| Literature DB >> 35712524 |
Erjia Cui1, Andrew Leroux2, Ekaterina Smirnova3, Ciprian M Crainiceanu1.
Abstract
We propose fast univariate inferential approaches for longitudinal Gaussian and non-Gaussian functional data. The approach consists of three steps: (1) fit massively univariate pointwise mixed effects models; (2) apply any smoother along the functional domain; and (3) obtain joint confidence bands using analytic approaches for Gaussian data or a bootstrap of study participants for non-Gaussian data. Methods are motivated by two applications: (1) Diffusion Tensor Imaging (DTI) measured at multiple visits along the corpus callosum of multiple sclerosis (MS) patients; and (2) physical activity data measured by body-worn accelerometers for multiple days. An extensive simulation study indicates that model fitting and inference are accurate and much faster than existing approaches. Moreover, the proposed approach was the only one that was computationally feasible for the physical activity data application. Methods are accompanied by R software, though the method is "read-and-use", as it can be implemented by any analyst who is familiar with mixed effects model software.Entities:
Keywords: DTI; longitudinal functional data; mixed model; wearable devices
Year: 2021 PMID: 35712524 PMCID: PMC9197085 DOI: 10.1080/10618600.2021.1950006
Source DB: PubMed Journal: J Comput Graph Stat ISSN: 1061-8600 Impact factor: 1.884