CFE-CMStatistics 2024: Start Registration
View Submission - CFECMStatistics2024
A0414
Title: Identification of regions of interest in neuroimaging data based on semiparametric transformation models Authors:  Haolun Shi - Simon Fraser University (Canada) [presenting]
Abstract: Alzheimer's disease (AD) is a progressive neurodegenerative disorder that leads to memory loss, cognitive decline, and behavioral changes without a known cure. Neuroimages are often collected alongside the covariates at baseline to forecast the prognosis of the patients. Identifying regions of interest within the neuroimages associated with disease progression is thus of significant clinical importance. One major complication in such analysis is that the domain of the brain area in neuroimages is irregular. Another complication is that the time-to-AD is interval-censored, as the event can only be observed between two revisit time points. To address these complications, the proposal is to model the imaging predictors via bivariate splines over triangulation and incorporate the imaging predictors in a flexible class of semiparametric transformation models. The regions of interest can then be identified by maximizing a penalized likelihood. A computationally efficient expectation-maximization algorithm is devised for parameter estimation. An extensive simulation study is conducted to evaluate the finite-sample performance of the proposed method. An illustration with the Alzheimer's disease neuroimaging initiative dataset is provided.