| Literature DB >> 29051679 |
Hongxiao Zhu1, Jeffrey S Morris2, Fengrong Wei3, Dennis D Cox4.
Abstract
Many scientific studies measure different types of high-dimensional signals or images from the same subject, producing multivariate functional data. These functional measurements carry different types of information about the scientific process, and a joint analysis that integrates information across them may provide new insights into the underlying mechanism for the phenomenon under study. Motivated by fluorescence spectroscopy data in a cervical pre-cancer study, a multivariate functional response regression model is proposed, which treats multivariate functional observations as responses and a common set of covariates as predictors. This novel modeling framework simultaneously accounts for correlations between functional variables and potential multi-level structures in data that are induced by experimental design. The model is fitted by performing a two-stage linear transformation-a basis expansion to each functional variable followed by principal component analysis for the concatenated basis coefficients. This transformation effectively reduces the intra-and inter-function correlations and facilitates fast and convenient calculation. A fully Bayesian approach is adopted to sample the model parameters in the transformed space, and posterior inference is performed after inverse-transforming the regression coefficients back to the original data domain. The proposed approach produces functional tests that flag local regions on the functional effects, while controlling the overall experiment-wise error rate or false discovery rate. It also enables functional discriminant analysis through posterior predictive calculation. Analysis of the fluorescence spectroscopy data reveals local regions with differential expressions across the pre-cancer and normal samples. These regions may serve as biomarkers for prognosis and disease assessment.Entities:
Keywords: Bayesian methods; fluorescence spectroscopy; functional data analysis; mixed models; multivariate functional regression; principal component analysis; wavelets
Year: 2017 PMID: 29051679 PMCID: PMC5642121 DOI: 10.1016/j.csda.2017.02.004
Source DB: PubMed Journal: Comput Stat Data Anal ISSN: 0167-9473 Impact factor: 1.681