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Estimation of circadian parameters and investigation in cyanobacteria via semiparametric varying coefficient periodic models

This dissertation includes three components. Component 1 provides an estima-
tion procedure for circadian parameters in cyanobacteria. Component 2 explores the
relationship between baseline and amplitude by model selection under the framework
of smoothing spline. Component 3 investigates properties of hypothesis testing. The
following three paragraphs briefly summarize these three components, respectively.
Varying coefficient models are frequently used in statistical modeling. We pro-
pose a semiparametric varying coefficient periodic model which is suitable to study
periodic patterns. This model has ample applications in the study of the cyanobac-
teria circadian clock. To achieve the desired flexibility, the model we consider may
not be globally identifiable. We propose to perform local approximations by kernel
based methods and focus on estimating one solution that is biologically meaningful.
Asymptotic properties are developed. Simulations show that the gain by our proce-
dure over the commonly used method is substantial. The methodology is illustrated
by an application to a cyanobacteria dataset.
Smoothing spline can be implemented, but a direct application with the penalty
selected by the generalized cross-validation often leads to non-convergence outcomes. We propose an adjusted cross-validation instead, which resolves the difficulties. Biol-
ogists believe that the amplitude function of the periodic component is proportional
to the baseline function. To verify this belief, we propose a full model without any
assumptions regarding such a relationship, and two reduced models with the ratio of
baseline and amplitude to be a constant and a quadratic function of time, respectively.
We use model selection techniques, Akaike information criterion (AIC) and Schwarz
Bayesian information criterion (BIC), to determine the optimal model. Simulations
show that AIC and BIC select the correct model with high probabilities. Application
to cyanobacteria data shows that the full model is the best model.
To investigate the same problem in component 2 by a formal hypothesis testing
procedure, we develop kernel based methods. In order to construct the test statistic,
we derive the global degree of freedom for the residual sum of squares. Simulations
show that the proposed tests perform well. We apply the proposed procedures to
the data and conclude that the baseline and amplitude functions share no linear or
quadratic relationship.

Identiferoai:union.ndltd.org:tamu.edu/oai:repository.tamu.edu:1969.1/ETD-TAMU-1628
Date15 May 2009
CreatorsLiu, Yingxue
ContributorsWang, Naisyin
Source SetsTexas A and M University
Languageen_US
Detected LanguageEnglish
TypeBook, Thesis, Electronic Dissertation, text
Formatelectronic, application/pdf, born digital

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