayesian approach. Moreover, only the Bayesian approach was able to detect a significant diagnostic difference in the association in ROI pairs, including both PCC and ACC regions, due to smaller variance for the saFC estimator. The results confirm that a reliable and precise saFC estimator, based on the Bayesian model, can foster scientific discovery that may not be feasible with the conventional ROI-based FC estimator (denoted as 'AVG-FC').Entities:
Keywords: Bayesian spatio-temporal model; Connectivity fusion; Resting stage functional connectivity
Mesh:
Year: 2020 PMID: 32447185 PMCID: PMC7369149 DOI: 10.1016/j.pscychresns.2020.111102
Source DB: PubMed Journal: Psychiatry Res Neuroimaging ISSN: 0925-4927 Impact factor: 2.376