| Literature DB >> 25196299 |
Angelo Elmi1, Sarah J Ratcliffe, Wensheng Guo.
Abstract
Branching curves are a technique for modeling curves that change trajectory at a change (branching) point. Currently, the estimation framework is limited to independent data, and smoothing splines are used for estimation. This article aims to extend the branching curve framework to the longitudinal data setting where the branching point varies by subject. If the branching point is modeled as a random effect, then the longitudinal branching curve framework is a semiparametric nonlinear mixed effects model. Given existing issues with using random effects within a smoothing spline, we express the model as a B-spline based semiparametric nonlinear mixed effects model. Simple, clever smoothness constraints are enforced on the B-splines at the change point. The method is applied to Women's Health data where we model the shape of the labor curve (cervical dilation measured longitudinally) before and after treatment with oxytocin (a labor stimulant).Entities:
Keywords: branching curves; curve registration; mixed effects models
Mesh:
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Year: 2014 PMID: 25196299 PMCID: PMC4227919 DOI: 10.1002/sim.6289
Source DB: PubMed Journal: Stat Med ISSN: 0277-6715 Impact factor: 2.373