| Literature DB >> 31529701 |
Bei Jiang1, Eva Petkova2,3, Thaddeus Tarpey2, R Todd Ogden4.
Abstract
In this paper, we propose a unified Bayesian joint modeling framework for studying association between a binary treatment outcome and a baseline matrix-valued predictor. Specifically, a joint modeling approach relating an outcome to a matrix-valued predictor through a probabilistic formulation of multilinear principal component analysis is developed. This framework establishes a theoretical relationship between the outcome and the matrix-valued predictor, although the predictor is not explicitly expressed in the model. Simulation studies are provided showing that the proposed method is superior or competitive to other methods, such as a two-stage approach and a classical principal component regression in terms of both prediction accuracy and estimation of association; its advantage is most notable when the sample size is small and the dimensionality in the imaging covariate is large. Finally, our proposed joint modeling approach is shown to be a very promising tool in an application exploring the association between baseline electroencephalography data and a favorable response to treatment in a depression treatment study by achieving a substantial improvement in prediction accuracy in comparison to competing methods.Entities:
Keywords: antidepressant response; dimension reduction; major depression disorder; matrix-valued imaging data; multilinear principal component analysis; regularization
Year: 2019 PMID: 31529701 PMCID: PMC7067625 DOI: 10.1111/biom.13151
Source DB: PubMed Journal: Biometrics ISSN: 0006-341X Impact factor: 2.571