Journal: Alzheimer's Research & Therapy
Article Title: Functional network phenotypes of mild behavioural impairment: cognitive effects moderated by amyloid
doi: 10.1186/s13195-026-01980-2
Figure Lengend Snippet: Study schematic. ( A ) Univariate associations between FC matrices and MBI diagnosis, MBI-C total score or MBI-C subdomain score were examined using separate linear regression models, with age, sex, years of education, diagnosis and total intracranial volumes included as nuisance covariates. ( B ) In parallel, partial least squares correlation was conducted to examine multivariate associations between residuals of FC matrices and MBI-C subdomain scores after regressing out age, sex, years of education, diagnosis and total intracranial volumes. This approach gives rise to a set of latent variables, which are linear weighted combinations of the original variables (i.e., FC and MBI-C score loadings) that have maximal covariance with each other. Individual connectome scores and MBI-C scores were then obtained by back projecting the FC and MBI-C score loadings to their original residual values. Connectome scores describe the extent to which each participant expresses the FC pattern maximally associated with the MBI-C scores, with higher connectome scores indicating greater MBI-related functional network disruptions. ( C ) Subsequently, we examined whether connectome score or MBI-C total score interacted with global amyloid SUVR and temporal meta-ROI tau SUVR to influence baseline and rate of change in global cognition and functional performance using linear regression models. MBI-C = Mild Behavioural Impairment Checklist; MBI-C = Mild Behavioural Impairment Checklist; SUVR = standardized uptake value ratio; ROI = region-of-interest; FC = functional connectivity; AD = Alzheimer’s disease; CDR = Clinical Dementia Rating; MoCA = Montreal Cognitive Assessment
Article Snippet: Behaviour partial least squares correlation was then performed on the standardized FC and MBI-C subdomain score residuals using the PLS toolbox [ ] in MATLAB.
Techniques: Biomarker Discovery, Functional Assay