CONDITIONAL FUNCTIONAL CLUSTERING FOR LONGITUDINAL DATA WITH HETEROGENEOUS NONLINEAR PATTERNS

成果类型:
Article
署名作者:
Wang, Tianhao; Yu, Lei; Leurgans, Sue E.; Wilson, Robert S.; Bennett, David A.; Boyle, Patricia A.
署名单位:
Rush University
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/21-AOAS1542
发表日期:
2022
页码:
1191-1214
关键词:
gene-expression data mixed effects models smoothing parameter maximum-likelihood cognitive decline algorithm selection profiles splines
摘要:
In studies of cognitive aging, it is crucial to distinguish subtypes of longitudinal cognition change while accounting for the effects of given covariates. The longitudinal cognition trajectories and the covariate effects can both be nonlinear with heterogeneous shapes that do not follow a simple parametric form, where flexible functional methods are preferred. However, most functional clustering methods for longitudinal data do not allow controlling for the possible functional effects of covariates. Although traditional mixture-of-experts methods can include covariates and be extended to the functional setting, using nonlinear basis functions, satisfactory parsimonious functional methods required for robust functional coefficient estimation and clustering are still lacking. In this paper we propose a novel latent class functional mixed-effects model in which we assume the covariates have fixed functional effects, and the random curves follow a mixture of Gaussian processes that facilitates a model-based conditional clustering. A transformed penalized Bspline approach is employed for parsimonious modeling and robust model estimation. We propose a new iterative-REML method to choose the penalty parameters in heterogeneous data. The new method is applied to the latest data from the Religious Orders Study and Rush Memory and Aging Project, and four novel subtypes of cognitive changes are identified.
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